1 - 50
Next
- Hershey, Pennsylvania (701 E. Chocolate Avenue, Hershey, Pennsylvania, 17033, USA) : IGI Global, [2019]
- Description
- Book — 23 PDFs (xix, 390 pages)
- Summary
-
- Chapter 1. Recent neuro-fuzzy approaches for feature selection and classification
- Chapter 2. An approach to license plate recognition system using neural network
- Chapter 3. Intuitionistic fuzzy time series forecasting based on dual hesitant fuzzy set for stock market: DHFS-based IFTS model for stock market
- Chapter 4. Design and implementation of an intelligent traffic management system: a neural approach
- Chapter 5. DNA fragment assembly using quantum-inspired genetic algorithm
- Chapter 6. Effective prevention and reduction in the rate of accidents using internet of things and data analytics
- Chapter 7. Nature-inspired algorithms for bi-criteria parallel machine scheduling
- Chapter 8. Hybrid honey bees meta-heuristic for benchmark data classification
- Chapter 9. Guided search-based multi-objective evolutionary algorithm for grid workflow scheduling
- Chapter 10. An optimal configuration of sensitive parameters of PSO applied to textual clustering
- Chapter 11. An improved hybridized evolutionary algorithm based on rules for local sequence alignment
- Chapter 12. Bi-objective supply chain optimization with supplier selection
- Chapter 13. Overview and optimized design for energy recovery patents applied to hydraulic systems
- Chapter 14. Wireless robotics networks for search and rescue in underground mines: taxonomy and open issues
- Chapter 15. Solving job scheduling problem in computational grid systems using a hybrid algorithm
- Chapter 16. An enhanced clustering method for image segmentation
(source: Nielsen Book Data)
- Hershey, PA : Engineering Science Reference, [2019]
- Description
- Book — 1 online resource.
- Summary
-
Modern optimization approaches have attracted an increasing number of scientists, decision makers, and researchers. As new issues in this field emerge, different optimization methodologies must be developed and implemented. Exploring Critical Approaches of Evolutionary Computation is a vital scholarly publication that explores the latest developments, methods, approaches, and applications of evolutionary models in a variety of fields. It also emphasizes evolutionary models of computation such as genetic algorithms, evolutionary strategies, classifier systems, evolutionary programming, genetic programming, and related fields such as swarm intelligence and other evolutionary computation techniques. Highlighting a range of pertinent topics such as neural networks, data mining, and data analytics, this book is designed for IT developers, IT theorists, computer engineers, researchers, practitioners, and upper-level students seeking current research on enhanced information exchange methods and practical aspects of computational systems.
(source: Nielsen Book Data)
- Cuevas, Erik.
- Cham : Springer, 2017.
- Description
- Book — 1 online resource Digital: text file.PDF.
- Summary
-
- Preface.- Introduction.- Multilevel segmentation in digital images.- Multi-Circle detection on images.- Template matching.- Motion estimation.- Photovoltaic cell design.- Parameter identification of induction motors.- White blood cells Detection in images.- Estimation of view transformations in images.- Filter Design.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Berlin ; New York : Springer, c2007.
- Description
- Book — xxiii, 605 p. : ill.
- Summary
-
- Optimum Tracking in Dynamic Environments.- Explicit Memory Schemes for Evolutionary Algorithms in Dynamic Environments.- Particle Swarm Optimization in Dynamic Environments.- Evolution Strategies in Dynamic Environments.- Orthogonal Dynamic Hill Climbing Algorithm: ODHC.- Genetic Algorithms with Self-Organizing Behaviour in Dynamic Environments.- Learning and Anticipation in Online Dynamic Optimization.- Evolutionary Online Data Mining: An Investigation in a Dynamic Environment.- Adaptive Business Intelligence: Three Case Studies.- Evolutionary Algorithms for Combinatorial Problems in the Uncertain Environment of the Wireless Sensor Networks.- Approximation of Fitness Functions.- Individual-based Management of Meta-models for Evolutionary Optimization with Application to Three-Dimensional Blade Optimization.- Evolutionary Shape Optimization Using Gaussian Processes.- A Study of Techniques to Improve the Efficiency of a Multi-Objective Particle Swarm Optimizer.- An Evolutionary Multi-objective Adaptive Meta-modeling Procedure Using Artificial Neural Networks.- Surrogate Model-Based Optimization Framework: A Case Study in Aerospace Design.- Handling Noisy Fitness Functions.- Hierarchical Evolutionary Algorithms and Noise Compensation via Adaptation.- Evolving Multi Rover Systems in Dynamic and Noisy Environments.- A Memetic Algorithm Using a Trust-Region Derivative-Free Optimization with Quadratic Modelling for Optimization of Expensive and Noisy Black-box Functions.- Genetic Algorithm to Optimize Fitness Function with Sampling Error and its Application to Financial Optimization Problem.- Search for Robust Solutions.- Single/Multi-objective Inverse Robust Evolutionary Design Methodology in the Presence of Uncertainty.- Evolving the Tradeoffs between Pareto-Optimality and Robustness in Multi-Objective Evolutionary Algorithms.- Evolutionary Robust Design of Analog Filters Using Genetic Programming.- Robust Salting Route Optimization Using Evolutionary Algorithms.- An Evolutionary Approach For Robust Layout Synthesis of MEMS.- A Hybrid Approach Based on Evolutionary Strategies and Interval Arithmetic to Perform Robust Designs.- An Evolutionary Approach for Assessing the Degree of Robustness of Solutions to Multi-Objective Models.- Deterministic Robust Optimal Design Based on Standard Crowding Genetic Algorithm.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Sekanina, Lukáš.
- Berlin ; New York : Springer, c2004.
- Description
- Book — xvi, 194 p. : 70 ill. ; 25 cm.
- Summary
-
- Introduction
- Reconfigurable Hardware
- Evolutionary Algorithms
- Evolvable Hardware
- Towards Evolvable Components
- Evolvable Computational Machines
- An Evolvable Component for Image-Pre-processing
- Virtual Reconfigurable Devices
- Concluding Statements
- References
- Index.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Online
SAL3 (off-campus storage)
SAL3 (off-campus storage) | Status |
---|---|
Stacks | Request (opens in new tab) |
QA76.618 .S45 2004 | Available |
- EvoApplications (Conference) (22nd : 2019 : Leipzig, Germany)
- Cham, Switzerland : Springer, 2019.
- Description
- Book — 1 online resource (xix, 642 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- [I]. Engineering and real-world applications: 1. A comparison of different many-objective optimization algorithms for energy system optimization / Tobias Rodemann
- 2. Design of powered floor systems for mobile robots with differential evolution / Eric Medvet, Stefano Seriani, Alberto Bartoli, and Paolo Gallina
- 3. Solving the multi-objective flexible job-shop scheduling problem with alternative recipes for a chemical production process / Piotr Dziurzanski, Shuai Zhao, Jerry Swan, Leandro Soares Indrusiak, Sebastian Scholze, and Karl Krone
- 4. Quantifying the effects of increasing user choice in MAP-elites applied to a workforce scheduling and routing problem / Neil Urquhart, Emma Hart, and William Hutcheson
- 5. A hybrid multi-objective differential evolution approach to stator winding optimization / André M. Silva, Fernando J.T.E. Ferreira, and Carlos Henggeler Antunes
- 6. GA-Novo : de novo peptide sequencing via tandem mass spectrometry using genetic algorithm / Samaneh Azari, Bing Xue, Mengjie Zhang, and Lifeng Peng
- 7. Ant colony optimization for optimized operation scheduling of combined heat and power plants / Johannes Mast, Stefan Rädle, Joachim Gerlach, and Oliver Bringmann
- 8. A flexible dissimilarity measure for active and passive 3D structures and its application in the fitness-distance analysis / Maciej Komosinski and Agnieszka Mensfelt.
- [II]. Games: 9. Free form evolution for Angry Birds level generation / Laura Calle, Juan J. Merelo, Antonio Mora-García, and José-Mario García-Valdez
- 10. Efficient online hyperparameter adaptation for deep reinforcement learning / Yinda Zhou, Weiming Liu, and Bin Li
- 11. GAMER : a genetic algorithm with motion encoding reuse for action-adventure video games / Tasos Papagiannis, Georgios Alexandridis, and Andreas Stafylopatis
- 12. Effects of input addition in learning for adaptive games : towards learning with structural changes / Iago Bonnici, Abdelkader Gouaïch, and Fabien Michel.
- [III]. General: 13. Supporting medical decisions for treating rare diseases through genetic programming / Illya Bakurov, Mauro Castelli, Leonardo Vanneschi, and Maria João Freitas
- 14. Evolutionary successful strategies in a transparent iterated prisoner's dilemma / Anton M. Unakafov, Thomas Schultze, Igor Kagan, Sebastian Moeller, Alexander Gail, Stefan Treue, Stephan Eule, and Fred Wolf
- 15. Evolutionary algorithms for the design of quantum protocols / Walter Krawec, Stjepan Picek, and Domagoj Jakobovic
- 16. Evolutionary computation techniques for constructing SAT-based attacks in algebraic cryptanalysis / Artem Pavlenko, Alexander Semenov, and Vladimir Ulyantsev
- 17. On the use of evolutionary computation for in-silico medicine : modelling sepsis via evolving continuous petri nets / Ahmed Hallawa, Elisabeth Zechendorf, Yi Song, Anke Schmeink, Arne Peine, Lukas Marin, Gerd Ascheid, and Guido Dartmann
- 18. A cultural algorithm for determining similarity values between users in recommender systems / Kalyani Selvarajah, Ziad Kobti, and Mehdi Kargar.
- [IV]. Image and signal processing: 19. Optimizing the C index using a canonical genetic algorithm / Thomas A. Runkler and James C. Bezdek
- 20. Memetic evolution of classification ensembles / Szymon Piechaczek, Michal Kawulok, and Jakub Nalepa
- 21. Genetic programming for feature selection and feature combination in salient object detection / Shima Afzali, Harith Al-Sahaf, Bing Xue, Christopher Hollitt, and Mengjie Zhang
- 22. Variable-length representation for EC-based feature selection in high-dimensional data / N.D. Cilia, C. De Stefano, F. Fontanella, and A. Scotto di Freca.
