Study on fault detection using wavelet packet and SOM neural network

Xiaochuang Tao, Zili Wang, Jian Ma, Huanzhen Fan
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引用次数: 10

Abstract

Successful fault detection is based on effective feature exaction and selection processes. Feature map is one of the current fault diagnosis methods. By continuously tracking the trajectories, degradation trend in feature space can be detected. The challenge is how to construct a feature space that can consistently exhibit the degradation pattern. Self Organizing Map (SOM) neural network can map any high-dimensional input into a low-dimensional space, remaining its original topological structure. In this paper, the energy values of different frequency channels of acquired vibration signal are extracted as feature vector by wavelet packets decomposition. SOM based method is proposed to address the problem of feature space construction. