Adaptive Differential Evolution: A Robust Approach to Multimodal Problem Optimization: 1 - Rilegato

Zhang, Jingqiao; Sanderson, Arthur C.

 
9783642015267: Adaptive Differential Evolution: A Robust Approach to Multimodal Problem Optimization: 1

Sinossi

I ?rst met Jingqiao when he had just commenced his PhD research in evolutionary algorithms with Arthur Sanderson at Rensselaer. Jingqiao’s goals then were the investigation and development of a novel class of se- adaptivedi?erentialevolutionalgorithms,later calledJADE. I had remarked to Jingqiao then that Arthur always appreciated strong theoretical foun- tions in his research, so Jingqiao’s prior mathematically rigorous work in communications systems would be very useful experience. Later in 2007, whenJingqiaohadcompletedmostofthetheoreticalandinitialexperimental work on JADE, I invited him to spend a year at GE Global Research where he applied his developments to several interesting and important real-world problems. Most evolutionary algorithm conferences usually have their share of in- vative algorithm oriented papers which seek to best the state of the art - gorithms. The best algorithms of a time-frame create a foundation for a new generationof innovativealgorithms, and so on, fostering a meta-evolutionary search for superior evolutionary algorithms. In the past two decades, during whichinterest andresearchin evolutionaryalgorithmshavegrownworldwide by leaps and bounds, engaging the curiosity of researchers and practitioners frommanydiversescienceandtechnologycommunities,developingstand-out algorithms is getting progressively harder.

Le informazioni nella sezione "Riassunto" possono far riferimento a edizioni diverse di questo titolo.

Dalla quarta di copertina

Optimization problems are ubiquitous in academic research and real-world applications wherever such resources as space, time and cost are limited. Researchers and practitioners need to solve problems fundamental to their daily work which, however, may show a variety of challenging characteristics such as discontinuity, nonlinearity, nonconvexity, and multimodality. It is expected that solving a complex optimization problem itself should easy to use, reliable and efficient to achieve satisfactory solutions.

Differential evolution is a recent branch of evolutionary algorithms that is capable of addressing a wide set of complex optimization problems in a relatively uniform and conceptually simple manner. For better performance, the control parameters of differential evolution need to be set appropriately as they have different effects on evolutionary search behaviours for various problems or at different optimization stages of a single problem. The fundamental theme of the book is theoretical study of differential evolution and algorithmic analysis of parameter adaptive schemes. Topics covered in this book include:

  • Theoretical analysis of differential evolution and its control parameters
  • Algorithmic design and comparative analysis of parameter adaptive schemes
  • Scalability analysis of adaptive differential evolution
  • Adaptive differential evolution for multi-objective optimization
  • Incorporation of surrogate model for computationally expensive optimization
  • Application to winner determination in combinatorial auctions of E-Commerce
  • Application to flight route planning in Air Traffic Management
  • Application to transition probability matrix optimization in credit-decision making

Le informazioni nella sezione "Su questo libro" possono far riferimento a edizioni diverse di questo titolo.

Altre edizioni note dello stesso titolo

9783642260216: Adaptive Differential Evolution: A Robust Approach to Multimodal Problem Optimization: 1

Edizione in evidenza

ISBN 10:  3642260217 ISBN 13:  9783642260216
Casa editrice: Springer, 2012
Brossura