- [V]. Life sciences: 23. A knowledge based differential evolution algorithm for protein structure prediction / Pedro H. Narloch and Márcio Dorn
- 24. A biased random key genetic algorithm with local search chains for molecular docking / Pablo F. Leonhart and Márcio Dorn
- 25. Self-sustainability challenges of plants colonization strategies in virtual 3D environments / Kevin Godin-Dubois, Sylvain Cussat-Blanc, and Yves Duthen.
- [VI]. Networks and distributed systems: 26. Early detection of Botnet activities using grammatical evolution / Selim Yilmaz and Sevil Sen
- 27. Exploring concurrent and stateless evolutionary algorithms / Juan J. Merelo, J.L.J. Laredo, Pedro A. Castillo, José-Mario García-Valdez, and Sergio Rojas-Galeano
- 28. Evolving trust formula to evaluate data trustworthiness in VANETs using genetic programming / Mehmet Aslan and Sevil Sen
- 29. A matheuristic for green and robust 5G virtual network function placement / Thomas Bauschert, Fabio D'Andreagiovanni, Andreas Kassler, and Chenghao Wang
- 30. Prolong the network lifetime of wireless underground sensor networks by optimal relay node placement / Nguyen Thi Tam, Huynh Thi Thanh Binh, Tran Huy Hung, Dinh Anh Dung, and Le Trong Vinh.
- [VII]. Neuroevolution and data analytics: 31. The evolution of self-taught neural networks in a multi-agent environment / Nam Le, Anthony Brabazon, and Michael O'Neill
- 32. Coevolution of generative adversarial networks / Victor Costa, Nuno Lourenço, and Penousal Machado
- 33. Evolving recurrent neural networks for time series data prediction of coal plant parameters / AbdElRahman ElSaid, Steven Benson, Shuchita Patwardhan, David Stadem, and Travis Desell
- 34. Improving NeuroEvolution efficiency by surrogate model-based optimization with phenotypic distance kernels / Jörg Stork, Martin Zaefferer, and Thomas Bartz-Beielstein.
- [VIII]. Numerical optimization : theory, benchmarks and applications: 35. Compact optimization algorithms with re-sampled inheritance / Giovanni Iacca and Fabio Caraffini
- 36. Particle swarm optimization : understanding order-2 stability guarantees / Christopher W. Cleghorn
- 37. Fundamental flowers : evolutionary discovery of coresets for classification / Pietro Barbiero and Alberto Tonda.
(source: Nielsen Book Data)
- EvoApplications (Conference) (26th : 2023 : Brno, Czech Republic ; Online)
- Cham : Springer, 2023.
- Description
- Book — 1 online resource (xx, 817 pages) : illustrations (some color).
- Summary
-
- Applications of Evolutionary Computation
- Analysis of Evolutionary Computation Methods: Theory, Empirics, and Real-World Applications
- Computational Intelligence for Sustainability
- Evolutionary Computation in Edge, Fog, and Cloud Computing
- Evolutionary Machine Learning
- Machine Learning and AI in Digital Healthcare and Personalized Medicine
- Resilient Bio-Inspired Algorithms
- Soft Computing applied to Games
- Surrogate-Assisted Evolutionary Optimisation.
- EvoApplications (Conference) (2011 : Turin, Italy)
- Berlin : Springer, 2011.
- Description
- Book — 2 v.
- Summary
-
- pt. 1. EvoApplications 2011 : EvoCOMPLEX, EvoGAMES, EvoIASP, EvoINTELLIGENCE, EvoNUM, and EvoSTOC, Torino, Italy, April 27-29, 2011, proceedings
- pt. 2. EvoApplications 2011 : EvoCOMNET, EvoFIN, EvoHOT, EvoMUSART, EvoSTIM, and EvoTRANSLOG, Torino, Italy, April 27-29, 2011, proceedings.
(source: Nielsen Book Data)
- San Francisco, Calif. : Morgan Kaufmann ; Oxford : Elsevier Science, 2003.
- Description
- Book — xxi, 393 p. : ill. ; 24 cm.
- Summary
-
- PART I - Introduction to the Concepts of Bioinformatics and Evolutionary Computation
- Chapter 1. An Introduction to Bioinformatics for Computer Scientists By David W. Corne and Gary B. Fogel
- Chapter 2. An Introduction to Evolutionary Computation for Biologists By Gary B. Fogel and David W. Corne PART II - Sequence and Structure Alignment
- Chapter 3. Determining Genome Sequences from Experimental Data Using Evolutionary Computation By Jacek Blazewic and Marta Kasprzak
- Chapter 4. Protein Structure Alignment Using Evolutionary Computation By Joseph D. Szustakowski and Zhipeng Weng
- Chapter 5. Using Genetic Algorithms for Pairwise and Multiple Sequence Alignments By Cedric Notredame PART III - Protein Folding
- Chapter 6. On the Evolutionary Search for Solutions to the Protein Folding Problem By Garrison W. Greenwood and Jae-Min Shin
- Chapter 7. Toward Effective Polypeptide Structure Prediction with Parallel Fast Messy Genetic Algorithms By Gary B. Lamont and Laurence D. Merkle
- Chapter 8. Application of Evolutionary Computation to Protein Folding with Specialized Operators By Steffen Schulze-Kremer PART IV - Machine Learning and Inference
- Chapter 9. Identification of Coding Regions in DNA Sequences Using Evolved Neural Networks By Gary B. Fogel, Kumar Chellapilla, and David B. Fogel
- Chapter 10. Clustering Microarray Data with Evolutionary Algorithms By Emanuel Falkenauer and Arnaud Marchand
- Chapter 11. Evolutionary Computation and Fractal Visualization of Sequence Data By Dan Ashlock and Jim Golden
- Chapter 12. Identifying Metabolic Pathways and Gene Regulation Networks with Evolutionary Algorithms By Junji Kitagawa and Hitoshi Iba
- Chapter 13. Evolutionary Computational Support for the Characterization of Biological Systems By Bogdan Filipic and Janez Strancar PART V - Feature Selection
- Chapter 14. Discovery of Genetic and Environmental Interactions in Disease Data Using Evolutionary Computation By Laetitia Jourdan, Clarisse Dhaenens[AQ2], and El-Ghazali Talbi
- Chapter 15. Feature Selection Methods Based on Genetic Algorithms for in Silico Drug Design By Mark J. Embrechts, Muhsin Ozdemir, Larry Lockwood, Curt Breneman, Kristin Bennet, Dirk Devogelaere, and Marcel Rijkaert
- Chapter 16. Interpreting Analytical Spectra with Evolutionary Computation By Jem J. Rowland Appendix: Internet Resources for Bioinformatics Data and Tools.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Online
SAL3 (off-campus storage)
SAL3 (off-campus storage) | Status |
---|---|
Stacks | Request (opens in new tab) |
QH441.2 .E96 2003 | Available |
- Amsterdam ; Boston : Morgan Kaufmann Publishers, c2003.
- Description
- Book — xxi, 393 p. : ill. (some col.).
11. Experimental research in evolutionary computation [electronic resource] : the new experimentalism [2006]
- Bartz-Beielstein, Thomas.
- Berlin ; New York : Springer, c2006.
- Description
- Book — xiv, 214 p. : ill.
- Summary
-
- Basics.- Research in Evolutionary Computation.- The New Experimentalism.- Statistics for Computer Experiments.- Optimization Problems.- Designs for Computer Experiments.- Search Algorithms.- Results and Perspectives.- Comparison.- Understanding Performance.- Summary and Outlook.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- IEEE Congress on Evolutionary Computation (2017 : San Sebastián, Spain)
- Piscataway, NJ : IEEE, [2017?]
- Description
- Book — 1 online resource (various pagings) : illustrations (some color)
13. Proceedings of the 2014 IEEE Congress on Evolutionary Computation : July 6-11, 2014, Beijing, China [2014]
- IEEE Congress on Evolutionary Computation (2014 : Beijing, China)
- [Piscataway, N.J.] : IEEE, [2014?]
- Description
- Book — 1 online resource (various pagings) : illustrations
- Pandey, Hari Mohan, author.
- London ; San Diego, CA : Elsevier Academic Press, [2022]
- Description
- Book — xxi, 204 pages : illustrations ; 24 cm
- Summary
-
- 1. Introduction and Scientific Goals
- 2. State of the Art: Grammatical Inference
- 3. State of the Art: Genetic Algorithms and Premature Convergence
- 4. Genetic Algorithms and Grammatical Inference
- 5. Performance Analysis of Genetic Algorithm for Grammatical Inference
- 6. Applications of Grammatical Inference Methods and Future Development.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Cham, Switzerland : Springer, 2020.
- Description
- Book — 1 online resource (xvi, 238 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- Preface
- Chapter 1. Introduction to Nature-inspired Algorithms
- Chapter 2. Ant Colony Optimizer: Theory, Literature Review, and Application in AUV Path Planning.-Chapter 3. Ant Lion Optimizer: Theory, Literature Review, and Application in Multi-layer Perceptron Neural Network
- Chapter 4. Dragonfly Algorithm: Theory, Literature Review, and Application in Feature Selection
- Chapter 5. Genetic Algorithm: Theory, Literature Review, and Application in Image Reconstruction etc.
- Oliva, Diego author.
- Cham, Switzerland : Springer, 2019.
- Description
- Book — 1 online resource (xv, 226 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- Introduction.- Optimization.- Metaheuristic optimization.- Image processing.- Image Segmentation using metaheuristics.- Multilevel thresholding for image segmentation based on metaheuristic Algorithms.- Otsu's between class variance and the tree seed algorithm.- Image segmentation using Kapur's entropy and a hybrid optimization algorithm.- Tsallis entropy for image thresholding.- Image segmentation with minimum cross entropy.- Fuzzy entropy approaches for image segmentation.- Image segmentation by gaussian mixture.- Image segmentation as a multiobjective optimization problem.- Clustering algorithms for image segmentation.- Contextual information in image thresholding.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Ma, Haiping author.
- London, UK : ISTE, Ltd. ; Hoboken, NJ : John Wiley & Sons, Inc. 2017.
- Description
- Book — 1 online resource.
