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Optimal probabilistic scenario‐based operation and scheduling of prosumer microgrids considering uncertainties of renewable energy sources

机译:考虑可再生能源的不确定性,最佳基于概率的场景的操作和调度,考虑可再生能源的不确定性

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Uncertainties of renewable energy sources (RESs) such as wind turbine (WT) and photovoltaic (PV) units are one of the considerable challenges of prosumer microgrids (PMGs) for the optimal day‐ahead operation. In this study, a new probabilistic scenario‐based method of optimal scheduling and operation of PMGs is developed. In this regard, different scenarios are generated using Monte Carlo Simulations (MCS). Furthermore, k‐means, k‐medoids, and differential evolution algorithms (DEA) are deployed to cluster the scenarios in the proposed method. A realistic commercial PMG in Iran is selected to apply the introduced method. The validity of the developed probabilistic optimization method for PMG operation is examined by comparing the results under various scenario reduction algorithms and MCS ones. The comparison of the obtained results and those of other existing deterministic methods highlights the advantages of the presented method. Furthermore, the sensitivity analyses are carried out to investigate the robustness of the developed method against the increase in the system uncertainty level. According to the test results, it is concluded that the k‐medoids algorithm has the best performance in comparison with the k‐means and the DEA‐based clustering under various conditions.
机译:可再生能源(RESS)的不确定性,如风力涡轮机(WT)和光伏(PV)单元是用于最佳日落操作的法令微电网(PMGS)的相当大挑战之一。在本研究中,开发了一种新的概率性方案的最佳调度和PMG的操作方法。在这方面,使用蒙特卡罗模拟(MCS)生成不同的场景。此外,k-means,k-myoids和差分演进算法(dea)部署以在所提出的方法中聚类方案。选择伊朗的一个现实的商业PMG以应用介绍的方法。通过比较各种场景减少算法和MCS算法下的结果来检查对PMG操作的发达的PMG操作的概率优化方法的有效性。所获得的结果的比较和其他现有的确定性方法的比较突出了所提出的方法的优点。此外,进行敏感性分析,以研究开发方法对系统不确定性水平的增加的鲁棒性。根据测试结果,得出结论,K-METOIDS算法与在各种条件下的K-Means和基于DEA的聚类相比具有最佳性能。

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