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An adaptive hybrid optimization algorithm for multi objective OPF with FACTS device

机译:带FACTS装置的多目标OPF自适应混合优化算法。

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This paper presents a Hybrid Particle Swarm Optimization with Differential Perturbed Velocity with adaptive acceleration coefficient (APSO-DV) to reduce generator fuel cost in Optimal Power Flow (OPF) control with a powerful Flexible Alternating Current Transmission Systems (FACTS) device such as Unified power Flow Controller (UPFC). The APSO-DV algorithm employs a strongly coupled differential operator acquired from differential evolution with adaptive acceleration coefficient in velocity update function of PSO. The purpose of UPFC is to control both the real and reactive power flows through transmission lines along with conventional equipment to reduce the operating cost. The strategic location of UPFC is found using Fuzzy approach by taking voltage magnitudes and voltage stability index (L-Index) as input parameters where L-Index is a real number which gives fair and consistent results for stability among different methods of voltage stability analysis. The feasibility of the proposed method has been tested on IEEE-30 bus system with three different objective functions that reflects fuel cost minimization, Power loss minimization and the combination of total fuel cost and system power loss. The test results show the effectiveness of robustness of the proposed approach and provides superior results compared with the existing results in the literature.
机译:本文提出了具有自适应加速度系数(APSO-DV)的差分扰动速度的混合粒子群优化算法,可通过功能强大的灵活交流输电系统(FACTS)设备(如统一功率)来降低最优潮流(OPF)控制中的发电机燃料成本流控制器(UPFC)。 APSO-DV算法在PSO的速度更新功能中采用了从差分演化获得的具有强加速度的差分耦合算子,并具有自适应加速度系数。 UPFC的目的是控制与传统设备一起通过传输线的有功功率和无功功率,以降低运营成本。 UPFC的战略位置是通过使用模糊方法,通过将电压幅度和电压稳定指数(L-Index)作为输入参数来找到的,其中L-Index是一个实数,可以为不同电压稳定度分析方法之间的稳定性提供公平,一致的结果。该方法的可行性已在具有三种不同目标函数的IEEE-30总线系统上进行了测试,这些目标函数反映了最小化燃料成本,最小化功率损耗以及总燃料成本和系统功率损耗的组合。测试结果表明了该方法的鲁棒性,并且与文献中的现有结果相比,提供了更好的结果。

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