- Summary
-
- Chapter 1. The Science of Biogeography 1 1.1. Introduction 1 1.2. Island biogeography 3 1.3. Influence factors for biogeography 6
- Chapter 2. Biogeography and Biological Optimization 11 2.1. A mathematical model of biogeography 11 2.2. Biogeography as an optimization process 16 2.3. Biological optimization 19 2.3.1. Genetic algorithms 19 2.3.2. Evolution strategies 20 2.3.3. Particle swarm optimization 21 2.3.4. Artificial bee colony algorithm 22 2.4. Conclusion 23
- Chapter 3. A Basic BBO Algorithm 25 3.1. BBO definitions and algorithm 25 3.1.1. Migration 26 3.1.2. Mutation 27 3.1.3. BBO implementation 27 3.2. Differences between BBO and other optimization algorithms 35 3.2.1. BBO and genetic algorithms 35 3.2.2. BBO and other algorithms 36 3.3. Simulations 37 3.4. Conclusion 44
- Chapter 4. BBO Extensions 45 4.1. Migration curves 45 4.2. Blended migration 49 4.3. Other approaches to BBO 51 4.4. Applications 56 4.5. Conclusion 59
- Chapter 5. BBO as a Markov Process 61 5.1. Markov definitions and notations 61 5.2. Markov model of BBO 72 5.3. BBO convergence 79 5.4. Markov models of BBO extensions 90 5.5. Conclusions 99
- Chapter 6. Dynamic System Models of BBO 103 6.1. Basic notation 103 6.2. Dynamic system models of BBO 105 6.3. Applications to benchmark problems 119 6.4. Conclusions 122
- Chapter 7. Statistical Mechanics Approximations of BBO 123 7.1. Preliminary foundation 123 7.2. Statistical mechanics model of BBO 128 7.2.1. Migration 128 7.2.2. Mutation 134 7.3. Further discussion 141 7.3.1. Finite population effects 141 7.3.2. Separable fitness functions 142 7.4. Conclusions 143
- Chapter 8. BBO for Combinatorial Optimization 145 8.1. Traveling salesman problem 147 8.2. BBO for the TSP 148 8.2.1. Population initialization 148 8.2.2. Migration in the TSP 150 8.2.3. Mutation in the TSP 157 8.2.4. Implementation framework 159 8.3. Graph coloring 163 8.4. Knapsack problem 165 8.5. Conclusion 167
- Chapter 9. Constrained BBO 169 9.1. Constrained optimization 170 9.2. Constraint-handling methods 172 9.2.1. Static penalty methods 172 9.2.2. Superiority of feasible points 173 9.2.3. The eclectic evolutionary algorithm 174 9.2.4. Dynamic penalty methods 174 9.2.5. Adaptive penalty methods 176 9.2.6. The niched-penalty approach 177 9.2.7. Stochastic ranking 178 9.2.8. -level comparisons 178 9.3. BBO for constrained optimization 179 9.4. Conclusion 185
- Chapter 10. BBO in Noisy Environments 187 10.1. Noisy fitness functions 188 10.2. Influence of noise on BBO 190 10.3. BBO with re-sampling 193 10.4. The Kalman BBO 196 10.5. Experimental results 199 10.6. Conclusion 201
- Chapter 11. Multi-objective BBO 203 11.1. Multi-objective optimization problems 204 11.2. Multi-objective BBO 211 11.2.1. Vector evaluated BBO 211 11.2.2. Non-dominated sorting BBO 213 11.2.3. Niched Pareto BBO 216 11.2.4. Strength Pareto BBO 218 11.3. Real-world applications 223 11.3.1. Warehouse scheduling model 223 11.3.2. Optimization of warehouse scheduling 229 11.4. Conclusion 231
- Chapter 12. Hybrid BBO Algorithms 233 12.1. Opposition-based BBO 234 12.1.1. Opposition definitions and concepts 234 12.1.2. Oppositional BBO 236 12.1.3. Experimental results 238 12.2. BBO with local search 240 12.2.1. Local search methods 240 12.2.2. Simulation results 245 12.3. BBO with other EAs 247 12.3.1. Iteration-level hybridization 247 12.3.2. Algorithm-level hybridization 250 12.3.3. Experimental results 254 12.4. Conclusion 256 Appendices 259 Appendix A. Unconstrained Benchmark Functions 261 Appendix B. Constrained Benchmark Functions 265 Appendix C. Multi-objective Benchmark Functions 289 Bibliography 309 Index 325.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Lobato, Fran Sérgio, author.
- Cham, Switzerland : Springer, [2017]
- Description
- Book — 1 online resource.
- Summary
-
- Chapter 1 Introduction.-
- Part 1 Basic Concepts.-
- Chapter 2 Multi-objective Optimization Problem.-
- Chapter 3 Treatment of multi-objective Optimization Problem.-
- Part 2 Methodology.-
- Chapter 4 Self-Adaptive Multi-objective Optimization Differential Evolution.-
- Part 3 Applications.-
- Chapter 5 Mathematical.-
- Chapter 6 Engineering.-
- Part 4 Final Considerations.-
- Chapter 7 Conclusions.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Online
-
- EBSCOhost Access limited to 1 user
- Google Books (Full view)
- Cham : Springer, [2015].
- Description
- Book — xi, 493 pages : illustrations (some color) ; 24 cm.
- Summary
-
- Wilson Lamb: Applying functional analytic techniques to evolution equations.- Adam Bobrowski: Boundary conditions in evolutionary equations in biology.-Ernesto Estrada: Introduction to Complex Networks: Structure and Dynamics.-Jacek Banasiak: Kinetic models in natural sciences.- Philippe Laurencot: Weak compactness techniques and coagulation equations.- Ryszard Rudnicki: Stochastic operators and semigroups and their applications in physics and biology.- Mustapha Mokhtar-Kharroubi: Spectral theory for neutron transport.-Anna Marciniak-Czochra: Reaction-diffusion-ODE models of pattern formation.- Mapundi Kondwani Banda: Nonlinear Hyperbolic Systems of Conservation Laws and Related Applications.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
Science Library (Li and Ma)
Science Library (Li and Ma) | Status |
---|---|
Serials | |
QA3 .L28 V.2126 | Unknown |
- Kagan, Eugene, author.
- Boca Raton : CRC Press, [2015]
- Description
- Book — 1 online resource
- Summary
-
- chapter 1. Introduction
- chapter 2. Methods of optimal search and screening
- chapter 3. Methods of optimal foraging
- chapter 4. Models of individual search and foraging
- chapter 5. Coalitional search and swarm dynamics
- chapter 6. Remarks on swarm robotic systems for search and foraging
- chapter 7. Conclusion
- Kagan, Eugene author.
- Boca Raton : CRC Press, [2015]
- Description
- Book — 1 online resource : text file, PDF
- Summary
-
- Introduction. Methods of Optimal Search and Screening. Methods of Optimal Foraging. Models of Individual Search and Foraging. Coalitional Search and Swarm Dynamics. Remarks on Swarm Robotic Systems for Search and Foraging. Conclusion. Bibliography. Index.
- (source: Nielsen Book Data)
- Introduction Group Testing Search and Screening Games of Search Foraging Goal and Structure of This Book
- Methods of Optimal Search and Screening Location Probabilities and Search Density Search for a Static Target Search for a Moving Target
- Methods of Optimal Foraging Preying and Foraging by Patches Spatial Dynamics of Populations Methods of Optimal Foraging Inferences and Restrictions
- Models of Individual Search and Foraging Movements of the Agents and Their Trajectories Brownian Search and Foraging Foraging by Levy Flights Algorithms of Probabilistic Search and Foraging
- Coalitional Search and Swarm Dynamics Swarming and Collective Foraging Foraging by Multiple Foragers in Random Environment Modeling by Active Brownian Motion Turing System for the Swarm Foraging
- Remarks on Swarm Robotic Systems for Search and Foraging
- Conclusion
- Bibliography
- Index
- A Summary appears at the end of each chapter.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
Since the start of modern computing, the studies of living organisms have inspired the progress in developing computers and intelligent machines. In particular, the methods of search and foraging are the benchmark problems for robotics and multi-agent systems. The highly developed theory of search and screening involves optimal search plans that are obtained by standard optimization techniques while the foraging theory addresses search plans that mimic the behavior of living foragers. Search and Foraging: Individual Motion and Swarm Dynamics examines how to program artificial search agents so that they demonstrate the same behavior as predicted by the foraging theory for living organisms. For cybernetics, this approach yields techniques that enable the best online search planning in varying environments. For biology, it allows reasonable insights regarding the internal activity of living organisms performing foraging tasks. The book discusses foraging theory as well as search and screening theory in the same mathematical and algorithmic framework. It presents an overview of the main ideas and methods of foraging and search theories, making the concepts of one theory accessible to specialists of the other. The book covers Brownian walks and Levy flight models of individual foraging and corresponding diffusion models and algorithms of search and foraging in random environments both by single and multiple agents. It also describes the active Brownian motion models for swarm dynamics with corresponding Fokker-Planck equations. Numerical examples and laboratory verifications illustrate the application of both theories.
(source: Nielsen Book Data)
- Berlin : Springer, c2008.
- Description
- Book — xiv, 322 p. : ill.
- Berlin ; Heidelberg : Springer-Verlag, 2008.
- Description
- Book — xii, 486 p. : ill.
24. Multi-objective evolutionary algorithms for knowledge discovery from databases [electronic resource] [2008]
- Berlin : Springer, c2008.
- Description
- Book — xiv, 159 p. : ill.
- Berlin ; New York : Springer, c2008.
- Description
- Book — xvi, 409 p. : ill. (some col.) ; 24 cm.
- Summary
-
- Introduction.- Fundamentals of Search, Optimization and Decision Making.- Multiobjective EA Basics.- Multiobjective Cybernetics - Does Nature Solve Problems and Are They Multiobjective?.- Modularity Causes Multiple Objectives in Natural and Computational Systems.- Problem Decomposition, Modularity and their relation to Multiple Objectives.- Spatial Predator-Prey Models of Multiobjective Optimization.- Solution Concepts in Co-evolution and Multi-objective Search.- How Multiple Objectives are Used and their Effects on Solution Selection Methods.- Ill-Defined Problem Spaces.- Constrained Optimization via MOEAs.- Multiobjectivization.- Helper Objectives.- Learning Evaluation Functions for Global Optimization.- Assessing the Intrinsic Number of Objectives.- Assessing the Intrinsic Number of Decision Variables.- Fuzzy Dominance, Favour and other Relations beyond Pareto Optimality.- Multiobjective Clustering.- Reducing Bloat in GP with Multiple Objectives.- Multiobjective GP for Human-Understandable Models.- Multiobjective Supervised Learning.- Multiobjective Association Rule Mining.- Protein-folding via MOEAs and Solution Selection.- Unveiling Salient Insights in Engineering Designs with MOEAs.- Conclusions.- MOEA: Triumph of Natural Computing.- References.- Index.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Online
SAL3 (off-campus storage)
SAL3 (off-campus storage) | Status |
---|---|
Stacks | Request (opens in new tab) |
QA76.618 .M858 2008 | Available |
- Berlin ; New York : Springer, c2005.
