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Optimal stochastic scenario-based allocation of smart grids' renewable and non-renewable distributed generation units and protective devices

机译:基于智能电网可再生和不可再生分布式发电单元和保护装置的最优随机方案的分配

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摘要

The smart grid reliability is dramatically affected due to system uncertainties. Although much efforts have been devoted to developing the Monte Carlo simulation (MCS)-based or analytical methods for reliability-based optimal allocation distributed generation (DGs) and protective devices (PDs), there is a research gap about developing the probabilistic scenario-based optimization methods. This paper proposes a novel stochastic scenario-based reliability evaluation method for optimal allocation of smart grids' PDs and DGs. The scenario reduction is applied using the k-means algorithm and modified system state, including the clusters of renewable-based DGs. The malfunction of PDs is concerned, which is one of the most important contributions of the introduced method. The introduced clustering-based reliability evaluation method is applied to IEEE 33-bus test system. Test results infer that around 10% inaccuracy occurs in deterministic approaches without considering uncertainties of DGs and PDs. Obtained test results also imply that the impacts of renewable DGs' uncertainties are more considerable than eventual malfunctions of PDs. The MC S-based methods are used to verify the precision of the introduced method. Moreover, by comparing the introduced method with other available analytical methods, it is shown that the obtained results are 1.2% more precise than current analytical ones.
机译:由于系统不确定性,智能电网可靠性显着影响。虽然已经致力于开发蒙特卡罗模拟(MCS)的巨大努力,但基于可靠性的最优分配分布式发电(DGS)和保护装置(PDS)的基于概率和保护装置(PDS),但是关于开发概率的情况的基于概率的研究差距优化方法。本文提出了一种新的基于随机情景的可靠性评估方法,用于最优分配智能电网和DGS。使用K-Means算法和修改系统状态应用方案减少,包括可再生基于可再生DG的群集。 PDS的故障涉及,这是介绍方法最重要的贡献之一。引入的基于聚类的可靠性评估方法应用于IEEE 33总线测试系统。测试结果推断,在不考虑DGS和PDS的不确定性的情况下,在确定性方法中发生大约10%的不准确性。获得的测试结果也意味着可再生DGS的不确定性的影响比PDS的最终故障更为可观。基于MC S的方法用于验证引入方法的精度。此外,通过将介绍的方法与其他可用的分析方法进行比较,表明所得结果比目前的分析仪更精确为1.2%。

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