自然计算算法在配电系统可靠性参数优化中的应用

R. Ashok Bakkiyaraj, N. Kumarappan
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引用次数: 1

摘要

由于电力系统结构的变化,为用户选择公用事业提供了多种选择,配电系统部件可靠性的提高受到越来越多的关注。最优增强策略是在提高现有系统部件可靠性参数所需的投资与降低中断功率之间进行权衡。这些成本是根据系统部分的平均故障率和平均中断时间来建模的。通过对负荷点和区段可靠性参数的上界进行约束,保证了负荷点供电的充分性。通过对面向客户的可靠性指标施加边界,满足了消费者对供电可靠性的关注。这使得优化设计问题成为具有线性和非线性约束的非线性目标的优化问题。本文应用基于种群的自然计算算法,如遗传算法、粒子群优化、差分进化和萤火虫算法,求解了样品测试系统的最优可靠性增强模型。所得结果与已有文献中使用多项式时间算法的结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of natural computational algorithms in optimal enhancement of reliability parameters for electrical distribution system
Reliability improvement of distribution system components is gaining more attention due to the structural changes of a power system which provides multiple choices to the consumers for selecting the utility. The optimal enhancement strategy is based on the trade-off between the investment required for improving the reliability parameters of the system components from the present level and the reduction in interruption power which is in terms of cost. These costs are modeled in terms average failure rate and average interruption duration of system sections. Adequacy of the power supply at loads points is ensured by imposing the constraints on upper bounds on load points and sections reliability parameters of the system. Consumers concern on supply reliability is fulfilled by imposing bounds on customer oriented reliability indices. This makes the optimal design problem as optimization problem of non-linear objective with linear and non-linear constraints. This paper applies the population based natural computational algorithms such as genetic algorithm, particle swarm optimization, differential evolution and firefly algorithm for solving the optimal reliability enhancement model of the sample test system. Results obtained are compared with the results of existing literature which uses polynomial time algorithm.
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