- Description
- Book — xvii, 265 p. : ill.
- Summary
-
- Evolutionary Algorithms for Data Mining and Knowledge Discovery.- Strategies for Scaling Up Evolutionary Instance Reduction Algorithms for Data Mining.- GAP: Constructing and Selecting Features with Evolutionary Computing.- Multi-Agent Data Mining using Evolutionary Computing.- A Rule Extraction System with Class-Dependent Features.- Knowledge Discovery in Data Mining via an Evolutionary Algorithm.- Diversity and Neuro-Ensemble.- Unsupervised Niche Clustering: Discovering an Unknown Number of Clusters in Noisy Data Sets.- Evolutionary Computation in Intelligent Network Management.- Genetic Programming in Data Mining for Drug Discovery.- Microarray Data Mining with Evolutionary Computation.- An Evolutionary Modularized Data Mining Mechanism for Financial Distress Forecasts.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Singapore ; Hackensack, N.J. : World Scientific, c2004.
- Description
- Book — xxvii, 761 p. : ill.
- Summary
-
- An Introduction to Multi-Objective Evolutionary Algorithms and Their Applications
- Applications of Multi-Objective Evolutionary Algorithms in Engineering Design
- Optimal Design of Industrial Electromagnetic Devices: A Multiobjective Evolutionary Approach
- Groundwater Monitoring Design: A Case Study Combining Epsilon Dominance Archiving and Automatic Parameterization for the NSGA-II
- Using a Particle Swarm Optimizer with a Multi-Objective Selection Scheme to Design Combinational Logic Circuits
- Application of Multi-Objective Evolutionary Algorithms in Autonomous Vehicles Navigation
- Automatic Control System Design via a Multiobjective Evolutionary Algorithm
- The Use of Evolutionary Algorithms to Solve Practical Problems in Polymer Extrusion
- The Use of Evolutionary Algorithms to Solve Practical Problems in Polymer Extrusion
- City and Regional Planning via a MOEA: Lessons Learned
- A Multi-Objective Evolutionary Algorithm for the Covering Tour Problem
- A Computer Engineering Benchmark Application for Multiobjective Optimizers
- Multiobjective Aerodynamic Design and Visualization of Supersonic Wings by Using Adaptive Range Multiobjective Genetic Algorithms
- Applications of a Multi-Objective Genetic Algorithm in Chemical and Environmental Engineering
- Multi-Objective Spectroscopic Data Analysis of Inertial Confinement Fusion Implosion Cores: Plasma Gradient Determination
- Application of Multiobjective Evolutionary Optimization Algorithms in Medicine
- On Machine Learning with Multiobjective Genetic Optimization
- Generalized Analysis of Promoters: A Method for DNA Sequence Description
- Multi-Objective Evolutionary Algorithms for Computer Science Applications
- Design of Fluid Power System Using a Multi Objective Genetic Algorithm
- Elimination of Exceptional Elements in Cellular Manufacturing Systems Using Multi-Objective Genetic Algorithms
- Single-Objective and Multi-Objective Evolutionary Flowshop Scheduling
- Evolutionary Operators Based on Elite Solutions for Bi-Objective Combinatorial Optimization
- Multi-Objective Rectangular Packing Problem
- Multi-Objective Algorithms for Attribute Selection in Data Mining
- Financial Applications of Multi-Objective Evolutionary Algorithms: Recent Developments and Future Research Directions
- Evolutionary Multi-Objective Optimization Approach to Constructing Neural Network Ensembles for Regression
- Optimizing Forecast Model Complexity Using Multi-Objective Evolutionary Algorithms
- Even Flow Scheduling Problems in Forest Management
- Using Diversity to Guide the Search in Multi-Objective Optimization.
- EMO (Conference) (10th : 2019 : East Lansing, Mich.)
- Cham, Switzerland : Springer, 2019.
- Description
- Book — 1 online resource Digital: text file.PDF.
- Summary
-
- Intro; Preface; Organization; Contents; Theory; On Bi-objective Convex-Quadratic Problems; 1 Introduction; 2 Theoretical Properties of Bi-objective Convex-Quadratic Problems; 2.1 Preliminaries; 2.2 Pareto Set; 2.3 Convexity of the Pareto Front; 3 New Classes of Bi-objective Test Functions; 4 Summary; References; An Empirical Investigation of the Optimality and Monotonicity Properties of Multiobjective Archiving Methods; 1 Introduction; 2 Experimental Design; 2.1 Assessment Indexes; 2.2 Archivers Investigated; 2.3 Test Problems; 2.4 General Experimental Settings; 3 Results; 3.1 Optimal Ratio
- 3.2 Deterioration Ratio3.3 Summary; 4 Concluding Remarks; References; Evolutionary Multi-objective Optimization Using Benson's Karush-Kuhn-Tucker Proximity Measure; 1 Introduction; 2 KKT Based Proximity Measure; 3 Proposed B-KKT Proximity Measure; 4 Results; 4.1 Two-Objective Optimization Problems; 4.2 Three-Objective Optimization Problems; 4.3 Many-Objective Optimization Problems; 4.4 Engineering Design Problem; 5 Conclusions; References; On the Convergence of Decomposition Algorithms in Many-Objective Problems; 1 Introduction; 2 Numerical Experiments; 3 Interpretation of Results
- 4 ConclusionReferences; Algorithms; A New Hybrid Metaheuristic for Equality Constrained Bi-objective Optimization Problems; 1 Introduction; 2 Background; 3 Proposed Algorithm (M-NSGA-II/PT); 3.1 First Stage: Rough Approximation via Micro-NSGA-II; 3.2 Second Stage: Refinement via PT; 4 Numerical Results; 5 Conclusions and Future Work; References; Make Evolutionary Multiobjective Algorithms Scale Better with Advanced Data Structures: Van Emde Boas Tree for Non-dominated Sorting; 1 Introduction; 2 Preliminaries; 3 The Divide-and-Conquer Algorithm for Non-dominated Sorting; 3.1 The General Plan
- 3.2 Sweep Line Algorithms for m = 24 The Van Emde Boas Tree; 5 Efficient Implementation of the Van Emde Boas Tree; 6 Implementation and Analysis of the Whole Algorithm; 7 Experiments; 8 Conclusion; References; Toward a New Family of Hybrid Evolutionary Algorithms; 1 Introduction; 2 Background; 3 Subspace Polynomial Mutation Operator; 4 Multi-objective Descent Directions Within MOEAs; 4.1 Equality Constrained MOPs; 4.2 Gradient-Free Descent Direction; 5 Application: Hybrid Algorithm for Constrained Optimization; 6 Conclusions and Future Work; References
- Adjustment of Weight Vectors of Penalty-Based Boundary Intersection Method in MOEA/D1 Introduction; 2 Related Works; 3 MOEA/D-PBI with Adjusted Weight Vectors; 4 Computational Experiments; 4.1 Experimental Settings; 4.2 Experimental Results; 5 Conclusions; References; GD
- E4: The Generalized Differential Evolution with Ordered Mutation; 1 Introduction; 2 Background Review; 2.1 Generalized Differential Evolution; 2.2 Existing Single Objective Differential Evolution with Ordered Mutation; 3 Proposed Algorithm: The Generalized Differential Evolution with the Ordered Mutation (GDE4); 4 Experiment
(source: Nielsen Book Data)
- EMO (Conference) (8th : 2015 : Guimarães, Portugal)
- Cham : Springer, 2015.
- Description
- Book — 1 online resource (xxiv, 447 pages) : illustrations Digital: text file; PDF.
- Summary
-
- Plenary Talks
- Interactive Approaches in Multiple Criteria Decision Making and Evolutionary Multi-objective Optimization
- Towards Automatically Configured Multi-objective Optimizers
- A Review of Evolutionary Multiobjective Optimization Applications in Aerospace Engineering
- Performance evaluation of multiobjective optimization algorithms: quality indicators and the attainment function
- Theory and Hyper-Heuristics
- A Multimodal Approach for Evolutionary Multi-objective Optimization (MEMO): Proof-of-Principle Results
- Unwanted Feature Interactions Between the Problem and Search Operators in Evolutionary Multi-objective Optimization
- Neutral but a Winner! How Neutrality helps Multiobjective Local Search Algorithms
- To DE or not to DE? Multi-Objective Differential Evolution Revisited from a Component-Wise Perspective
- Model-Based Multi-Objective Optimization: Taxonomy, Multi-Point Proposal, Toolbox and Benchmark
- Temporal Innovization: Evolution of Design Principles Using Multi-objective Optimization
- MOEA/D-HH: A Hyper-Heuristic for Multi-objective Problems
- Using hyper-heuristic to select leader and archiving methods for many-objective problems
- Algorithms
- Adaptive Reference Vector Generation for Inverse Model Based Evolutionary Multiobjective Optimization with Degenerate and Disconnected Pareto Fronts
- MOEA/PC: Multiobjective Evolutionary Algorithm Based on Polar Coordinates
- GD-MOEA: A New Multi-Objective Evolutionary Algorithm based on the Generational Distance Indicator
- Experiments on Local Search for Bi-objective Unconstrained Binary Quadratic Programming
- A Bug in the Multiobjective Optimizer IBEA: Salutary Lessons for Code Release and a Performance Re-Assessment
- A Knee-based EMO Algorithm with an Efficient Method to Update Mobile Reference Points
- A Hybrid Algorithm for Stochastic Multiobjective Programming Problem
- Parameter Tuning of MOEAs using a Bilevel Optimization Approach
- Pareto adaptive scalarising functions for decomposition based algorithms
- A bi-level multiobjective PSO algorithm
- An interactive simple indicator-based evolutionary algorithm (I-SIBEA) for multiobjective optimization problems
- Combining Non-dominance, Objective-sorted and Spread Metric to Extend Firefly Algorithm to Multi-objective Optimization
- GACO: a parallel evolutionary approach to multi-objective scheduling
- Kriging Surrogate Model Enhanced by Coordinate Transformation of Design Space Based on Eigenvalue Decomposition
- A Parallel Multi-Start NSGA II Algorithm for Multiobjective Energy Reduction Vehicle Routing Problem
- Evolutionary Inference of Attribute-based Access Control Policies
- Hybrid Dynamic Resampling for Guided Evolutionary Multi-Objective Optimization
- A Comparison of Decoding Strategies for the 0/1 Multi-objective Unit Commitment Problem
- Comparing Decomposition-based and Automatically Component-Wise Designed Multi-objective Evolutionary Algorithms
- Upper Confidence Bound (UCB) Algorithms for Adaptive Operator Selection in MOEA/D
- Towards Understanding Bilevel Multi-objective Optimization with Deterministic Lower Level Decisions.
