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Solution of multi-objective optimal power flow using efficient meta-heuristic algorithm

机译:利用高效元启发式算法解决多目标最佳功率流量

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摘要

An efficient meta-heuristic algorithm-based multi-objective optimization (MOO) technique for solving the multi-objective optimal power flow (MO-OPF) problem using incremental power flow model based on sensitivities and some heuristics is proposed in this paper. This paper is aimed to overcome the drawback of traditional MOO approach, i.e., the computational burden. By using the proposed efficient approach, the number of power flows to be performed is reduced substantially, resulting the solution speed up. In this paper, the generation cost minimization and transmission loss minimization are considered as the objective functions. The effectiveness of the proposed approach is examined on IEEE 30 and 300 bus test systems. All the simulation studies indicate that the proposed efficient MOO approach is approximately 10 times faster than the evolutionary-based MOO algorithms. In this paper, some of the case studies are also performed considering the practical voltage-dependent load modeling. The simulation results obtained using the proposed efficient approach are also compared with the evolutionary-based Non-dominated Sorting Genetic Algorithm-2 (NSGA-II) and the classical weighted summation approach.
机译:本文提出了一种利用基于敏感性的增量功率流模型和一些启发式来解决多目标最佳功率流量(MO-OPF)问题的高效元启发式算法的多目标优化(MOO)技术。本文旨在克服传统Moo方法的缺点,即计算负担。通过使用所提出的有效方法,大幅度减小要执行的功率流量,从而使溶液加速。在本文中,产生成本最小化和传输损耗最小化被认为是目标函数。在IEEE 30和300总线测试系统上检查了所提出的方法的有效性。所有仿真研究表明,所提出的高效Moo方法比基于进化的MOO算法快大约10倍。在本文中,考虑到实用的电压依赖性载荷建模,还进行了一些案例研究。还与基于进化的非主导分类遗传算法-2(NSGA-II)和经典加权求和方法相比,使用所提出的有效方法获得的模拟结果。

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