Tuning evolutionary search for closed-loop optimization
暂无分享,去创建一个
[1] Ingo Rechenberg,et al. Case studies in evolutionary experimentation and computation , 2000 .
[2] David Meignan,et al. Coalition-based metaheuristic: a self-adaptive metaheuristic using reinforcement learning and mimetism , 2010, J. Heuristics.
[3] Zbigniew Michalewicz,et al. Evolutionary optimization of constrained problems , 1994 .
[4] Inman Harvey,et al. Unconstrained Evolution and Hard Consequences , 1995, Towards Evolvable Hardware.
[5] F. Glover. HEURISTICS FOR INTEGER PROGRAMMING USING SURROGATE CONSTRAINTS , 1977 .
[6] Dipl. Ing. Karl Heinz Kellermayer. NUMERISCHE OPTIMIERUNG VON COMPUTER-MODELLEN MITTELS DER EVOLUTIONSSTRATEGIE Hans-Paul Schwefel Birkhäuser, Basel and Stuttgart, 1977 370 pages Hardback SF/48 ISBN 3-7643-0876-1 , 1977 .
[7] Melanie Mitchell,et al. Relative Building-Block Fitness and the Building Block Hypothesis , 1992, FOGA.
[8] Stuart Kauffman,et al. Adaptive walks with noisy fitness measurements , 1995, Molecular Diversity.
[9] Gerry Dozier,et al. Adapting Particle Swarm Optimizationto Dynamic Environments , 2001 .
[10] Kalyanmoy Deb,et al. Reliability-Based Optimization Using Evolutionary Algorithms , 2009, IEEE Transactions on Evolutionary Computation.
[11] G. Matheron. Principles of geostatistics , 1963 .
[12] Christopher H. Bryant,et al. Functional genomic hypothesis generation and experimentation by a robot scientist , 2004, Nature.
[13] James C. Bean,et al. Genetic Algorithms and Random Keys for Sequencing and Optimization , 1994, INFORMS J. Comput..
[14] Douglas C. Montgomery,et al. Response Surface Methodology: Process and Product Optimization Using Designed Experiments , 1995 .
[15] Peter J. Angeline,et al. Tracking Extrema in Dynamic Environments , 1997, Evolutionary Programming.
[16] Joshua D. Knowles,et al. Closed-loop, multiobjective optimization of two-dimensional gas chromatography/mass spectrometry for serum metabolomics. , 2007, Analytical chemistry.
[17] J. Shapiro. Statistical mechanics theory of genetic algorithms , 2001 .
[18] Gregory J. Barlow,et al. Article in Press Robotics and Autonomous Systems ( ) – Robotics and Autonomous Systems Fitness Functions in Evolutionary Robotics: a Survey and Analysis , 2022 .
[19] J. Girkin,et al. Practical implementation of adaptive optics in multiphoton microscopy. , 2003, Optics express.
[20] Thomas Philip Runarsson,et al. Constrained Evolutionary Optimization by Approximate Ranking and Surrogate Models , 2004, PPSN.
[21] Xin Yao,et al. Drift analysis and average time complexity of evolutionary algorithms , 2001, Artif. Intell..
[22] David W. Corne,et al. Predicting Stochastic Search Algorithm Performance using Landscape State Machines , 2006, 2006 IEEE International Conference on Evolutionary Computation.
[23] Hans J. Bremermann,et al. Optimization Through Evolution and Recombination , 2013 .
[24] Martin J. Oates,et al. Landscape State Machines: Tools for Evolutionary Algorithm Performance Analyses and Landscape/Algorithm Mapping , 2003, EvoWorkshops.
[25] D. Cliff,et al. NKalpha: Non-uniform epistatic interactions in an extended NK model , 2008 .
[26] Zbigniew Michalewicz,et al. Evolutionary Computation 1 , 2018 .
[27] Kalyanmoy Deb,et al. Genetic Algorithms, Noise, and the Sizing of Populations , 1992, Complex Syst..
[28] Allan Borodin,et al. Online computation and competitive analysis , 1998 .
[29] Pietro Simone Oliveto,et al. Simplified Drift Analysis for Proving Lower Bounds in Evolutionary Computation , 2008, Algorithmica.
[30] Thomas J. Santner,et al. Design and analysis of computer experiments , 1998 .
[31] Thomas Bäck,et al. Evolution Strategies on Noisy Functions: How to Improve Convergence Properties , 1994, PPSN.
[32] Peter T. Ward,et al. Lean manufacturing: context, practice bundles, and performance , 2003 .
[33] Yaochu Jin,et al. Adaptive encoding for aerodynamic shape optimization using evolution strategies , 2001, Proceedings of the 2001 Congress on Evolutionary Computation (IEEE Cat. No.01TH8546).
[34] C. Wandrey,et al. Use of a genetic algorithm in the development of a synthetic growth medium for Arthrobacter simplex with high hydrocortisone Δ1-dehydrogenase activity , 1995 .
[35] Adrian Thompson. Evolving inherently fault-tolerant systems , 1997 .
[36] Dirk V. Arnold,et al. Evolution strategies with adaptively rescaled mutation vectors , 2005, 2005 IEEE Congress on Evolutionary Computation.
[37] Inman Harvey,et al. Optimal Mutation Rates and Selection Pressure in Genetic Algorithms , 2000, GECCO.
[38] H.-G. Beyer,et al. Mutate large, but inherit small ! On the analysis of rescaled mutations in (1, λ)-ES with noisy fitness data , 1998 .
[39] H. Beyer. Evolutionary algorithms in noisy environments : theoretical issues and guidelines for practice , 2000 .
[40] Michèle Sebag,et al. Change Point Detection and Meta-Bandits for Online Learning in Dynamic Environments , 2007 .
[41] Heinz Mühlenbein,et al. The parallel genetic algorithm as function optimizer , 1991, Parallel Comput..
