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Fault diagnosis of induction motors utilizing local binary pattern-based texture analysis

机译:基于局部二进制模式纹理分析的异步电动机故障诊断

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Fault diagnosis of induction motors in the practical industrial fields is always a challenging task due to the difficulty that lies in exact identification of fault signatures at various motor operating conditions in the presence of background noise produced by other mechanical subsystems. Several signal processing approaches have been adopted so far to mitigate the effect of this background noise in the acquired sensor signal so that fault-related features can be extracted effectively. Addressing this issue, this paper proposes a new approach for fault diagnosis of induction motors utilizing two-dimensional texture analysis based on local binary patterns (LBPs). Firstly, time domain vibration signals acquired from the operating motor are converted into two-dimensional gray-scale images. Then, discriminating texture features are extracted from these images employing LBP operator. These local feature descriptors are later utilized by multi-class support vector machine to identify faults of induction motors. The efficient texture analysis capability as well as the gray-scale invariance property of the LBP operators enables the proposed system to achieve impressive diagnostic performance even in the presence of high background noise. Comparative analysis reveals that LBP8,1 is the most suitable texture analysis operator for the proposed system due to its perfect classification performance along with the lowest degree of computational complexity.
机译:在实际工业领域中,感应电动机的故障诊断始终是一项艰巨的任务,因为存在以下困难:在存在其他机械子系统产生的背景噪声的情况下,准确识别各种电动机运行条件下的故障特征。迄今为止,已经采用了几种信号处理方法来减轻这种背景噪声在采集的传感器信号中的影响,从而可以有效地提取与故障相关的特征。针对这一问题,本文提出了一种基于局部二进制模式(LBP)的利用二维纹理分析的异步电动机故障诊断的新方法。首先,将从工作电动机获取的时域振动信号转换为二维灰度图像。然后,使用LBP算子从这些图像中提取出区分的纹理特征。这些局部特征描述符随后被多类支持向量机用来识别感应电动机的故障。 LBP运算符的有效纹理分析功能以及灰度不变性使该系统即使在存在高背景噪声的情况下也能实现令人印象深刻的诊断性能。比较分析表明,由于LBP8,1具有完美的分类性能以及最低的计算复杂度,因此它是该系统最适合的纹理分析算子。

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