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A Fuzzy Rule-Based Penalty Function Approach for Constrained Evolutionary Optimization

机译:约束进化优化的基于规则的模糊罚函数法

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摘要

This paper proposes a novel fuzzy rule-based penalty function approach for solving single-objective nonlinearly constrained optimization problems. Of all the existing state-of-the-art constraint handling techniques, the conventional method of penalty can be easily implemented because of its simplicity but suffers from the lack of robustness. To mitigate the problem of parameter dependency, several forms of adaptive penalties have been suggested in literature. Instead of identifying a complex mathematical function to compute the penalty for constraint violation, we propose a Mamdani type IF-THEN rule-based fuzzy inference system that incorporates all the required criteria of self-adaptive penalty without formulating an explicit mapping. Effectiveness of the proposed constrained optimization algorithm has been empirically validated on the basis of the standard optimality theorems from the literature on mathematical programming. Simulation results show that fuzzy penalty not only surpasses its existing counterpart i.e., self adaptive penalty, but also remain competitive against several other standard as well as currently developed complex constraint handling strategies.
机译:本文提出了一种新的基于模糊规则的惩罚函数方法,用于求解单目标非线性约束优化问题。在所有现有的最先进的约束处理技术中,传统的惩罚方法由于其简单性而易于实现,但缺乏鲁棒性。为了减轻参数依赖性的问题,文献中已经提出了几种形式的自适应惩罚。我们没有确定复杂的数学函数来计算违反约束的惩罚,而是提出了一种基于Mamdani类型IF-THEN规则的模糊推理系统,该系统融合了所有必需的自适应惩罚标准,而无需制定明确的映射。根据数学编程文献中的标准最优性定理,通过经验验证了所提出的约束优化算法的有效性。仿真结果表明,模糊罚分不仅超越了现有罚分即自适应罚分,而且与其他几种标准以及当前开发的复杂约束处理策略相比仍具有竞争力。

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