Ebook: Evolutionary Optimization in Dynamic Environments
Author: Jürgen Branke (auth.)
- Tags: Artificial Intelligence (incl. Robotics), Theory of Computation, Calculus of Variations and Optimal Control, Optimization
- Series: Genetic Algorithms and Evolutionary Computation 3
- Year: 2002
- Publisher: Springer US
- Edition: 1
- Language: English
- pdf
Evolutionary Algorithms (EAs) have grown into a mature field of research in optimization, and have proven to be effective and robust problem solvers for a broad range of static real-world optimization problems. Yet, since they are based on the principles of natural evolution, and since natural evolution is a dynamic process in a changing environment, EAs are also well suited to dynamic optimization problems. Evolutionary Optimization in Dynamic Environments is the first comprehensive work on the application of EAs to dynamic optimization problems. It provides an extensive survey on research in the area and shows how EAs can be successfully used to
- continuously and efficiently adapt a solution to a changing environment,
- find a good trade-off between solution quality and adaptation cost,
- find robust solutions whose quality is insensitive to changes in the environment,
- find flexible solutions which are not only good but that can be easily adapted when necessary.
Evolutionary Algorithms (EAs) have grown into a mature field of research in optimization, and have proven to be effective and robust problem solvers for a broad range of static real-world optimization problems. Yet, since they are based on the principles of natural evolution, and since natural evolution is a dynamic process in a changing environment, EAs are also well suited to dynamic optimization problems. Evolutionary Optimization in Dynamic Environments is the first comprehensive work on the application of EAs to dynamic optimization problems. It provides an extensive survey on research in the area and shows how EAs can be successfully used to
- continuously and efficiently adapt a solution to a changing environment,
- find a good trade-off between solution quality and adaptation cost,
- find robust solutions whose quality is insensitive to changes in the environment,
- find flexible solutions which are not only good but that can be easily adapted when necessary.
Evolutionary Algorithms (EAs) have grown into a mature field of research in optimization, and have proven to be effective and robust problem solvers for a broad range of static real-world optimization problems. Yet, since they are based on the principles of natural evolution, and since natural evolution is a dynamic process in a changing environment, EAs are also well suited to dynamic optimization problems. Evolutionary Optimization in Dynamic Environments is the first comprehensive work on the application of EAs to dynamic optimization problems. It provides an extensive survey on research in the area and shows how EAs can be successfully used to
- continuously and efficiently adapt a solution to a changing environment,
- find a good trade-off between solution quality and adaptation cost,
- find robust solutions whose quality is insensitive to changes in the environment,
- find flexible solutions which are not only good but that can be easily adapted when necessary.
Content:
Front Matter....Pages i-xiv
Brief Introduction to Evolutionary Algorithms....Pages 1-10
Front Matter....Pages 11-11
Optimization in Dynamic Environments....Pages 13-29
Survey: State of the Art....Pages 31-52
From Memory to Self-Organization....Pages 53-65
Empirical Evaluation....Pages 67-98
Summary of Part 1....Pages 99-102
Front Matter....Pages 103-103
Adaptation Cost vs. Solution Quality: Multiple Objectives....Pages 105-122
Front Matter....Pages 123-123
Searching for Robust Solutions....Pages 125-172
From Robustness to Flexibility....Pages 173-184
Summary and Outlook....Pages 185-190
Back Matter....Pages 191-208
Evolutionary Algorithms (EAs) have grown into a mature field of research in optimization, and have proven to be effective and robust problem solvers for a broad range of static real-world optimization problems. Yet, since they are based on the principles of natural evolution, and since natural evolution is a dynamic process in a changing environment, EAs are also well suited to dynamic optimization problems. Evolutionary Optimization in Dynamic Environments is the first comprehensive work on the application of EAs to dynamic optimization problems. It provides an extensive survey on research in the area and shows how EAs can be successfully used to
- continuously and efficiently adapt a solution to a changing environment,
- find a good trade-off between solution quality and adaptation cost,
- find robust solutions whose quality is insensitive to changes in the environment,
- find flexible solutions which are not only good but that can be easily adapted when necessary.
Content:
Front Matter....Pages i-xiv
Brief Introduction to Evolutionary Algorithms....Pages 1-10
Front Matter....Pages 11-11
Optimization in Dynamic Environments....Pages 13-29
Survey: State of the Art....Pages 31-52
From Memory to Self-Organization....Pages 53-65
Empirical Evaluation....Pages 67-98
Summary of Part 1....Pages 99-102
Front Matter....Pages 103-103
Adaptation Cost vs. Solution Quality: Multiple Objectives....Pages 105-122
Front Matter....Pages 123-123
Searching for Robust Solutions....Pages 125-172
From Robustness to Flexibility....Pages 173-184
Summary and Outlook....Pages 185-190
Back Matter....Pages 191-208
....
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