[42] Heinz Mühlenbein,et al. How Genetic Algorithms Really Work: Mutation and Hillclimbing , 1992, PPSN.
[43] Christopher M. Bishop,et al. Neural networks for pattern recognition , 1995 .
[44] David Burns,et al. Active transverse mode control and optimization of an all-solid-state laser using an intracavity adaptive-optic mirror. , 2002, Optics express.
[45] Mark D. Pendrith. On Reinforcement Learning of Control Actions in Noisy and Non-Markovian Domains , 1994 .
[46] Narayan Raman,et al. The job shop tardiness problem: A decomposition approach , 1993 .
[47] David Gamarnik,et al. Random MAX SAT, random MAX CUT, and their phase transitions , 2003 .
[48] Michael M. Skolnick,et al. Using Genetic Algorithms in Engineering Design Optimization with Non-Linear Constraints , 1993, ICGA.
[49] H. Mühlenbein,et al. From Recombination of Genes to the Estimation of Distributions I. Binary Parameters , 1996, PPSN.
[50] L. Darrell Whitley,et al. Searching in the Presence of Noise , 1996, PPSN.
[51] T. Baumert,et al. Femtosecond pulse shaping by an evolutionary algorithm with feedback , 1997 .
[52] Manfred Baerns,et al. An evolutionary approach in the combinatorial selection and optimization of catalytic materials , 2000 .
[53] Gunar E. Liepins,et al. Punctuated Equilibria in Genetic Search , 1991, Complex Syst..
[54] George C. Runger,et al. Using Experimental Design to Find Effective Parameter Settings for Heuristics , 2001, J. Heuristics.
[55] Arianna Menciassi,et al. Wireless capsule endoscopy: from diagnostic devices to multipurpose robotic systems , 2007, Biomedical microdevices.
[56] Phil Husbands,et al. Evolutionary robotics , 2014, Evolutionary Intelligence.
[57] O. Albert,et al. Adaptive correction of depth‐induced aberrations in multiphoton scanning microscopy using a deformable mirror , 2002, Journal of microscopy.
[58] Robert E. Tarjan,et al. Amortized efficiency of list update and paging rules , 1985, CACM.
[59] Zbigniew Michalewicz,et al. Parameter control in evolutionary algorithms , 1999, IEEE Trans. Evol. Comput..
[60] Kenneth Alan De Jong,et al. An analysis of the behavior of a class of genetic adaptive systems. , 1975 .
[61] G. Cowles. Studies of Mascarene Island birds: The fossil record , 1987 .
[62] O. M. Shir. Niching in derandomized evolution strategies and its applications in quantum control , 2008 .
[63] David E. Goldberg,et al. Genetic Algorithms in Search Optimization and Machine Learning , 1988 .
[64] Abdollah Homaifar,et al. Constrained Optimization Via Genetic Algorithms , 1994, Simul..
[65] Francesco Mondada,et al. Evolution of neural control structures: some experiments on mobile robots , 1995, Robotics Auton. Syst..
[66] Kenneth A. De Jong,et al. Using Genetic Algorithms to Solve NP-Complete Problems , 1989, ICGA.
[67] Jordan B. Pollack,et al. Three Generations of Automatically Designed Robots , 2001, Artificial Life.
[68] Christoph F. Eick,et al. Supporting Polyploidy in Genetic Algorithms Using Dominance Vectors , 1997, Evolutionary Programming.
[69] Kok Cheong Wong,et al. A New Diploid Scheme and Dominance Change Mechanism for Non-Stationary Function Optimization , 1995, ICGA.
[70] David E. Block,et al. Neural-Network-Assisted Optimization of Wine Blending Based on Sensory Analysis , 2001, American Journal of Enology and Viticulture.
[71] P. H. Bucksbaum,et al. Coherent control using adaptive learning algorithms , 2001 .
[72] Keigo Watanabe,et al. Evolutionary Optimization of Constrained Problems , 2004 .
[73] Jürgen Schmidhuber,et al. Curious model-building control systems , 1991, [Proceedings] 1991 IEEE International Joint Conference on Neural Networks.
[74] GUNAR E. LIEPINS,et al. Representational issues in genetic optimization , 1990, J. Exp. Theor. Artif. Intell..
[75] Bryant A. Julstrom,et al. What Have You Done for Me Lately? Adapting Operator Probabilities in a Steady-State Genetic Algorithm , 1995, ICGA.
[76] Per Kristian Lehre,et al. Fitness-levels for non-elitist populations , 2011, GECCO '11.
[77] Dave Cliff,et al. Challenges in evolving controllers for physical robots , 1996, Robotics Auton. Syst..
[78] Zbigniew Michalewicz,et al. Evolutionary Algorithms for Constrained Parameter Optimization Problems , 1996, Evolutionary Computation.
[79] Joshua D. Knowles. Closed-loop evolutionary multiobjective optimization , 2009, IEEE Computational Intelligence Magazine.
[80] Justin Schonfeld,et al. A study of mutational robustness as the product of evolutionary computation , 2007, GECCO '07.
[81] Zbigniew Michalewicz,et al. Handbook of Evolutionary Computation , 1997 .
[82] F. Arnold. Design by Directed Evolution , 1998 .
[83] Zata M Vickers,et al. Optimization of Cheddar Cheese Taste in Model Cheese Systems , 2006 .
[84] D. A. Preece,et al. R. A. Fisher and Experimental Design: A Review , 1990 .
[85] Franz Rothlauf,et al. Representations for genetic and evolutionary algorithms , 2002, Studies in Fuzziness and Soft Computing.
[86] Terry Jones,et al. Fitness Distance Correlation as a Measure of Problem Difficulty for Genetic Algorithms , 1995, ICGA.
[87] Hod Lipson,et al. Robotics: Self-reproducing machines , 2005, Nature.