- EMO (Conference) (8th : 2015 : Guimarães, Portugal)
- Cham : Springer, 2015.
- Description
- Book — 1 online resource (xvii, 591 pages) : illustrations Digital: text file; PDF.
- Summary
-
- Many-Objectives Optimization, Performance and Robustness
- Evolutionary Many-objective Optimization based on Kuhn-Munkres? Algorithm
- A KKT Proximity Measure for Evolutionary Multi-Objective and Many-Objective Optimization
- U-NSGA-III: A Unified Evolutionary Optimization Procedure for Single, Multiple, and Many Objectives? Proof-of- Principle Results
- Clustering based parallel Many-objective Evolutionary Algorithms using the shape of the objective vectors
- Faster Exact Algorithms for Computing Expected Hypervolume Improvement
- A GPU-based Algorithm for a Faster Hypervolume Contribution Computation
- A Feature-based Performance Analysis in Evolutionary Multiobjective Optimization
- Modified Distance Calculation in Generational Distance and Inverted Generational Distance
- On the Behavior of Stochastic Local Search within Parameter Dependent MOPs
- An Evolutionary Approach to Active Robust Multiobjective Optimisation
- Linear scalarization Pareto front identification in stochastic environments
- Elite Accumulative Sampling Strategies for Noisy Multi-Objective Optimisation
- Guideline Identification for Optimization under Uncertainty through the Optimization of a Boomerang Trajectory
- MCDM
- Using indifference information in robust ordinal regression
- A Multi-objective genetic algorithm for inferring inter-criteria parameters for water supply consensus
- Genetic Algorithm Approach for a Class of Multi-criteria, Multi-vehicle Planner of UAVs
- An Interactive Evolutionary Multiobjective Optimization Method: Interactive WASF-GA
- On Generalizing Lipschitz Global Methods for Multiobjective Optimization
- Dealing with scarce optimization time in complex logistics optimization: A study on the biobjective Swap-Body Inventory Routing Problem
- Machine Decision Makers as a Laboratory for Interactive EMO
- Real World Applications
- Aircraft Air Inlet Design Optimization via Surrogate-Assisted Evolutionary Computation
- Diesel Engine Drive-Cycle Optimization with the Integrated Optimization Environment? Liger
- Re-design for robustness: An approach based on many objective optimization
- A Model for a Human Decision-Maker in a Polymer Extrusion Process
- Multi-Objective Optimization of Gate Location and Processing Conditions in Injection Molding Using MOEAs: Experimental Assessment
- A Multi-Criteria Decision Support System for a Routing Problem in Waste Collection
- Application of Evolutionary Multiobjective Algorithms for solving the problem of Energy Dispatch in Hydroelectric Power Plants
- Solutions in Under 10 Seconds for Vehicle Routing Problems with Time Windows using Commodity Computers
- A comparative study of algorithms for solving the Multiobjective Open-Pit Mining Operational Planning Problems
- A Model to Select a Portfolio of Multiple Spare Parts for a Public Bus Transport Service Using NSGA II.-A Multi-Objective Optimization Approach Associated to Climate Change Analysis to Improve Systematic Conservation Planning
- Marginalization in Mexico: An Application of the Electre III[Pleaseinsertintopreamble]MOEA Methodology
- Integrating Hierarchical Clustering and Pareto-Efficacy to Preventive Controls Selection in Voltage Stability Assessment
- Multi-objective Evolutionary Algorithm with Discrete Differential Mutation Operator for Service Restoration in Largescale
- Distribution Systems
- Combining Data Mining and Evolutionary Computation for Multi-Criteria Optimization of Earthworks
- Exploration of Two-Objective Scenarios on Supervised Evolutionary Feature Selection: a Survey and a Case Study
- (Application to Music Categorisation)
- A Multi-Objective Approach for Building Hyperspectral Remote Sensed Image Classifier Combiners
- Multi-Objective Optimization of Barrier Coverage with Wireless Sensors
- Comparison of Single and Multi-objective Evolutionary Algorithms for Robust Link-state Routing.
- Sumathi, S.
- Berlin : Springer, c2008.
- Description
- Book — xxi, 584 p. : ill.
- International Conference on Genetic and Evolutionary Computing (2nd : 2008 : Jingzhou, Hubei Sheng, China)
- [Piscataway, N.J.] : IEEE Xplore, c2008.
- Description
- Book
- Berlin : Springer, c2007.
- Description
- Book — xii, 317 p. : ill.
- Summary
-
- Parameter Setting in EAs: a 30 Year Perspective.- Parameter Control in Evolutionary Algorithms.- Self-Adaptation in Evolutionary Algorithms.- Adaptive Strategies for Operator Allocation.- Sequential Parameter Optimization Applied to Self-Adaptation for Binary-Coded Evolutionary Algorithms.- Combining Meta-EAs and Racing for Difficult EA Parameter Tuning Tasks.- Genetic Programming: Parametric Analysis of Structure Altering Mutation Techniques.- Parameter Sweeps for Exploring Parameter Spaces of Genetic and Evolutionary Algorithms.- Adaptive Population Sizing Schemes in Genetic Algorithms.- Population Sizing to Go: Online Adaptation Using Noise and Substructural Measurements.- Parameter-less Hierarchical Bayesian Optimization Algorithm.- Evolutionary Multi-Objective Optimization Without Additional Parameters.- Parameter Setting in Parallel Genetic Algorithms.- Parameter Control in Practice.- Parameter Adaptation for GP Forecasting Applications.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- EvoCOP (Conference) (2005 : Lausanne, Switzerland)
- Berlin ; New York : Springer, c2005.
- Description
- Book — xi, 269 p. : ill.
- European Workshop on Evolutionary Computation in Combinatorial Optimization, EvoCOP (4th : 2004 : Coimbra, Portugal)
- Berlin ; New York : Springer, c2004.
- Description
- Book — x, 240 p. : ill. ; 24 cm.
- Summary
-
This book constitutes the refereed proceedings for the 4th European Conference on Evolutionary Computation in Combinatorial Optimization, EvoCOP 2004, held in Coimbra, Portugal, in April together with EuroGP 2004 and six workshops on evolutionary computing. The 23 revised full papers presented were carefully reviewed and selected from 86 submissions. Among the topics addressed are evolutionary algorithms as well as metaheuristics like memetic algorithms, ant colony optimization, and scatter search; the papers are dealing with representations, operators, search spaces, adaptation, comparison of algorithms, hybridization of different methods, and theory. Among the combinatorial optimization problems studied are graph coloring, network design, cutting, packing, scheduling, timetabling, traveling salesman, vehicle routing, and various other real-world applications.
(source: Nielsen Book Data)
SAL3 (off-campus storage)
SAL3 (off-campus storage) | Status |
---|---|
Stacks | Request (opens in new tab) |
QA76.618 .E96 2004 | Available |
- EvoWorkshops 2002 (2002 : Kinsale, Ireland)
- Berlin ; New York : Springer, 2002.
- Description
- Book — xiii, 344 p. : ill. ; 24 cm.
- Summary
-
This book constitutes the refereed proceedings of three workshops on the application of evolutionary programming and algorithms in various domains; these workshops were held in conjunction with the 5th European Conference on Genetic Programming, EuroGP 2002, in Kinsale, Ireland, in April 2002. The 33 revised full papers presented were carefully reviewed and selected by the respective program committees. In accordance with the three workshops EvoCOP, EvoIASP, and EvoSTIM/EvoPLAN, the papers are organized in topical sections on combinatorial optimization problems; image analysis and signal processing; and scheduling, timetabling, and AI planning.
(source: Nielsen Book Data)
SAL3 (off-campus storage)
SAL3 (off-campus storage) | Status |
---|---|
Stacks | Request (opens in new tab) |
QA76.618 .E899 2002 | Available |
- Fogel, David B.
- Bellingham, Wash. : SPIE Press, c2000.
- Description
- Book — xii, 168 p. : ill. ; 26 cm.
- Summary
-
- An overview of evolutionary algorithms and their advantages
- evolving models of time series
- evolutionary clustering and classification
- evolving control systems
- theory and tools for improving evolutionary algorithms.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Online
SAL3 (off-campus storage)
SAL3 (off-campus storage) | Status |
---|---|
Stacks | Request (opens in new tab) |
TK5102.9 .F64 2000 | Available |
- Conference on Swarm Intelligence and Evolutionary Computation (3rd : 2018 : Bam, Iran)
- [Piscataway, New Jersey] : [IEEE], [2018?]
- Description
- Book — 1 online resource : illustrations (some color) Digital: text file.
- Conference on Swarm Intelligence and Evolutionary Computation (1st : 2016 : Bam, Iran)
- [Piscataway, New Jersey] : IEEE, [2016]
- Description
- Book — 1 online resource (170 pages) : illustrations
- Summary
-
Annotation Genetic Algorithms Genetic Programming Evolution Strategies Evolutionary Programming Differential Evolution Artificial Immune Systems Particle Swarm Optimization Ant Colony Optimization Bacterial Foraging Artificial Bees Harmony Search Gravitational search algorithm Quantum Computing Memetic Computing Fireflies Algorithm Hybridization of Algorithms Imperialism Competitive Learning Tabu Search Simulated Annealing Bat Algorithm intelligent water drop Other Metaheuristics.
- International Conference on Parallel Problem Solving from Nature (13th : 2014 : Ljubljana, Slovenia)
- Cham : Springer, 2014.
- Description
- Book — 1 online resource (xxiv, 955 pages) : illustrations Digital: text file; PDF.
