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ANFIS Microgrid Energy Management System Synthesis by Hyperplane Clustering Supported by Neurofuzzy Min–Max Classifier

机译:Neurofuzzy最小-最大分类器支持的超平面聚类的ANFIS微电网能源管理系统综合

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摘要

A novel energy management system (EMS) synthesis procedure based on adaptive neurofuzzy inference systems (ANFISs) by hyperplane clustering is investigated in this paper. In particular, since it is known that clustering input-output samples in hyperplane space does not consider clusters' separability in the input space, a Min-Max classifier is applied to properly cut and update those hyperplanes defined on scattered clusters in order to refine the ANFIS membership functions. Furthermore, three different clustering techniques have been compared for the ANFIS rule synthesis as well, both with and without considering the classifier support. The procedure under analysis has been applied for designing a microgrid EMS equipped with a photovoltaic generator and an energy storage system (ESS). The EMS is in charge of intelligently defining how to redistribute the prosumer energy balance between the ESS and the connected grid in order to maximize the profit generated by the energy exchange with the grid, assuming a time of use energy price policy. Results on real-world data show very interesting performances, close to optimal values evaluated with a mixed integer linear programming problem formulation by approximately 12%. Moreover, the contribution of the Min-Max classifier improves the EMS performance by approximately 50% with respect to the same algorithm without refining fuzzy rules by the classification step.
机译:本文研究了一种基于超平面聚类的自适应神经模糊推理系统(ANFIS)的新型能量管理系统(EMS)综合程序。特别是,由于已知在超平面空间中对输入-输出样本进行聚类并未考虑输入空间中聚类的可分离性,因此应用了Min-Max分类器来适当地切割和更新在散布的聚类上定义的那些超平面,以优化ANFIS成员资格功能。此外,在考虑和不考虑分类器支持的情况下,还针对ANFIS规则综合比较了三种不同的聚类技术。分析中的过程已用于设计配备有光伏发电机和储能系统(ESS)的微电网EMS。假设使用时间为能源价格政策,EMS负责智能地定义如何在ESS和连接的电网之间重新分配生产者能源平衡,以最大程度地提高与电网进行能量交换所产生的利润。实际数据的结果显示出非常有趣的性能,接近混合整数线性规划问题公式所评估的最佳值约12%。此外,相对于同一算法,Min-Max分类器的贡献将EMS性能提高了大约50%,而无需通过分类步骤来完善模糊规则。

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