Constrained optimization by the ε constrained differential evolution with an archive and gradient-based mutation

T. Takahama, S. Sakai
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引用次数: 267

Abstract

The ε constrained method is an algorithm transformation method, which can convert algorithms for unconstrained problems to algorithms for constrained problems using the ε level comparison, which compares search points based on the pair of objective value and constraint violation of them. We have proposed the ε constrained differential evolution (εDE), which is the combination of the ε constrained method and differential evolution (DE). It has been shown that the εDE can run very fast and can find very high quality solutions. Also, we proposed the εDE with gradient-based mutation (εDEg), which utilized gradients of constraints in order to solve problems with difficult constraints. In this study, we propose the ε constrained DE with an archive and gradient-based mutation (εDEag). The εDEag utilizes an archive to maintain the diversity of individuals and adopts a new way of selecting the ε level control parameter in the εDEg. The 18 problems, which are given in special session on “Single Objective Constrained RealParameter Optimization” in CEC2010, are solved by the εDEag and the results are shown in this paper.
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基于存档和梯度突变的ε约束差分进化约束优化
ε约束方法是一种算法转换方法,它利用ε水平比较将无约束问题的算法转化为有约束问题的算法,ε水平比较是基于目标值对和约束违反的搜索点。提出了ε约束差分进化方法(ε constrained differential evolution, εDE),它将ε约束方法与差分进化方法相结合。结果表明,εDE运行速度非常快,求解质量非常高。此外,我们还提出了基于梯度突变的εDE算法(εDEg),该算法利用约束的梯度来解决具有困难约束的问题。在这项研究中,我们提出了一个基于存档和梯度突变的ε约束DE (ε deag)。ε deg利用档案来保持个体的多样性,并在ε deg中采用了一种新的ε水平控制参数选择方法。本文用ε deg方法求解了2010年中国机械工程学会“单目标约束实参数优化”专题会议上提出的18个问题,并给出了结果。
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