- Summary
-
- Adaptation, Self-Adaptation and Parameter Tuning
- Classifier Systems, Differential Evolution and Swarm Intelligence
- Coevolution and Artificial Immune Systems
- Constraint Handling
- Dynamic and Uncertain Environments
- Estimation of Distribution Algorithms and Metamodelling
- Genetic Programming
- Multi-objective Optimisation
- Parallel Algorithms and Hardware Implementations
- Real-World Applications
- Theory.
- International Conference on Evolutionary Computation (1996 : Berlin, Germany)
- Berlin ; New York : Springer, ©1996.
- Description
- Book — 1 online resource (xvii, 1050 pages) : illustrations
- Summary
-
- Computational brittleness and the evolution of computer viruses
- Evolutionary computing in multi-agent environments: Speciation and symbiogenesis
- Evolution strategies with subjective selection
- Emergent cooperation for multiple agents using genetic programming
- Evolution programs evolved
- Encoding scheme issues for open-ended artificial evolution
- Hardware evolution at function level
- Coevolutionary life-time learning
- Genetic programs and co-evolution
- Self-assemblage of gene nets in evolution via recruiting of new netters
- A survey of intron research in genetics
- Analytical and numerical investigations of evolutionary algorithms in continuous spaces
- On the asymptotic behavior of multirecombinant Evolution Strategies
- Are long path problems hard for genetic algorithms?
- Random tree generation for genetic programming
- Implicit formae in genetic algorithms
- A probabilistic database approach to the analysis of genetic algorithms
- Mean field analysis of tournament selection on a random manifold
- From recombination of genes to the estimation of distributions I. Binary parameters
- From recombination of genes to the estimation of distributions II. Continuous parameters
- Searching in the presence of noise
- The density of states
- A measure of the difficulty of optimisation problems
- On interactive evolutionary algorithms and stochastic mealy automata
- The influence of different coding schemes on the computational complexity of genetic algorithms in function optimization
- An analysis of the effects of neighborhood size and shape on local selection algorithms
- Evolutionary computation at the edge of feasibility
- Dimensional analysis of allele-wise mixing revisited
- Gaussian diffusion in a simple genetic algorithm
- Erroneous truncation selection
- A breeder's decision making perspective
- New crossover methods for sequencing problems
- The effect of extensive use of the mutation operator on generalization in genetic programming using sparse data sets
- On permutation representations for scheduling problems
- Multi-parent's niche: N-ary crossovers on NK-landscapes
- A preliminary investigation into directed mutations in evolutionary algorithms
- Heuristic crossovers for real-coded genetic algorithms based on fuzzy connectives
- Are evolutionary algorithms improved by large mutations?
- Mutation by imitation in boolean evolution strategies
- Formal algorithms + formal representations =search strategies
- A genetic algorithm with variable range of local search for tracking changing environments
- An Evolution Strategy with adaptation of the step sizes by a variance function
- Every niching method has its niche: Fitness sharing and implicit sharing compared
- Effects of isolation in a distributed population genetic algorithm
- Self-adaptive genetic algorithm for numeric functions
- Niche search: An evolutionary algorithm for global optimisation
- Adaptively parameterised evolutionary systems: Self adaptive recombination and mutation in a genetic algorithm
- Obtaining multiple distinct solutions with genetic algorithm niching methods
- Cost Based Operator Rate Adaptation: An investigation
- Genetic algorithms and relational landscapes
- IOGA: An instance-oriented genetic algorithm
- Explicit filtering of building blocks for genetic algorithms
- Multi-objective optimization by means of the thermodynamical genetic algorithm
- Adaptation to a changing environment by means of the thermodynamical genetic algorithm
- The development of a dual-agent strategy for efficient search across whole system engineering design hierarchies
- A parallel cellular genetic algorithm used in finite element simulation
- A robust solution searching scheme in genetic search
- Solving MasterMind using GAs and simulated annealing: A case of dynamic constraint optimization
- Evolving compact solutions in genetic programming: A case study
- Climbing up NP-hard hills
- On the performance assessment and comparison of stochastic multiobjective optimizers
- Paginating the generalized newspapers
- A comparison of simulated annealing and a heuristic method
- A comparison of optimization techniques for integrated manufacturing planning and scheduling
- A comparison of search techniques on a wing-box optimisation problem
- A comparative study of evolutionary algorithms for on-line parameter tracking
- Modeling urban growth by cellular automata
- Democratic optimization for discrete and continuous systems
- A study of some properties of Ant-Q
- Immunoid: An immunological approach to decentralized behavior arbitration of autonomous mobile robots
- Parallelizable evolutionary dynamics principles for solving the maximum clique problem
- Significance of locality and selection pressure in the grand deluge evolutionary algorithm
- Parallel computing with DNA: Toward the anti-universal machine
- Tackling the "curse of dimensionality" of radial basis functional neural networks using a genetic algorithm
- A Three-stage method for designing Genetic Fuzzy Systems by learning from examples
- Learning heuristics for OBDD minimization by Evolutionary Algorithms
- Improving the generalization performance of multi-layer-perceptrons with population-based incremental learning
- Robust GP in robot learning
- A pattern recognition system using evolvable hardware
- Topology design of feedforward neural networks by genetic algorithms
- An evolution strategy for on-line optimisation of dynamic objective functions
- Exploiting competing subpopulations for automatic generation of test sequences for digital circuits
- Constraint handling in evolutionary search: A case study of the frequency assignment
- An application of genetic algorithms and neural networks to scheduling power generating systems
- Evolutionary algorithms for the calculation of electron distributions in Si-MOSFETs
- Refueling of a nuclear power plant: Comparison of a naive and a specialized mutation operator
- Genetic algorithms applied to the physical design of VLSI circuits: A survey
- Stochastic methods for transistor size optimization of CMOS VLSI circuits
- An adaptive parallel Genetic Algorithm for VLSI-layout optimization
- Genetic algorithms for protocol validation
- Constraint handling for the fault coverage code generation problem: An inductive evolutionary approach
- New genetic local search operators for the traveling salesman problem
- An evolutionary approach to hardware/software partitioning
- Evolutionary Air Traffic Flow Management for large 3D-problems
- Genetic-based dynamic load balancing: Implementation and evaluation
- Production scheduling with genetic algorithms and simulation
- Network optimization using evolutionary strategies
- Co-evolving parallel random number generators
- Scheduling by genetic local search with multi-step crossover
- Finding the conformation of organic molecules with genetic algorithms
- Investigating a Parallel Breeder Genetic Algorithm on the inverse Aerodynamic design
- An evolutionary design for f-? lenses
- Optimization of heat exchanger networks by means of evolution strategies
- Industrial plant pipe-route optimisation with genetic algorithms
- An evolutionary algorithm for design optimization of microsystems
- A learning classifier system for three-dimensional shape optimization.
- IUTAM Symposium on Evolutionary Methods in Mechanics (2002 : Kraków, Poland)
- Dordrecht ; Boston : Kluwer Academic Publishers, c2004.
- Description
- Book — xi, 360 p. : ill. ; 25 cm.
- Summary
-
- Preface. Committee and Sponsors. Evolutionary computation in crack problems
- W. Beluch. Investigation of evolutionary algorithm effectiveness in optimal synthesis of certain mechanisms
- K. Bialas-Hetltowski, et al. Minimum heat losses subjected to stiffness constraints: window frame optimization
- R.A. Bialecki, M. Krol. Evolutionary computation in inverse problems
- T. Burczynski, et al. Hang-glider wing design by genetic optimization
- S. D'Angelo, et al. An error function for optimum dimension synthesis of mechanisms using genetic algorithms
- I.F. de Bustos, et al. Evolutionary computation in thermoelastic problems
- A. Dlugosz. Management of evolutionary MAS for multiobjective optimisation
- G. Dobrowalski, M. Kisiel-Dorohinicki. PAMUC: a new method to handle with constraints and multiobjectivity in evolutionary algorithms
- R. Filomeno Coelho, et al. A comparative analysis of "controlled elitism" in the NGSA-II applied to frame optimization
- D. Greiner, et al. IS-PAES: multiobjective optimization with efficient constraint handling
- A. Hernandez Aguirre, et al. Optimization of aligned fiber laminate composites
- Z. Hu, et al. Genetic algorithm for damage assessment
- V.T. Johnson, et al. Estimation of parameters for a hydrodynamic transmission system mathematical model with the application of genetic algorithm
- A. Kesy, et al. Study of safety of high-rise buildings using evolutionary search
- S. Khajhpour, D.E. Grierson. Structural design using genetic algorithm
- E. Kita, et al. The topology optimization using evolutionary search
- G. Kokot, P. Orantek. Identification of CMM parametric errors by hierarchical genetic strategy
- J. Kolodziej, et al. Genetic algorithm for fatigue crack detection in Timoshenko beam
- M. Krawczuk, et al. Multicriteria design optimization of robot gripper mechanisms
- S. Krenich. Optimal design of multiple clutch brakes using a multistage evolutionary method
- S. Krenich, A. Osyczka. Distributed evolutionary algorithms in optimization of nonlinear solids
- W. Kus, T. Burczynski. Adaptive penalty strategies in genetic search for problems with inequality and equality constraints
- C.-Y. Lin, W.-H. Wu. On the identification of linear elastic mechanical behaviour of orthopedic materials using evolutionary algorithms
- M. Magalhaes Dourado, et al. Ranking pareto optimal solutions in genetic algorithm by using undifferentiation interval method
- J. Montusiewicz. The effectiveness of probabilistic algorithms in shape and topology discrete optimisation of 2-D composite structures
- A. Muc. Genetic algorithms in optimisation of resin hardening technological processes
- A. Muc, P. Saj. Hybrid evolutionary algorithms in optimization of structures under dynamical loads
- P. Orantek. Evolutionary optimization system (EOS) for design automation
- O. Osyczka, et al. Evolutionary method for a universal motor geometry optimization
- G. Papa, B. Korousic-Seljak. A review of the development and application of cluster oriented genetic algorithms
- I.C. Parmee. Genetic algorithm optimization of hole shapes in a perforated elastic plate over a range of loads
- S. Vigdergauz. An object oriented library for evolutionary programs with applications in partitioning of finite element meshes
- J. Zola, et al.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- Online
SAL3 (off-campus storage)
SAL3 (off-campus storage) | Status |
---|---|
Stacks | Request (opens in new tab) |
TA349 .I864 2002 | Available |
- Conference on Swarm Intelligence and Evolutionary Computations (4th : 2020 : Online; Mashhad, Iran)
- [Piscataway, New Jersey] : IEEE, [2020]
- Description
- Book — 1 online resource : illustrations (some color) Digital: text file.
