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Faster evolutionary algorithm based optimal power flow using incremental variables

机译:使用增量变量的基于更快进化算法的最优潮流

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摘要

This paper proposes an efficient approach for evolutionary algorithm based Optimal Power Flow (OPF). The main drawback of evolutionary based OPF is the excessive execution time due to large number of power flows required in the solution process. The proposed Efficient Evolutionary Algorithm (EEA) uses the concept of incremental power flow model, based on sensitivities. With this, the number of power flows are reduced substantially, resulting in solution speed up. The original advantages of the evolutionary algorithms, like: the ability to handle discontinuities, complex non-linearities in the objective function, discrete variables, and multi-objective optimization, are still available in the proposed approach. The OPF solution is obtained with single objectives (fuel cost, loss, voltage stability index) and multiple objective (fuel cost and voltage stability index). The potential of the proposed approach is tested on IEEE 30, 118 and 300 bus systems, and the results obtained with proposed EEA are compared with other evolutionary algorithms. The proposed approach is generic one and can be used with any evolutionary algorithm based OPF.
机译:本文提出了一种基于最优功率流(OPF)的进化算法的有效方法。基于进化的OPF的主要缺点是,由于解决过程中需要大量的功率流,因此执行时间过长。所提出的有效进化算法(EEA)基于灵敏度,采用了增量潮流模型的概念。这样,可以显着减少功率流的数量,从而加快解决方案的速度。进化算法的原始优势,例如:处理不连续性的能力,目标函数中的复杂非线性,离散变量和多目标优化,仍可在提出的方法中使用。 OPF解决方案的获得具有单一目标(燃料成本,损耗,电压稳定性指数)和多个目标(燃料成本和电压稳定性指数)。在IEEE 30、118和300总线系统上测试了该方法的潜力,并将通过EEA获得的结果与其他进化算法进行了比较。提出的方法是一种通用方法,可与任何基于OPF的进化算法一起使用。

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