Application of fuzzy inference to electric load clustering

W. Zalewski
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引用次数: 9

Abstract

In distribution system, bus load estimation is complicated because system load is usually monitored at only a few points. As a rule receiving nodes are not equipped with stationary measuring instruments so measurements of loads are performed sporadically. In general, the only information commonly available regarding loads, other than major distribution substations and equipment installations, is billing cycle customer kWh consumption. In order to model system uncertainty, inexactness, and random nature of customers' demand, a fuzzy system approach is proposed. This paper presents application possibilities of the fuzzy inference method to the electrical load modeling. Clustering of load profiles in different part of system was used to classify the substations. A regression model, expressing the correlation between a substation peak load and a set of customer features (explanatory variables), existing in the substation population, is determined. Simulation studies have been performed to demonstrate the efficiency of the proposed scheme and an effect of different parameters on its accuracy on the basis of actual data obtained at distribution system substations
模糊推理在电力负荷聚类中的应用
在配电系统中,由于系统负荷监测通常只有几个点,因此母线负荷估计比较复杂。通常,接收节点没有配备固定的测量仪器,因此对负载的测量是零星进行的。一般来说,除了主要配电变电站和设备安装之外,关于负载的唯一可用信息是计费周期客户千瓦时消耗。为了对客户需求的不确定性、不精确性和随机性进行建模,提出了一种模糊系统方法。本文介绍了模糊推理方法在电力负荷建模中的应用可能性。采用系统各部分负荷分布的聚类方法对变电站进行分类。确定了一个回归模型,表示变电站峰值负荷与变电站人口中存在的一组客户特征(解释变量)之间的相关性。通过对配电网变电站实测数据的仿真研究,验证了该方案的有效性和不同参数对其精度的影响
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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