[88] P. R. Kulkarni,et al. A study of inulinase production in Aspergillus niger using fractional factorial design , 1995 .
[89] Peter Stagge,et al. Averaging Efficiently in the Presence of Noise , 1998, PPSN.
[90] M. D. Kidwell,et al. Genetic allgorithm for dynamic task scheduling , 1994, Proceeding of 13th IEEE Annual International Phoenix Conference on Computers and Communications.
[91] Martijn C. Schut,et al. Reinforcement Learning for Online Control of Evolutionary Algorithms , 2006, ESOA.
[92] Richard M. Everson,et al. Controlling Genetic Algorithms With Reinforcement Learning , 2002, GECCO.
[93] Donald R. Jones,et al. A Taxonomy of Global Optimization Methods Based on Response Surfaces , 2001, J. Glob. Optim..
[94] Wei Zhang,et al. Reinforcement learning for job shop scheduling , 1996 .
[95] Zbigniew Michalewicz,et al. Evolutionary Algorithms, Homomorphous Mappings, and Constrained Parameter Optimization , 1999, Evolutionary Computation.
[96] David E. Goldberg,et al. From Twomax To The Ising Model: Easy And Hard Symmetrical Problems , 2002, GECCO.
[97] Peter Auer,et al. Finite-time Analysis of the Multiarmed Bandit Problem , 2002, Machine Learning.
[98] Alexander Nareyek,et al. Choosing search heuristics by non-stationary reinforcement learning , 2004 .
[99] L. D. Whitley,et al. The No Free Lunch and problem description length , 2001 .
[100] R. Schloegl. Combinatorial Chemistry in Heterogeneous Catalysis: A New Scientific Approach or “the King′s New Clothes”? , 1998 .
[101] Edward P. Jaeger,et al. Application of Genetic Algorithms to Combinatorial Synthesis: A Computational Approach to Lead Identification and Lead Optimization†,∇ , 1996 .
[102] Sarra Montserrat,et al. Application of factorial design to the optimization of medium composition in batch cultures of Streptomyces lividans TK21 producing a hybrid antibiotic , 1993, Biotechnology Letters.
[103] R. Bellman. Dynamic programming. , 1957, Science.
[104] Peter A. N. Bosman,et al. Learning and anticipation in online dynamic optimization with evolutionary algorithms: the stochastic case , 2007, GECCO '07.
[105] Lee Altenberg,et al. Fitness Distance Correlation Analysis: An Instructive Counterexample , 1997, ICGA.
[106] Edwin R. Hancock,et al. Empirical Modelling of Genetic Algorithms , 2001, Evolutionary Computation.
[107] David E. Goldberg,et al. Genetic Algorithms, Clustering, and the Breaking of Symmetry , 2000, PPSN.
[108] H N Psaraftis,et al. DYNAMIC VEHICLE ROUTING PROBLEMS. VEHICLE ROUTING: METHODS AND STUDIES. STUDIES IN MANAGEMENT SCIENCE AND SYSTEMS - VOLUME 16 , 1988 .
[109] Dongxiao Zhang,et al. Efficient Ensemble-Based Closed-Loop Production Optimization , 2009 .
[110] Xin Yao,et al. Stochastic ranking for constrained evolutionary optimization , 2000, IEEE Trans. Evol. Comput..
[111] Jacob D. Feala,et al. Search Algorithms as a Framework for the Optimization of Drug Combinations , 2008, PLoS Comput. Biol..
[112] Lawrence Davis,et al. Using a genetic algorithm to optimize problems with feasibility constraints , 1994, Proceedings of the First IEEE Conference on Evolutionary Computation. IEEE World Congress on Computational Intelligence.
[113] José Carlos Príncipe,et al. A Markov Chain Framework for the Simple Genetic Algorithm , 1993, Evolutionary Computation.
[114] Benjamin W. Wah,et al. Scheduling of Genetic Algorithms in a Noisy Environment , 1994, Evolutionary Computation.
[115] S. Bullock. Will selection for mutational robustness significantly retard evolutionary innovation on neutral networks , 2002 .
[116] Vassilios Petridis,et al. Varying Fitness Functions in Genetic Algorithms: Studying the Rate of Increase of the Dynamic Penalty Terms , 1998, PPSN.
[117] David E. Goldberg,et al. Probability Matching, the Magnitude of Reinforcement, and Classifier System Bidding , 1990, Machine Learning.
[118] Michèle Sebag,et al. Adaptive operator selection with dynamic multi-armed bandits , 2008, GECCO '08.
[119] José M Monteagudo,et al. Optimization of the fermentation of whey by Lactobacillus casei , 1993 .
[120] Zbigniew Michalewicz,et al. Searching for optima in non-stationary environments , 1999, Proceedings of the 1999 Congress on Evolutionary Computation-CEC99 (Cat. No. 99TH8406).
[121] Mark Wineberg,et al. The Shifting Balance Genetic Algorithm: improving the GA in a dynamic environment , 1999 .
[122] Jürgen Branke,et al. A Multi-population Approach to Dynamic Optimization Problems , 2000 .
[123] Graham Kendall,et al. A Hyperheuristic Approach to Scheduling a Sales Summit , 2000, PATAT.
[124] T. Back,et al. Thresholding-a selection operator for noisy ES , 2001, Proceedings of the 2001 Congress on Evolutionary Computation (IEEE Cat. No.01TH8546).
[125] Ofer M. Shir,et al. Evolutionary multi-objective quantum control experiments with the covariance matrix adaptation , 2009, GECCO '09.
[126] H. Schwefel,et al. Evolutionary approaches to solve three challenging engineering tasks , 2000 .
[127] Nikolaus Hansen,et al. Completely Derandomized Self-Adaptation in Evolution Strategies , 2001, Evolutionary Computation.
