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Dependable Parallel Multi-Swarm C-DEEPSO with Migration for Voltage and Reactive Power Control

机译:可靠的并行多群C-Deadso具有电压和无功功率控制的迁移

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This paper proposes dependable parallel multi-swarm canonical differential evolutionary particle swarm optimization with migration (DPMS-CDEEPSOw/M) for voltage and reactive power control (Volt/Var Control: VVC). The proposed DPMS-CDEEPSOw/M is a general evolutionary computation technique for dependable and fast optimization applications. So far, applications of evolutionary computation methods such as Genetic Algorithm (GA), advanced PSOs, and Differential Evolution (DE) have been studied to VVC because VVC is a mixed integer nonlinear optimization programming (MINLP) problem. Considering recent progress of deregulated environment and large renewable energy penetration in power systems, Fast VVC is strongly needed. Utilization of parallel and distributed computing may solve the challenge. However, since power system is a social infrastructure, both fast computation and sustainable (dependable) control are eagerly awaited for VVC. A multi-swarm evolutionary computation technique is verified to improve quality of solution. Therefore, its application to VVC has a possibility to increase dependability. The simulation results indicate that the proposed DPMS-CDEEPSOw/M based method can speed up computation and improve dependability by comparison with the conventional dependable parallel C-DEEPSO based method.
机译:本文提出了可靠的并行多群体规范差分进化粒子群优化与迁移(DPMS-CDEEPSOw / M)为电压和无功功率控制(电压/无功控制:VVC)。所提出的DPMS-CDEEPSOw / M是可靠和快速优化应用程序的一般进化计算技术。到目前为止,进化计算方法,如遗传算法(GA),先进的项目支持办公室和差分进化(DE)应用进行了研究,以VVC因为VVC是非线性优化规划(MINLP)问题的一种混合整数。考虑到近期市场化的环境,并在电力系统大型可再生能源普及率的进步,强烈需要快速VVC。并行和分布式计算的利用率可能解决的挑战。然而,由于电力系统是一个社会的基础设施,无论是快速计算和可持续(可靠)控制在热切期待的VVC。多群进化计算技术验证,以提高解决方案的质量。因此,其适用于VVC具有这样的可能性,以增加可靠性。仿真结果表明,所提出的DPMS-CDEEPSOw / M为基础的方法可以加快计算,并通过与常规可靠平行C-DEEPSO基于方法相比提高可靠性。

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