Information fusion with Correlation Coefficient for detecting inter-turn short circuit faults in asynchronous machines

M. Irhoumah, R. Pusca, E. Lefevre, D. Mercier, R. Romary
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引用次数: 4

Abstract

This paper presents a new method giving high efficiency for detecting an inter-turn short-circuit fault in the stator winding of asynchronous machines. For evaluation of the machine state and final decision, the monitoring of the magnetic field variation in the vicinity of an electrical machine is used. The proposed approach is based on the fusion of information extracted from signals delivered by flux sensors placed in different positions around the machine and the calculation of Pearson correlation coefficient. This coefficient allows one to quantify the linear relationship between the signals delivered by two sensors S1 and S2 placed at 180° around the machine in several positions. The proposed approach is non-invasive and relies on the calculation of a correlation coefficient derived from measurements of the external magnetic leakage field for different load working cases. The ability of proposed coefficient to provide useful information about faults is investigated in the paper.
利用相关系数进行信息融合,检测异步机匝间短路故障
本文介绍了一种高效检测异步机定子绕组匝间短路故障的新方法。为了评估机器状态并做出最终决定,采用了监测电机附近磁场变化的方法。所提出的方法基于融合从放置在机器周围不同位置的磁通量传感器发出的信号中提取的信息,并计算皮尔逊相关系数。通过该系数,可以量化放置在机器周围 180°、多个位置的两个传感器 S1 和 S2 所发出信号之间的线性关系。所提出的方法是非侵入式的,依靠的是对不同负载工作情况下的外部漏磁场测量结果计算出的相关系数。本文研究了所提出的系数能否提供有关故障的有用信息。
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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