[128] Pietro Simone Oliveto,et al. Design and Management of Complex Technical Processes and Systems by Means of Computational Intelligence Methods Theoretical Analysis of Diversity Mechanisms for Global Exploration Theoretical Analysis of Diversity Mechanisms for Global Exploration , 2022 .
[129] Genichi Taguchi,et al. Introduction to quality engineering.... , 2014 .
[130] Ofer M. Shir,et al. Accelerated optimization and automated discovery with covariance matrix adaptation for experimental quantum control , 2009 .
[131] Daniel A. Ashlock,et al. Comparison of Robustness of Solutions Located by Evolutionary Computation and other Search Algorithms , .
[132] David H. Wolpert,et al. No free lunch theorems for optimization , 1997, IEEE Trans. Evol. Comput..
[133] L. Darrell Whitley,et al. An Executable Model of a Simple Genetic Algorithm , 1992, FOGA.
[134] H. Adeli,et al. Augmented Lagrangian genetic algorithm for structural optimization , 1994 .
[135] Carlos A. Coello Coello,et al. THEORETICAL AND NUMERICAL CONSTRAINT-HANDLING TECHNIQUES USED WITH EVOLUTIONARY ALGORITHMS: A SURVEY OF THE STATE OF THE ART , 2002 .
[136] Joshua D. Knowles,et al. Closed-loop, multiobjective optimization of analytical instrumentation: gas chromatography/time-of-flight mass spectrometry of the metabolomes of human serum and of yeast fermentations. , 2005, Analytical chemistry.
[137] Sancho Salcedo-Sanz,et al. A survey of repair methods used as constraint handling techniques in evolutionary algorithms , 2009, Comput. Sci. Rev..
[138] J. Fenn,et al. A Conversation with , 2009 .
[139] Bernhard Sendhoff,et al. A framework for evolutionary optimization with approximate fitness functions , 2002, IEEE Trans. Evol. Comput..
[140] Marc Schoenauer,et al. Constrained GA Optimization , 1993, ICGA.
[141] Leslie Pack Kaelbling,et al. All learning is Local: Multi-agent Learning in Global Reward Games , 2003, NIPS.
[142] David B. Fogel,et al. An introduction to simulated evolutionary optimization , 1994, IEEE Trans. Neural Networks.
[143] Hod Lipson,et al. The Nature of Life: Classical and Contemporary Perspectives from Philosophy and Science: Automatic design and manufacture of robotic life forms , 2010 .
[144] J. Doob. Stochastic processes , 1953 .
[145] Paul J. Layzell,et al. Analysis of unconventional evolved electronics , 1999, CACM.
[146] Zbigniew Michalewicz,et al. Parameter Setting in Evolutionary Algorithms , 2007, Studies in Computational Intelligence.
[147] Tim Walters,et al. Repair and Brood Selection in the Traveling Salesman Problem , 1998, PPSN.
[148] Yaochu Jin,et al. Approximate models for constraint functions in evolutionary constrained optimization , 2011 .
[149] Kalyan Veeramachaneni,et al. Evolutionary optimization of flavors , 2010, GECCO '10.
[150] Thomas Bäck,et al. Evolutionary computation: comments on the history and current state , 1997, IEEE Trans. Evol. Comput..
[151] Samuel H. Brooks. A Discussion of Random Methods for Seeking Maxima , 1958 .
[152] Ferdi Schüth,et al. Multi-objective optimization in combinatorial chemistry applied to the selective catalytic reduction of NO with C3H6 , 2007 .
[153] P. Koumoutsakos,et al. Multiobjective evolutionary algorithm for the optimization of noisy combustion processes , 2002 .
[154] Bruno Schuermans,et al. Combustion Process Optimization Using Evolutionary Algorithm , 2003 .
[155] Colin R. Reeves,et al. Genetic Algorithms: Principles and Perspectives: A Guide to Ga Theory , 2002 .
[156] George E. P. Box,et al. Evolutionary Operation: a Method for Increasing Industrial Productivity , 1957 .
[157] Heinz Mühlenbein,et al. Optimal Interaction of Mutation and Crossover in the Breeder Genetic Algorithm , 1993, ICGA.
[158] Olivier François,et al. Design of evolutionary algorithms-A statistical perspective , 2001, IEEE Trans. Evol. Comput..
[159] Terence C. Fogarty,et al. A Genetic Algorithm with Variable Range of Local Search for Tracking Changing Environments , 1996, PPSN.
[160] Z. Michalewicz,et al. Genocop III: a co-evolutionary algorithm for numerical optimization problems with nonlinear constraints , 1995, Proceedings of 1995 IEEE International Conference on Evolutionary Computation.
[161] Xin Yao,et al. Dynamic Time-Linkage Problems Revisited , 2009, EvoWorkshops.
[162] R. Vivie-Riedle,et al. Adapting optimal control theory and using learning loops to provide experimentally feasible shaping mask patterns , 2001 .
[163] Weixiong Zhang,et al. Phase Transitions and Backbones of 3-SAT and Maximum 3-SAT , 2001, CP.
[164] Hans-Paul Schwefel,et al. Evolution strategies – A comprehensive introduction , 2002, Natural Computing.
[165] Chris Watkins,et al. Learning from delayed rewards , 1989 .
[166] R. Sun,et al. Closed-loop control of cellular functions using combinatory drugs guided by a stochastic search algorithm , 2008, Proceedings of the National Academy of Sciences.
[167] H. Rabitz,et al. Teaching lasers to control molecules. , 1992, Physical review letters.
[168] Douglas B Kell,et al. Aptamer evolution for array-based diagnostics. , 2009, Analytical biochemistry.
[169] Tapabrata Ray,et al. Performance of infeasibility driven evolutionary algorithm (IDEA) on constrained dynamic single objective optimization problems , 2009, 2009 IEEE Congress on Evolutionary Computation.