- Conference on Swarm Intelligence and Evolutionary Computation (2nd : 2017 : Kirmān, Iran)
- [Piscataway, New Jersey] : [IEEE], [2017]
- Description
- Book — 1 online resource : illustrations (some color) Digital: text file.PDF.
- EvoApplications (Conference) (25th : 2022 : Madrid, Spain)
- Cham, Switzerland : Springer, 2022.
- Description
- Book — 1 online resource (1 volume) : illustrations (black and white).
- Summary
-
- Intro
- Preface
- Organization
- Contents
- Applications of Evolutionary Computation
- An Enhanced Opposition-Based Evolutionary Feature Selection Approach
- 1 Introduction
- 2 Moth Flame Optimization
- 2.1 Binary Moth Flame Optimization
- 2.2 Binary Moth Flame Optimization for Feature Selection
- 3 The Proposed Approach
- 3.1 Initialization Using Opposition-Based Method
- 3.2 Retiring Flame
- 4 Experimental Setup and Results
- 5 Conclusions
- References
- A Methodology for Determining Ion Channels from Membrane Potential Neuronal Recordings
- 1 Introduction
- 2 Conductance-Based Model Description
- 3 Defining a Benchmark with Known Types of Ion Channels
- 4 Methodology and Experimental Setup
- 5 Experimental Results
- 6 Conclusions
- A Mathematical Description of the Models
- B Experimental Setup and Parameter Ranges
- References
- Swarm Optimised Few-View Binary Tomography
- 1 Introduction
- 2 Binary Tomographic Reconstruction
- 3 Swarm Optimisation
- 4 Constrained Search in High Dimensions
- 5 Reconstructions
- 6 Results
- 7 Discussion
- 8 Conclusions
- References
- Comparing Basin Hopping with Differential Evolution and Particle Swarm Optimization
- 1 Introduction
- 2 The Metaheuristics Studied
- 2.1 Basin Hopping
- 2.2 Differential Evolution
- 2.3 Particle Swarm Optimization
- 3 The Benchmarking Environment
- 4 Experimental Setup
- 5 Experimental Results
- 6 Conclusions
- References
- Combining the Properties of Random Forest with Grammatical Evolution to Construct Ensemble Models
- 1 Introduction
- 2 Methodology
- 2.1 Structured Grammatical Evolution
- 2.2 Random Structured Grammatical Evolution for Symbolic Regression Problems
- 3 Experimental Setup
- 3.1 Study Problems
- 3.2 Configuration of the Algorithms
- 4 Results
- 5 Conclusions
- References
- EvoCC: An Open-Source Classification-Based Nature-Inspired Optimization Clustering Framework in Python
- 1 Introduction
- 2 Related Works
- 3 Methodology
- 4 Framework Overview
- 4.1 Parameters
- 4.2 Datasets
- 4.3 Clustering with EvoCluster
- 4.4 Classification
- 4.5 Evaluation Measures
- 4.6 Results Management
- 5 Experiments and Visualizations
- 6 Conclusion and Future Works
- References
- Evolution of Acoustic Logic Gates in Granular Metamaterials
- 1 Introduction
- 2 Problem Statement
- 3 Simulation Setup
- 3.1 2D Granular Simulator
- 3.2 Optimization Method
- 4 Results and Discussion
- 4.1 Evolution of an Acoustic Band Gap
- 4.2 Evolving an AND Gate
- 4.3 Evolving an XOR Gate
- 5 Conclusion and Future Work
- References
- Public-Private Partnership: Evolutionary Algorithms as a Solution to Information Asymmetry
- 1 Introduction
- 2 The Problem
- 3 Proposed Approach
- 3.1 The Model
- 3.2 Data
- 3.3 Adversarial Optimization
- 3.4 Operator (EA1)
- 3.5 Public Administration (EA2)
- 4 Experimental Evaluation
(source: Nielsen Book Data)
- EvoApplications (Conference) (24th : 2021 : Online)
- Cham : Springer, 2021.
- Description
- Book — 1 online resource (836 pages) Digital: text file.PDF.
- Summary
-
- On Restricting Real-Valued Genotypes in Evolutionary Algorithms.- Towards Explainable Exploratory Landscape Analysis: Extreme Feature Selection for Classifying BBOB Functions.- Co-Optimising Robot Morphology and Controller in a Simulated Open-ended Environment.- Multi-objective workforce allocation in construction projects.- Generating Duplex Routes for Robust Bus Transport Network by Improved Multi-objective Evolutionary Algorithm based on Decomposition.- Combining Multi-objective Evolutionary Algorithms with deep generative models towards focused molecular design.- A Multi-Objective Evolutionary Algorithm Approach for Optimizing Part Quality Aware Assembly Job Shop Scheduling Problems.- Evolutionary Grain-Mixing to Improve Profitability in Farming Winter Wheat.- Automatic Modular Design of Behavior Trees for Robot Swarms with Communication Capabilites.- Salp Swarm Optimization Search Based Feature Selection for Enhanced Phishing Websites Detection.- Real Time Optimisation of Traffic Signals to Prioritise Public Transport.- Adaptive Covariance Pattern Search.- Evaluating the Success-History based Adaptive Differential Evolution in the Protein Structure Prediction problem.- Beyond Body Shape and Brain: Evolving the Sensory Apparatus of Voxel-based Soft Robots.- Desirable Objective Ranges in Preference-based Evolutionary Multiobjective Optimization.- Improving Search Efficiency and Diversity of Solutions in Multiobjective Binary Optimization by Using Metaheuristics plus Integer Linear Programming.- Automated, Explainable Rule Extraction from MAP-Elites archives.- EDM-DRL: Toward Stable Reinforcement Learning through Ensembled Directed Mutation.- Continuous Ant-Based Neural Topology.- Playing with Dynamic Systems - Battling Swarms in Virtual Reality.- EvoCraft: A New Challenge for Open-Endedness.- A Profile-Based 'GrEvolutionary' Hearthstone Agent.- Modelling Asthma Patients' Responsiveness to Treatment Using Feature Selection and Evolutionary Computation.- Bayesian Networks for Mood Prediction Using Unobtrusive Ecological Momentary Assessments.- A Multi-Objective Multi-Type Facility Location Problem for the Delivery of Personalised Medicine.- RDE-OP: A Region-Based Differential Evolution Algorithm Incorporation Opposition-Based Learning for Optimising the Learning Process of Multi-Layer Neural Networks.- Estimation of Grain-level Residual Stresses in a Quenched Cylindrical Sample of Aluminum Alloy AA5083 using Genetic Programming.- EDA-based optimization of blow-off valve positions for centrifugal compressor systems.- 3D-2D Registration using X-ray Simulation and CMA-ES.- Lateralized Approach for Robustness AgainstAttacks in Emotion Categorization from Images.- Improved Crowding Distance in Multi-objective Optimization for Feature Selection in Classification.- Deep Optimisation: Multi-Scale Evolution by Inducing and Searching in Deep Representations.- Evolutionary Planning in Latent Space.- Utilizing the Untapped Potential of Indirect Encoding for Neural Networks with Meta Learning.- Effective Universal Unrestricted Adversarial Attacks using a MOE Approach.- Improving Distributed Neuroevolution Using Island Extinction and Repopulation.- An Experimental Study of Weight Initialization and Lamarckian Inheritance on Neuroevolution.- Towards Feature-Based Performance Regression Using Trajectory Data.- Demonstrating the Evolution of GANs through t-SNE.- Optimising diversity in classifier ensembles of classification trees.- WILDA: Wide Learning of Diverse Architectures for Classification of Large Datasets.- Evolving Character-Level DenseNet Architectures using Genetic Programming.- Transfer Learning for Automated Test Case Prioritization using XCSF.- On the Effects of Absumption for XCS with Continuous-Valued Inputs.- A NEAT Visualisation of Neuroevolution Trajectories.- Evaluating Models with Dynamic Sampling Holdout.- Event-driven multi-algorithm optimization: mixing Swarm and Evolutionary strategies.- TensorGP - Genetic Programming Engine in TensorFlow.- A novel evolutionary approach for IoT-based water contaminant detection.- Evolutionary Algorithms for Roughness Coefficient Estimation in River Flow Analyses.- EA-based ASV Trajectory Planner for Pollution Detection in Lentic Waters.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- EvoApplications (Conference) (23rd : 2020 : Seville, Spain)
- Cham : Springer, 2020.
