系统可靠性优化设计问题的多目标多状态混合差分进化算法

Zeng Hui, Zhu Jixiang, L. Yuanxiang, Yin Weiqin
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引用次数: 3

摘要

针对多目标多状态可靠性优化设计问题,提出并实现了一种新的自定义进化算法。该算法采用通用矩基因评级函数方法,对从完全运行到完全失效的不同性能水平的系统的可靠性或可用性指标进行评估。子系统中的各个部件具有不同的性能水平、成本、重量和可靠性。遗传算法适用于具有许多非线性或不连续的高维随机问题,因此适合于可靠性设计问题的求解。该算法将差分进化算法与多父交叉算子相结合,满足了同时搜索的遍历性和快速性。实验还表明,该算法得到了较好的Pareto-front解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MOMS-HDEA: A Multi-Objective Multi-State Hybrid Differential Evolution Algorithm for System Reliability Optimization Design Problems
A new custom evolutionary algorithm was developed and implemented to solve multiple objective multi-state reliability optimization design problems. This new algorithm uses the universal moment gene-rating function approach to evaluate the different re-liability or availability indices of the system which have various levels of performance ranging from per-fectly functioning to completely failed. And each com-ponent in sub-system has different performance levels, cost, weight, and reliability. Genetic algorithms are suited for solving reliability design problems because of their appropriate for high-dimension stochastic problems with many nonlinearities or discontinuities. The developed algorithm, MOMS-HDEA, combined the differential evolution algorithm with multi-parent crossover operator satisfying the ergodic and fast properties in searching simultaneously. Experiment also shows that the algorithm gets better Pareto-front solutions.
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