[170] D. E. Goldberg,et al. Genetic Algorithms in Search , 1989 .
[171] As Fraser,et al. Simulation of Genetic Systems by Automatic Digital Computers VII. Effects of Reproductive Ra'l'e, and Intensity of Selection, on Genetic Structure , 1960 .
[172] Benjamin Doerr,et al. Runtime analysis of the (1+1) evolutionary algorithm on strings over finite alphabets , 2011, FOGA '11.
[173] Xin Yao,et al. A New Approach for Analyzing Average Time Complexity of Population-Based Evolutionary Algorithms on Unimodal Problems , 2009, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics).
[174] Richard S. Sutton,et al. Reinforcement Learning: An Introduction , 1998, IEEE Trans. Neural Networks.
[175] B. Hajek. Hitting-time and occupation-time bounds implied by drift analysis with applications , 1982, Advances in Applied Probability.
[176] Eric T. Shea-Brown,et al. Toward closed-loop optimization of deep brain stimulation for Parkinson's disease: concepts and lessons from a computational model , 2007, Journal of neural engineering.
[177] P. Coveney,et al. Combinatorial searches of inorganic materials using the ink-jet printer: science, philosophy and technology , 2001 .
[178] Margaret J. Robertson,et al. Design and Analysis of Experiments , 2006, Handbook of statistics.
[179] Andrew W. Moore,et al. The Racing Algorithm: Model Selection for Lazy Learners , 1997, Artificial Intelligence Review.
[180] C. Wandrey,et al. Medium Optimization by Genetic Algorithm for Continuous Production of Formate Dehydrogenase , 1995 .
[181] Samuel H. Brooks. A Comparison of Maximum-Seeking Methods , 1959 .
[182] Colin R. Reeves,et al. Genetic Algorithms and the Design of Experiments , 1999 .
[183] Mahesan Niranjan,et al. On-line Q-learning using connectionist systems , 1994 .
[184] D. Zeidler,et al. Evolutionary algorithms and their application to optimal control studies , 2001 .
[185] H. Robbins. Some aspects of the sequential design of experiments , 1952 .
[186] Morgan B Kaufmann,et al. Finite Markov Chain Analysis of Genetic Algorithms with Niching , 1993 .
[187] Zbigniew Michalewicz,et al. Genetic AlgorithmsNumerical Optimizationand Constraints , 1995, ICGA.
[188] Adam Prügel-Bennett,et al. Symmetry breaking in population-based optimization , 2004, IEEE Transactions on Evolutionary Computation.
[189] Lionel Barnett,et al. Netcrawling-optimal evolutionary search with neutral networks , 2001, Proceedings of the 2001 Congress on Evolutionary Computation (IEEE Cat. No.01TH8546).
[190] John J. Grefenstette,et al. Genetic Algorithms for Changing Environments , 1992, PPSN.
[191] Vicente Ferreira,et al. Optimization of a procedure for the selective isolation of some powerful aroma thiols. Development and validation of a quantitative method for their determination in wine. , 2007, Journal of chromatography. A.
[192] Stefano Nolfi,et al. How to Evolve Autonomous Robots: Different Approaches in Evolutionary Robotics , 1994 .
[193] Berwin A. Turlach,et al. Statistical exploratory analysis of genetic algorithms: the importance of interaction , 2004, Proceedings of the 2004 Congress on Evolutionary Computation (IEEE Cat. No.04TH8753).
[194] Jan Paredis,et al. Co-evolutionary Constraint Satisfaction , 1994, PPSN.
[195] Xin Yao,et al. From an individual to a population: an analysis of the first hitting time of population-based evolutionary algorithms , 2002, IEEE Trans. Evol. Comput..
[196] S.D. Muller,et al. Step size adaptation in evolution strategies using reinforcement learning , 2002, Proceedings of the 2002 Congress on Evolutionary Computation. CEC'02 (Cat. No.02TH8600).
[197] J. S. Hunter,et al. Statistics for Experimenters: Design, Innovation, and Discovery , 2006 .
[198] Kenneth O. Stanley,et al. Abandoning Objectives: Evolution Through the Search for Novelty Alone , 2011, Evolutionary Computation.
[199] Allan Larsen,et al. The Dynamic Vehicle Routing Problem , 2000 .
[200] Takéhiko Nakama,et al. Theoretical analysis of genetic algorithms in noisy environments based on a Markov Model , 2008, GECCO '08.
[201] Raphael T. Haftka,et al. A Segregated Genetic Algorithm for Constrained Structural Optimization , 1995, ICGA.
[202] Ofer M. Shir,et al. Experimental optimization by evolutionary algorithms , 2010, GECCO '10.
[203] Y. Sugimori,et al. Toyota production system and Kanban system Materialization of just-in-time and respect-for-human system , 1977 .
[204] Kent McClymont,et al. Markov chain hyper-heuristic (MCHH): an online selective hyper-heuristic for multi-objective continuous problems , 2011, GECCO '11.
[205] A. Fraser. Simulation of Genetic Systems by Automatic Digital Computers VI. Epistasis , 1960 .
[206] Francesco Mondada,et al. Automatic creation of an autonomous agent: genetic evolution of a neural-network driven robot , 1994 .
[207] Evan J. Hughes,et al. Evolutionary Multi-objective Ranking with Uncertainty and Noise , 2001, EMO.
[208] Rina Dechter,et al. Constraint Processing , 1995, Lecture Notes in Computer Science.
[209] David E. Goldberg,et al. Finite Markov Chain Analysis of Genetic Algorithms , 1987, ICGA.
[210] Christopher R. Houck,et al. On the use of non-stationary penalty functions to solve nonlinear constrained optimization problems with GA's , 1994, Proceedings of the First IEEE Conference on Evolutionary Computation. IEEE World Congress on Computational Intelligence.
