Evolutionary Multi-objective Optimization of Substation Maintenance using Markov Model

C. Chang, F. Yang
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Abstract

Improving the reliability and reducing the overall cost are two important but often conflicting objectives for substations. Proper scheduling of preventive maintenance provides an effective means to tradeoff between the two objectives. In this paper, Pareto-based multi-objective evolutionary algorithms are proposed to optimize the maintenance activities because of their abilities of robust search towards best-compromise solutions for large-size optimization problems. Markov model is proposed to predict the deterioration process, maintenance operations, and availability of individual components. Minimum cut sets method is employed to identify the critical components by evaluating the overall reliability of interconnected systems. Pareto-fronts are generated for comparisons with other substation configurations. Results for four different substation configurations are presented to demonstrate potentials of the proposed approach for handling more complicated configurations.
基于马尔可夫模型的变电站维护多目标进化优化
提高可靠性和降低总成本是变电站的两个重要但往往相互冲突的目标。适当的预防性维护计划是在这两个目标之间进行权衡的有效手段。本文提出了基于pareto的多目标进化算法,该算法具有鲁棒搜索大型优化问题的最佳妥协解的能力。提出了马尔可夫模型来预测各个部件的劣化过程、维修操作和可用性。采用最小割集法,通过评估互联系统的整体可靠性来识别关键部件。生成帕累托前沿是为了与其他变电站配置进行比较。结果为四种不同的变电站配置提出,以证明潜力提出的方法处理更复杂的配置。
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