Probabilistic reliability optimization using hybrid genetic algorithms

A. Gaun, G. Rechberger, H. Renner
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引用次数: 3

Abstract

In this paper transmission power system structure optimization is performed via a minimal spanning tree based encoded fuzzy logic self-controlled hybrid genetic algorithm (GA). During the redundancy optimization of the power system network a binary encoded GA is used for a modified transmission network expansion problem, finding the optimal power line type with respect to the net present value (NPV) of minimal investment cost, operating costs and load flow constraints. Each individual is evaluated by a minimal state probability reliability estimation algorithm verifying a certain minimal reliability constraint. A developed improvement algorithm is used for individuals not satisfying a reliability constraint. A recently developed fast reliability calculation algorithm, computing energy not supplied, and the obtained NPV of the transmission network expansion problem are utilized as minimization function. The algorithm is applied to a real world sub transmission system in order to discuss strategies for future system expansions.
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基于混合遗传算法的概率可靠性优化
本文采用基于最小生成树的编码模糊逻辑自控制混合遗传算法(GA)对输电系统进行结构优化。在电力系统网络冗余优化过程中,将二值编码遗传算法应用于改进的输电网络扩展问题,根据最小投资成本、运行成本和潮流约束的净现值(NPV)找到最优的输电线路类型。通过最小状态概率可靠性估计算法对每个个体进行评估,该算法验证了某个最小可靠性约束。对于不满足可靠性约束的个体,提出了一种改进算法。采用最近发展的一种快速可靠性计算算法,不提供计算能量,并将得到的输电网扩容问题NPV作为最小化函数。将该算法应用于一个实际的分输电系统,以探讨未来系统扩展的策略。
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