[211] Jürgen Branke,et al. Evolutionary optimization in uncertain environments-a survey , 2005, IEEE Transactions on Evolutionary Computation.
[212] Yaochu Jin,et al. A comprehensive survey of fitness approximation in evolutionary computation , 2005, Soft Comput..
[213] D. E. Goldberg,et al. Genetic Algorithms in Search, Optimization & Machine Learning , 1989 .
[214] E. M. Montes. Alternative techniques to handle constraints in evolutionary optimization , 2004 .
[215] A. E. Eiben,et al. Parameter tuning for configuring and analyzing evolutionary algorithms , 2011, Swarm Evol. Comput..
[216] E. Thorndike. On the Organization of Intellect. , 1921 .
[217] Dorothea Heiss-Czedik,et al. An Introduction to Genetic Algorithms. , 1997, Artificial Life.
[218] Joshua D. Knowles,et al. Efficient discovery of anti-inflammatory small molecule combinations using evolutionary computing , 2011, Nature chemical biology.
[219] D. Kell,et al. Explanatory optimization of protein mass spectrometry via genetic search. , 2003, Analytical chemistry.
[220] John J. Grefenstette,et al. Genetic Algorithms for Tracking Changing Environments , 1993, ICGA.
[221] W. Oechel,et al. Automatic design and manufacture of robotic lifeforms , 2022 .
[222] Jürgen Branke,et al. Evolutionary Optimization in Dynamic Environments , 2001, Genetic Algorithms and Evolutionary Computation.
[223] Zbigniew Michalewicz,et al. Evolutionary Computation at the Edge of Feasibility , 1996, PPSN.
[224] Douglas B. Kell,et al. Predictive models for population performance on real biological fitness landscapes , 2010, Bioinform..
[225] Kok Wai Wong,et al. Surrogate-Assisted Evolutionary Optimization Frameworks for High-Fidelity Engineering Design Problems , 2005 .
[226] G. Box,et al. On the Experimental Attainment of Optimum Conditions , 1951 .
[227] Richard M. Friedberg,et al. A Learning Machine: Part I , 1958, IBM J. Res. Dev..
[228] Dirk Thierens,et al. An Adaptive Pursuit Strategy for Allocating Operator Probabilities , 2005, BNAIC.
[229] Bernhard Sendhoff,et al. Trade-Off between Performance and Robustness: An Evolutionary Multiobjective Approach , 2003, EMO.
[230] Heinz Mühlenbein,et al. Evolution in Time and Space - The Parallel Genetic Algorithm , 1990, FOGA.
[231] Emma Byrne. Optimising the flow of experiments to a robot scientist with multi-objective evolutionary algorithms , 2007, GECCO '07.
[232] Terence C. Fogarty,et al. Varying the Probability of Mutation in the Genetic Algorithm , 1989, ICGA.
[233] Silvestre Fialho,et al. Adaptive operator selection for optimization , 2010 .
[234] Thomas J. Santner,et al. The Design and Analysis of Computer Experiments , 2003, Springer Series in Statistics.
[235] Hendrik Richter,et al. Solving Dynamic Constrained Optimization Problems with Asynchronous Change Pattern , 2011, EvoApplications.
[236] Kalyanmoy Deb,et al. Multi-objective optimization using evolutionary algorithms , 2001, Wiley-Interscience series in systems and optimization.
[237] Johann Dréo,et al. Using performance fronts for parameter setting of stochastic metaheuristics , 2009, GECCO '09.
[238] R. J. Gilbert,et al. Efficient Improvement of Silage Additives by Using Genetic Algorithms , 2000, Applied and Environmental Microbiology.
[239] Colin R. Reeves,et al. An Experimental Design Perspective on Genetic Algorithms , 1994, FOGA.
[240] Lawrence Davis,et al. Adapting Operator Probabilities in Genetic Algorithms , 1989, ICGA.
[241] Hendrik Richter. Memory Design for Constrained Dynamic Optimization Problems , 2010, EvoApplications.
[242] Zbigniew Michalewicz,et al. Evolutionary Computation 2 , 2000 .
[243] Bernhard Sendhoff,et al. Autonomous experimental design optimization of a flapping wing , 2011, Genetic Programming and Evolvable Machines.
[244] Andrew W. Moore,et al. Reinforcement Learning: A Survey , 1996, J. Artif. Intell. Res..
[245] Demosthenis Teneketzis,et al. Multi-Armed Bandit Problems , 2008 .
[246] G. E. Liepins,et al. A Genetic Algorithm Approach to Multiple-Fault Diagnosis , 1991 .
[247] Jürgen Branke,et al. Sequential Sampling in Noisy Environments , 2004, PPSN.
[248] Thomas Bartz-Beielstein,et al. Design and Analysis of Optimization Algorithms Using Computational Statistics , 2004 .
[249] Bernhard Sendhoff,et al. Robust Optimization - A Comprehensive Survey , 2007 .
[250] Thomas Bäck,et al. Evolutionary Algorithms in Theory and Practice , 1996 .
[251] Jordan B. Pollack,et al. Embodied evolution: embodying an evolutionary algorithm in a population of robots , 1999, Proceedings of the 1999 Congress on Evolutionary Computation-CEC99 (Cat. No. 99TH8406).
[252] Mark A. Bedau,et al. Automated Discovery of Novel Drug Formulations Using Predictive Iterated High Throughput Experimentation , 2010, PloS one.
[253] Peter A. N. Bosman,et al. Enhanced hospital resource management using anticipatory policies in online dynamic multi-objective optimization , 2010, GECCO '10.
[254] A. E. Eiben,et al. Introduction to Evolutionary Computing , 2003, Natural Computing Series.
[255] Peter A. N. Bosman,et al. Evolutionary Multiobjective Optimization for Dynamic Hospital Resource Management , 2009, EMO.
