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Dependable Parallel Canonical Differential Evolutionary Particle Swarm Optimization for Voltage and Reactive Power Control

机译:可靠的平行典型差分进化粒子群优化用于电压和无功控制

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This paper proposes dependable parallel canonical differential evolutionary particle swarm optimization (C-DEEPSO) for voltage and reactive power control (Volt/Var Control: VVC). Since the problem can be formulated as a mixed integer nonlinear optimization problem (MINLP), various evolutionary computation techniques have been applied to the problem including PSO, differential evolution (DE), and DEEPSO. Considering large penetration of renewable energies and deregulated environments of power systems, VVC requires fast computation for larger-scale VVC problems. One of the solutions to speed-up the computation is to utilize parallel and distributed computing. Since power system is one of the infrastructures of social community, not only fast computation, but also sustainable control (dependability) is strongly required for VVC. The simulation results with with IEEE 14, 30, 57, and 118 bus systems indicate that parallel C-DEEPSO is superior to the conventional parallel DEEPSO from the dependability point of view.
机译:本文提出了可靠的平行规范差分进化粒子群群优化(C-Deadso),用于电压和无功功率控制(Volt / Var控制:VVC)。由于该问题可以被配制成混合整数非线性优化问题(MINLP),因此已将各种进化计算技术应用于包括PSO,差分演进(DE)和DeeCo的问题。考虑到可再生能源的大渗透和电力系统的Derocutation环境,VVC需要快速计算大规模的VVC问题。加速计算的一个解决方案是利用并行和分布式计算。由于电力系统是社会社区的基础设施之一,而不仅需要快速计算,而且还强烈要求VVC所需的可持续控制(可靠性)。使用IEEE 14,30,57和118总线系统的模拟结果表明并联C-Deadso从可靠性的视角方向上得出传统的平行深度。

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