模拟退火
爬山
数学优化
自适应模拟退火
局部最优
退火(玻璃)
计算机科学
启发式
数学
材料科学
复合材料
作者
Darrall Henderson,Sheldon H. Jacobson,Alan W. Johnson
出处
期刊:Kluwer Academic Publishers eBooks
[Kluwer Academic Publishers]
日期:2006-02-02
卷期号:: 287-319
被引量:504
标识
DOI:10.1007/0-306-48056-5_10
摘要
Simulated annealing is a popular local search meta-heuristic used to address discrete and, to a lesser extent, continuous optimization problems. The key feature of simulated annealing is that it provides a means to escape local optima by allowing hill-climbing moves (i.e., moves which worsen the objective function value) in hopes of finding a global optimum. A brief history of simulated annealing is presented, including a review of its application to discrete and continuous optimization problems. Convergence theory for simulated annealing is reviewed, as well as recent advances in the analysis of finite time performance. Other local search algorithms are discussed in terms of their relationship to simulated annealing. The chapter also presents practical guidelines for the implementation of simulated annealing in terms of cooling schedules, neighborhood functions, and appropriate applications.
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