[256] Yaron Silberberg,et al. Coherent quantum control of two-photon transitions by a femtosecond laser pulse , 1998, Nature.
[257] Ingo Rechenberg,et al. Evolutionsstrategie : Optimierung technischer Systeme nach Prinzipien der biologischen Evolution , 1973 .
[258] Michèle Sebag,et al. Multi-armed Bandit, Dynamic Environments and Meta-Bandits , 2006 .
[259] W. G. Hunter,et al. Evolutionary Operation: A Review , 1966 .
[260] Thomas Stützle,et al. A Racing Algorithm for Configuring Metaheuristics , 2002, GECCO.
[261] Anthony J. Kearsley,et al. Numerical optimization of matrix-assisted laser desorption/ionization time-of-flight mass spectrometry: application to synthetic polymer molecular mass distribution measurement. , 2007, Analytica chimica acta.
[262] Garrison W. Greenwood,et al. Introduction to Evolvable Hardware - A Practical Guide for Designing Self-Adaptive Systems , 2006 .
[263] Yishay Mansour,et al. Policy Gradient Methods for Reinforcement Learning with Function Approximation , 1999, NIPS.
[264] Ali S. Hadi,et al. Finding Groups in Data: An Introduction to Chster Analysis , 1991 .
[265] Adrian Thompson,et al. Hardware evolution - automatic design of electronic circuits in reconfigurable hardware by artificial evolution , 1999, CPHC/BCS distinguished dissertations.
[266] Yaochu Jin,et al. Incremental approximation of nonlinear constraint functions for evolutionary constrained optimization , 2010, IEEE Congress on Evolutionary Computation.
[267] Marc Toussaint,et al. A No-Free-Lunch Theorem for Non-Uniform Distributions of Target Functions , 2004 .
[268] Jing Xiao,et al. Adding memory to the Evolutionary Planner/Navigator , 1997, Proceedings of 1997 IEEE International Conference on Evolutionary Computation (ICEC '97).
[269] Adam Prügel-Bennett,et al. Learning the Large-Scale Structure of the MAX-SAT Landscape Using Populations , 2010, IEEE Transactions on Evolutionary Computation.
[270] John J. Grefenstette,et al. Optimization of Control Parameters for Genetic Algorithms , 1986, IEEE Transactions on Systems, Man, and Cybernetics.
[271] Amanda J Wright,et al. Exploration of the optimisation algorithms used in the implementation of adaptive optics in confocal and multiphoton microscopy , 2005, Microscopy research and technique.
[272] A. E. Eiben,et al. An MOEA-based Method to Tune EA Parameters on Multiple Objective Functions , 2010, IJCCI.
[273] T. Back,et al. On the behavior of evolutionary algorithms in dynamic environments , 1998, 1998 IEEE International Conference on Evolutionary Computation Proceedings. IEEE World Congress on Computational Intelligence (Cat. No.98TH8360).
[274] Peter A. N. Bosman,et al. Learning, anticipation and time-deception in evolutionary online dynamic optimization , 2005, GECCO '05.
[275] Michael D. Vose,et al. Modeling genetic algorithms with Markov chains , 1992, Annals of Mathematics and Artificial Intelligence.
[276] Hans-Georg Beyer,et al. Toward a Theory of Evolution Strategies: Some Asymptotical Results from the (1,+ )-Theory , 1993, Evolutionary Computation.
[277] Xin Yao,et al. Promises and challenges of evolvable hardware , 1996, IEEE Trans. Syst. Man Cybern. Part C.
[278] Jeffrey L. Krichmar,et al. Evolutionary robotics: The biology, intelligence, and technology of self-organizing machines , 2001, Complex..
[279] Thomas Bäck,et al. A Survey of Evolution Strategies , 1991, ICGA.
[280] C. D. Gelatt,et al. Optimization by Simulated Annealing , 1983, Science.
[281] Vladislav V. Yakovlev,et al. Feedback quantum control of molecular electronic population transfer , 1997 .
[282] David E. Goldberg,et al. Genetic Algorithms with Sharing for Multimodalfunction Optimization , 1987, ICGA.
[283] J. A. Lozano,et al. Estimation of Distribution Algorithms: A New Tool for Evolutionary Computation , 2001 .
[284] Hajime Kita,et al. Optimization of Noisy Fitness Functions by Means of Genetic Algorithms Using History of Search , 2000, PPSN.
[285] Robert L. Mason,et al. Taguchi Methods: A Hands-On Approach , 1994 .
[286] Jürgen Branke,et al. Simultaneous tuning of metaheuristic parameters for various computing budgets , 2011, GECCO '11.
[287] Peter A. N. Bosman. Learning and Anticipation in Online Dynamic Optimization , 2007, Evolutionary Computation in Dynamic and Uncertain Environments.
[288] Takeshi Yamada,et al. Conventional Genetic Algorithm for Job Shop Problems , 1991, ICGA.
[289] Wei Zhang,et al. A Reinforcement Learning Approach to job-shop Scheduling , 1995, IJCAI.
[290] Christos D. Tarantilis,et al. Dynamic Vehicle Routing Problems , 2014, Vehicle Routing.
[291] Lawrence. Davis,et al. Handbook Of Genetic Algorithms , 1990 .
[292] Michael D. Vose,et al. Modeling Simple Genetic Algorithms , 1992, FOGA.
[293] A. E. Eiben,et al. A method for parameter calibration and relevance estimation in evolutionary algorithms , 2006, GECCO '06.
[294] D. Kell,et al. Array-based evolution of DNA aptamers allows modelling of an explicit sequence-fitness landscape , 2008, Nucleic acids research.
[295] Susan E. Carlson,et al. Annealing a genetic algorithm over constraints , 1998, SMC'98 Conference Proceedings. 1998 IEEE International Conference on Systems, Man, and Cybernetics (Cat. No.98CH36218).