- Description
- Book — 1 online resource (xvii, 704 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- Applications of Evolutionary Computation.- A Local Search for Numerical Optimisation based on Covariance Matrix Diagonalisation.- EvoCluster: An Open-Source Nature-Inspired Optimization Clustering Framework in Python.- Optimizing the Hyperparameters of a Mixed Integer Linear Programming Solver to Speed Up Electric Vehicle Charging Control.- Automatic rule extraction from access rules using Genetic Programming.- Search Trajectory Networks of Population-based Algorithms in Continuous Spaces.- Evolving-controllers versus learning-controllers for morphologically evolvable robots.- Simulation-driven multi-objective evolution for traffic light optimization.- Automatic Generation of Adversarial Metamorphic Malware Using MAP-Elites.- EvoDynamic: a framework for the evolution of generally represented dynamical systems and its application to criticality.- A Decomposition-Based Evolutionary Algorithm with Adaptive Weight Vectors for Multi- and Many-objective Optimization.- Differential Evolution Multi-Objective for Tertiary Protein Structure Prediction.- Particle Swarm Optimization: A Wrapper-based Feature Selection Method for Ransomware Detection and Classification.- A method for estimating the computational complexity of multimodal functions.- Locating Odour Sources with Geometric Syntactic Genetic Programming.- Designing cable-stayed bridges with Genetic Algorithms.- A fast, scalable meta-heuristic for network slicing under traffic uncertainty.- What is Your MOVE: Modeling Adversarial Network Environments.- Using evolution to design modular robots: An empirical approach to select module designs.- Iterated Granular Neighborhood Algorithm for the Taxi Sharing Problem.- Applications of Bio-inspired techniques on Social Networks.- Multiobjective Optimization of a Targeted Vaccination Scheme in the Presence of Non-diagnosed Cases.- Community Detection in Attributed Graphs with Differential Evolution.- Applications of Deep Bioinspired Algorithms.- Fake news detection using time series and user features classification.- Social Learning vs Self-teaching in a Multi-agent Neural Network System.- Evolving Instinctive Behaviour in Resource-Constrained Autonomous Agents Using Grammatical Evolution.- An Adversarial Optimization Approach for the Development of Robust Controllers.- Soft Computing Applied to Games.- Efficient Heuristic Policy Optimisation for a Challenging Strategic Card Game.- Finding Behavioural Patterns Among League of Legends Players Through Hidden Markov Models.- Learning the Designer's Preferences to Drive Evolution.- Testing hybrid computational intelligence algorithms for general game playing.- Evolutionary Computation in Digital Healthcare and Personalized Medicine.- Accelerated Design of HIFU Treatment Plans Using Island-based Evolutionary Strategy.- Using Genetic Algorithms for the prediction of cognitive impairments.- Short and Medium Term Blood Glucose Prediction using Multi-Objective Grammatical Evolution.- Evolutionary Machine Learning.- A Greedy Iterative Layered Framework for Training Feed Forward Neural Networks.- Evolution of Scikit-Learn Pipelines with Dynamic Structured Grammatical Evolution.- An Empirical Exploration of Deep Recurrent Connections Using Neuro-Evolution.- Using Skill Rating as Fitness on the Evolution of GANs.- A Local Search with a Surrogate Assisted Option for Instance Reduction.- Evolutionary Latent Space Exploration of Generative Adversarial Networks.- Neuro-Evolutionary Transfer Learning through Structural Adaptation.- Ant-based Neural Topology Search (ANTS) for Optimizing Recurrent Networks.- Parallel and Distributed Systems.- A MIMD interpreter for Genetic Programming.- Security Risk Optimization for Multi-Cloud Applications.- Using evolutionary algorithms for server hardening via the moving target defense technique.- An Event-based Architecture for Cross-Breed Multi-population Bio-inspired Optimization Algorithms.
- (source: Nielsen Book Data)
(source: Nielsen Book Data)
- EvoBIO (Conference) (9th : 2011 : Turin, Italy)
- Berlin ; New York : Springer, 2011.
- Description
- Book — 1 online resource (xiv, 261 pages) : illustrations Digital: text file; PDF.
- Summary
-
This book constitutes the refereed proceedings of the 11th European Conference on Evolutionary Computation in Combinatorial Optimization, EvoCOP 2011, held in Torino, Italy, in April 2011. The 22 revised full papers presented were carefully reviewed and selected from 42 submissions. The papers present the latest research and discuss current developments and applications in metaheuristics - a paradigm to effectively solve difficult combinatorial optimization problems appearing in various industrial, economical, and scientific domains. Prominent examples of metaheuristics are evolutionary algorithms, simulated annealing, tabu search, scatter search, memetic algorithms, variable neighborhood search, iterated local search, greedy randomized adaptive search procedures, estimation of distribution algorithms, and ant colony optimization.
(source: Nielsen Book Data)
- EMO (Conference) (6th : 2011 : Ouro Preto, Minas Gerais, Brazil)
- Berlin ; New York : Springer, ©2011.
- Description
- Book — 1 online resource (xv, 620 pages) : illustrations Digital: text file.PDF.
- Summary
-
- Machine generated contents note:
- Automated Innovization for Simultaneous Discovery of Multiple Rules in Bi-objective Problems
- Taxonomy of Online Stopping Criteria for Multi-Objective Evolutionary Algorithms / Sunith Bandaru / Kalyanmoy Deb
- Not All Parents Are Equal for MO-CMA-ES / Tobias Wagner / Heike Trautmann / Luis Marti
- On Sequential Online Archiving of Objective Vectors / Ilya Loshchilov / Marc Schoenauer / Michèle Sebag
- On a Stochastic Differential Equation Approach for Multiobjective Optimization up to Pareto-Criticality / Manuel López-Ibáñez / Joshua Knowles / Marco Laumanns
- Pareto Cone &Dominance: Improving Convergence and Diversity in Multiobjective Evolutionary Algorithms / Ricardo H.C. Takahashi / Eduardo G. Carrano / Elizabeth F. Wanner
- Variable Preference Modeling Using Multi-Objective Evolutionary Algorithms / Lucas S. Batista / Felipe Campelo / Frederico G. Guimarães /
- Note continued:
- Framework for Many-Objective Test Problems with Both Simple and Complicated Pareto-Set Shapes / Joseph M. Pasia / Hernán Aguirre / Kiyoshi Tanaka
- Preference Based Interactive Evolutionary Algorithm for Multi-objective Optimization: PIE / Dhish Kumar Saxena / Qingfu Zhang / João A. Duro / Ashutosh Tiwari
- Preference Ranking Schemes in Multi-Objective Evolutionary Algorithms / Karthik Sindhya / Ana Belen Ruiz / Kaisa Miettinen
- Interactive Multiobjective Mixed-Integer Optimization Using Dominance-Based Rough Set Approach / Marlon Alexander Braun / Pradyumn Kumar Shukla / Hartmut Schmeck
- Very Large-Scale Neighborhood Search for Solving Multiobjective Combinatorial Optimization Problems / Salvatore Greco / Benedetto Matainzzo / Roman Slowinski
- Bilevel Multi-objective Optimization Problem Solving Using Progressively Interactive EMO / Thibaut Lust / Jacques Teghem / Daniel Tuyttens
- Multi-objective Phylogenetic Algorithm: Solving Multi-objective Decomposable Deceptive Problems / Ankur Sinha
- Multi-objective Optimization with Joint Probabilistic Modeling of Objectives and Variables / Jean Paulo Martins / Antonio Helson Mineiro Soares / Danilo Vasconcellos Vargas / Alexandre Cláudio Botazzo Delbem
- Bi-objective Based Hybrid Evolutionary-Classical Algorithm for Handling Equality Constraints / Hossein Karshenas / Roberto Santana / Concha Bielza / Pedro Larrañaga
- New Memory Based Variable-Length Encoding Genetic Algorithm for Multiobjective Optimization / Rituparna Datta / Kalyanmoy Deb
- Concentration-Based Artificial Immune Network for Multi-objective Optimization / Eduardo G. Carrano / Livia A. Moreira / Ricardo H.C. Takahashi
- Bi-objective Portfolio Optimization Using a Customized Hybrid NSGA-II Procedure / Guilherme Palermo Coelho / Fernando J. Von Zuben
- Note continued:
- Aesthetic Design Using Multi-Objective Evolutionary Algorithms / Rahul Tewari / Rajat Tewari / Ralph E. Steuer / Kalyanmoy Deb
- Introducing Reference Point Using g-Dominance in Optimum Design Consideripg Uncertainties: An Application in Structural Engineering / Ferrie van Hattum / Dirk Loyens / António Gaspar-Cunha
- Multiobjective Dynamic Optimization of Vaccination Campaigns Using Convex Quadratic Approximation Local Search / José M. Emperador / Máximo Méndez / Gabriel Winter / David Greiner / Blas Galván
- Adaptive Technique to Solve Multi-objective Feeder Reconfiguration Problem in Real Time Context / Ricardo H.C. Takahashi / Rodrigo T.N. Cardoso / André R. da Cruz
- Variable Neighborhood Multiobjective Genetic Algorithm for the Optimization of Routes on IP Networks / Joao Antonio de Vasconcelos / Walmir Matos Caminhas / Carlos Henrique N. de Resende Barbosa
- Real-Time Estimation of Optical Flow Based on Optimized Haar Wavelet Features / Renata E. Onety / Ricardo H.C. Takahashi / Oriane M. Neto / Gladston J.P. Moreira
- Multi-objective Genetic Algorithm Evaluation in Feature Selection / Jan Salmen / Lukas Caup / Christian Igel
- Cultural Algorithm Applied in a Bi-Objective Uncapacitated Facility Location Problem / Ana Carolina Lorena / Huei Diana Lee / Newton Spolaôr
- Bi-objective Iterated Local Search Heuristic with Path-Relinking for the p-Median Problem / Ricardo Soto / Claudio Cubillos / Guillermo Cabrera / Boris Fernández / Daniela Diaz / José Miguel Rubio
- Framework for Locating Logistic Facilities with Multi-Criteria Decision Analysis / Wellington G. Ribeiro / André G. Santos / Paula M. dos Santos / José E.C. Arroyo
- Lorenz versus Pareto Dominance in a Single Machine Scheduling Problem with Rejection / Gilberto Montibeller / Hugo Yoshizaki
- Note continued:
- GRACE: A Generational Randomized ACO for the Multi-objective Shortest Path Problem / Lionel Amodeo / Farouk Yalaoui / Atefeh Moghaddam
- Modeling Decision-Maker Preferences through Utility Function Level Sets / Marco C. Goldbaiq / Luciana S. Buriol / Leonardo C.T. Bezerra / Elizabeth F.G. Goldbarg
- MCDM Model for Urban Water Conservation Strategies Adapting Simos Procedure for Evaluating Alternatives Intra-criteria / Luciana R. Pedro / Ricardo H.C. Takahashi
- Multicriteria Decision Model for a Combined Burn-In and Replacement Policy / Marcele Elisa Fontana / Danielle Costa Morais / Adiel Teixeira de Almeida
- Applying a Multicriteria Decision Model So as to Analyse the Consequences of Failures Observed in RCM Methodology / Cristiano Alexandre Virginio Cavalcante
- Supplier Selection Based on the PROMETHEE VI Multicriteria Method / Marcelo Hazin Alencar / Adiel Teixeira Almeida.
(source: Nielsen Book Data)
50. EVOLVE -- A bridge between probability, set oriented numerics, and evolutionary computation V [2014]
- EVOLVE (International conference) (2014 : Beijing, China)
- Cham : Springer, 2014.
- Description
- Book — 1 online resource (xiv, 336 pages) : illustrations (some color) Digital: text file.PDF.
- Summary
-
- Set Oriented Numerics
- Computational Game Theory
- Machine Learning Applied to Networks
- Complex Networks and Landscape Analysis
- Local Search and Optimization
- Genetic Programming
- Evolutionary Multiobjective Optimization
- Practical Aspects of Evolutionary Algorithms.
Articles+
Journal articles, e-books, & other e-resources
Guides
Course- and topic-based guides to collections, tools, and services.