Multi-point Simulated Annealing with Adaptive Neighborhood

K. Ando, M. Miki, T. Hiroyasu
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引用次数: 1

Abstract

When simulated annealing (SA) is applied to continuous optimization problems, the design of the neighborhood used in SA becomes important. Many experiments are necessary to determine an appropriate neighborhood range in each problem, because the neighborhood range corresponds to distance in Euclidean space and is decided arbitrarily. We propose multi-point simulated annealing with adaptive neighborhood (MSA/AN) for continuous optimization problems, which determines the appropriate neighborhood range automatically. The proposed method provides a neighborhood range from the distance and the design variables of two search points, and generates candidate solutions using a probability distribution based on this distance in the neighborhood, and selects the next solutions from them based on the energy. In addition, a new acceptance judgment is proposed for multi-point SA based on the Metropolis criterion. The proposed method shows good performance in solving typical test problems
具有自适应邻域的多点模拟退火
当模拟退火(SA)应用于连续优化问题时,模拟退火所使用的邻域设计变得非常重要。由于邻域范围对应于欧几里得空间中的距离,是任意确定的,因此每个问题都需要通过多次实验来确定合适的邻域范围。针对连续优化问题,提出了带自适应邻域的多点模拟退火算法(MSA/AN),该算法能自动确定合适的邻域范围。该方法根据两个搜索点的距离和设计变量提供一个邻域范围,并基于邻域距离的概率分布生成候选解,并根据能量从候选解中选择下一个解。在此基础上,提出了一种基于Metropolis准则的多点SA接收判断方法。该方法在解决典型测试问题中表现出良好的性能
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