[296] George R. Price,et al. Selection and Covariance , 1970, Nature.
[297] Inman Harvey,et al. Evolutionary robotics: the Sussex approach , 1997, Robotics Auton. Syst..
[298] Noel A Cressie,et al. Statistics for Spatial Data. , 1992 .
[299] John J. Grefenstette,et al. Genetic algorithms in noisy environments , 1988, Machine Learning.
[300] Xin Yao,et al. Benchmarking and solving dynamic constrained problems , 2009, 2009 IEEE Congress on Evolutionary Computation.
[301] Ofer M. Shir,et al. The application of evolutionary multi-criteria optimization to dynamic molecular alignment , 2007, 2007 IEEE Congress on Evolutionary Computation.
[302] David E. Goldberg,et al. Nonstationary Function Optimization Using Genetic Algorithms with Dominance and Diploidy , 1987, ICGA.
[303] Brad L. Miller,et al. Noise, sampling, and efficient genetic algorthms , 1997 .
[304] P. Dario,et al. Robotic versus manual control in magnetic steering of an endoscopic capsule. , 2009, Endoscopy.
[305] Samir W. Mahfoud. Finite Markov Chain Models of an Alternative Selection Strategy for the Genetic Algorithm , 1993, Complex Syst..
[306] B. Bowerman. Statistical Design and Analysis of Experiments, with Applications to Engineering and Science , 1989 .
[307] A. J. Booker,et al. A rigorous framework for optimization of expensive functions by surrogates , 1998 .
[308] Jieming Zhu,et al. Automated Discovery in a Chemistry Laboratory , 1990, AAAI.
[309] Lee Altenberg,et al. The Schema Theorem and Price's Theorem , 1994, FOGA.
[310] Jürgen Branke,et al. Memory enhanced evolutionary algorithms for changing optimization problems , 1999, Proceedings of the 1999 Congress on Evolutionary Computation-CEC99 (Cat. No. 99TH8406).
[311] Peter Ross,et al. Adapting Operator Settings in Genetic Algorithms , 1998, Evolutionary Computation.
[312] Adrian Thompson,et al. An Evolved Circuit, Intrinsic in Silicon, Entwined with Physics , 1996, ICES.
[313] Jürgen Branke *,et al. Anticipation and flexibility in dynamic scheduling , 2005 .
[314] Xin Yao,et al. Evolutionary Optimization , 2002 .
[315] Hans-Paul Schwefel,et al. TWO-PHASE NOZZLE AND HOLLOW CORE JET EXPERIMENTS. , 1970 .
[316] Petros Koumoutsakos,et al. A Method for Handling Uncertainty in Evolutionary Optimization With an Application to Feedback Control of Combustion , 2009, IEEE Transactions on Evolutionary Computation.
[317] M. Rattray. Modelling the dynamics of genetic algorithms using statistical mechanics , 1996 .
[318] John H. Holland,et al. Adaptation in Natural and Artificial Systems: An Introductory Analysis with Applications to Biology, Control, and Artificial Intelligence , 1992 .
[319] Richard S. Sutton,et al. Learning to predict by the methods of temporal differences , 1988, Machine Learning.
[320] Joshua D. Knowles,et al. Multiobjective evolutionary optimisation for surface-enhanced Raman scattering , 2010, Analytical and Bioanalytical Chemistry.
[321] Gilbert Syswerda,et al. A Study of Reproduction in Generational and Steady State Genetic Algorithms , 1990, FOGA.
[322] Jordan B. Pollack,et al. Embodied Evolution: Distributing an evolutionary algorithm in a population of robots , 2002, Robotics Auton. Syst..
[323] Z. Michalewicz. Genetic Algorithms , Numerical Optimization , and Constraints , 1995 .
[324] Gilbert Syswerda,et al. Uniform Crossover in Genetic Algorithms , 1989, ICGA.
[325] Sébastien Vérel,et al. Negative Slope Coefficient: A Measure to Characterize Genetic Programming Fitness Landscapes , 2006, EuroGP.
[326] Christian Blum,et al. Metaheuristics in combinatorial optimization: Overview and conceptual comparison , 2003, CSUR.
[327] David E. Goldberg,et al. Decision making in a hybrid genetic algorithm , 1997, Proceedings of 1997 IEEE International Conference on Evolutionary Computation (ICEC '97).
[328] D Weuster-Botz,et al. Experimental design for fermentation media development: statistical design or global random search? , 2000, Journal of bioscience and bioengineering.
[329] Thomas Bäck,et al. Evolution strategies applied to perturbed objective functions , 1994, Proceedings of the First IEEE Conference on Evolutionary Computation. IEEE World Congress on Computational Intelligence.
[330] E. S. Page. CONTINUOUS INSPECTION SCHEMES , 1954 .
[331] Efrn Mezura-Montes,et al. Constraint-Handling in Evolutionary Optimization , 2009 .
[332] Trung Thanh Nguyen,et al. Continuous dynamic optimisation using evolutionary algorithms , 2011 .
[333] Helen G. Cobb,et al. An Investigation into the Use of Hypermutation as an Adaptive Operator in Genetic Algorithms Having Continuous, Time-Dependent Nonstationary Environments , 1990 .
[334] Hector J. Levesque,et al. A New Method for Solving Hard Satisfiability Problems , 1992, AAAI.
[335] Jordan B. Pollack,et al. Coevolutionary robotics , 1999, Proceedings of the First NASA/DoD Workshop on Evolvable Hardware.
[336] Michael D. Vose,et al. The simple genetic algorithm - foundations and theory , 1999, Complex adaptive systems.
[337] Thomas G. Dietterich,et al. High-Performance Job-Shop Scheduling With A Time-Delay TD(λ) Network , 1995, NIPS 1995.
[338] Samir W. Mahfoud. Niching methods for genetic algorithms , 1996 .