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Optimal Power Flow Solutions Using Algorithm Success History Based Adaptive Differential Evolution with Linear Population Reduction

机译:基于算法的最佳功率流解决方案基于基于算法的线性群体减少的自适应差分演化

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Optimal power flow (OPF) is one of the highly non-linear, complex and challenging optimization problems in power system. The steady state parameters of an electrical network are determined in the process of solving OPF such that if recommended settings are followed, the operation of the network becomes economical and efficient. During earlier days, primary objective of OPF was minimization of fuel or generation cost. Due to growing importance on greenhouse gas emissions, power quality and system losses, numerous evolutionary algorithms (EAs) had been tried in the last couple of decades with several other objectives of OPF. This paper solves OPF with single objectives of minimizing fuel cost, emission and real power loss in the system. In addition, voltage stability enhancement is also set as an objective. Penalty function approach is adopted to deal with the system constraints which must be satisfied during the process of optimization. A state-of-the-art form of differential evolution (DE) algorithm, called L-SHADE, applied in solving the problem of OPF with different objectives. Success history-based parameter adaptation technique of DE is termed as SHADE. L-SHADE improves the performance of SHADE by linearly reducing the population size in successive generations. The algorithm is tested on standard IEEE 30-bus test system. Simulation results are analyzed and compared with some of the recent studies.
机译:最佳功率流(OPF)是电力系统中高度非线性,复杂和挑战性的优化问题之一。在解决OPF的过程中确定电网的稳态参数,使得如果遵循建议的设置,则网络的操作变得经济高效。在早些时候,OPF的主要目标是最小化燃料或代成本。由于对温室气体排放,电能质量和系统损失越来越重要,在过去几十年中曾尝试过多个进化算法(EAS),其中几十年具有OPF的其他几个目标。本文解决了OPF,具有最小化系统中燃料成本,排放和实际功率损耗的单一目标。另外,电压稳定性增强也被设定为目标。采用惩罚功能方法来处理在优化过程中必须满足的系统约束。一种最先进的差分演进形式(DE)算法,称为L-SHADE,用于解决不同目标的OPF问题。 DE的成功历史参数适应技术称为阴影。 L-Shade通过在连续几代人的线性降低人口大小来提高阴影的性能。该算法在标准IEEE 30总线测试系统上进行了测试。分析了仿真结果,并与最近的一些研究进行了比较。

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