Automatic classification of voltage dip root causes via pattern recognition

S. Subhani, M. Gang, J. Cobben
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Abstract

Voltage dips (VDs) contribute significantly to the total annual cost resulting from poor power quality. This power quality disturbance can be induced by several root causes such as short circuits, transformer energizing, or due to the start-up of large electrical loads. The aim of this study was to develop a classifier which is able to automatically identify the probable root cause of a VD based on characteristic features contained within its corresponding RMS voltage curve. To this aim, mathematical functions were fitted through the characteristic section of VD RMS measurements. These measurements were obtained from the real-life distribution network. Subsequently, the coefficients of the fitting functions served as features for supervised pattern recognition schemes. In this study, 4 classifiers were developed and compared. The proposed approaches provided effective identification of VD root causes. Ultimately, effective classification schemes are a preliminary step to automatically localize VD sources.
基于模式识别的电压跌落根源自动分类
由于电能质量差,电压下降(VDs)对年度总成本的贡献很大。这种电能质量扰动可以由几个根本原因引起,如短路、变压器通电或由于大型电气负载的启动。本研究的目的是开发一种分类器,该分类器能够根据其相应的RMS电压曲线中包含的特征特征自动识别VD的可能根本原因。为此,通过VD均方根测量的特征截面拟合数学函数。这些测量数据来自现实生活中的配电网。然后,将拟合函数的系数作为有监督模式识别方案的特征。在本研究中,开发了4种分类器并进行了比较。提出的方法可以有效地识别VD的根本原因。最终,有效的分类方案是自动定位VD源的第一步。
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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