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Joint optimal sizing and placement of renewable distributed generation and energy storage for energy loss minimization

机译:联合优化可再生分布式发电和能量存储的大小和位置,以最大程度地减少能量损失

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Large integration of renewable distributed generation (RDG) and energy storage (ES) in distribution networks provides an opportunity for energy loss minimization. This paper proposes a method for joint optimum allocation of RDG and distributed ES for energy loss minimization. The main contribution of the paper is formulation of probabilistic generation model and ES model to perform a combined optimization. Also, it presents integration of generation model, storage model, and load model into an optimal power flow to obtain loss minimization. A highly competitive algorithm called Grey Wolf Optimizer (GWO) is implemented to solve the nonlinear constrained optimization. The results are also compared with other heuristic algorithms, i.e., Genetic Algorithm (GA), Particle Swarm Optimization (PSO), Symbiotic Organisms Search Algorithm (SOS) and Firefly Algorithm (FFA). Two cases studies for joint optimal sizing and placement of RDG (i.e., solar RDG-ES and wind RDG-ES) are presented. Here, a 34-bus test system is used and optimizations are carried out in M ATLAB.
机译:配电网络中可再生分布式发电(RDG)和能量存储(ES)的大规模集成为能量损失的最小化提供了机会。本文提出了一种将RDG和分布式ES联合优化分配以最小化能量损失的方法。本文的主要贡献是制定了概率生成模型和ES模型以进行组合优化。此外,它还提出了将发电模型,存储模型和负载模型集成到最佳潮流中,以实现损耗最小化的目的。为了解决非线性约束优化问题,实施了一种称为“灰狼优化程序”(GWO)的极富竞争力的算法。还将结果与其他启发式算法进行比较,即遗传算法(GA),粒子群优化(PSO),共生生物搜索算法(SOS)和萤火虫算法(FFA)。本文介绍了两个有关RDG优化尺寸和位置的案例研究(即太阳能RDG-ES和风RDG-ES)。在这里,使用了34总线测试系统,并在M ATLAB中进行了优化。

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