Buzhou Tang (ed.); Qingcai Chen (ed.); Hongfei Lin (ed.); Fei Wu (ed.); Lei Liu (ed.); Tianyong Hao (ed.); Yanshan ( Wang Springer (2023) Pehmeäkantinen kirja
Buzhou Tang (ed.); Qingcai Chen (ed.); Hongfei Lin (ed.); Fei Wu (ed.); Lei Liu (ed.); Tianyong Hao (ed.); Yanshan ( Wang Springer (2023) Pehmeäkantinen kirja
John Wiley & Sons Inc Sivumäärä: 352 sivua Asu: Kovakantinen kirja Julkaisuvuosi: 2009, 30.07.2009 (lisätietoa) Kieli: Englanti
Differential evolution is a very simple but very powerful stochastic optimizer. Since its inception, it has proved very efficient and robust in function optimization and has been applied to solve problems in many scientific and engineering fields. In Differential Evolution , Dr. Qing begins with an overview of optimization, followed by a state-of-the-art review of differential evolution, including its fundamentals and up-to-date advances. He goes on to explore the relationship between differential evolution strategies, intrinsic control parameters, non-intrinsic control parameters, and problem features through a parametric study. Findings and recommendations on the selection of strategies and intrinsic control parameter values are presented. Lastly, after an introductory review of reported applications in electrical and electronic engineering fields, different research groups demonstrate how the methods can be applied to such areas as: multicast routing, multisite mapping in grid environments, antenna arrays, analog electric circuit sizing, electricity markets, stochastic tracking in video sequences, and color quantization.
Contains a systematic and comprehensive overview of differential evolution Reviews the latest differential evolution research Describes a comprehensive parametric study conducted over a large test bed
Shows how methods can be practically applied to
mobile communications grid computing circuits image processing power engineering
Sample applications demonstrated by research groups in the United Kingdom, Australia, Italy, Turkey, China, and Eastern Europe Provides access to companion website with code examples for download
Differential Evolution is ideal for application engineers, who can use the methods described to solve specific engineering problems. It is also a valuable reference for post-graduates and researchers working in evolutionary computation, design optimization and artificial intelligence. Researchers in the optimization field or engineers and managers involved in operations research will also find the book a helpful introduction to the topic.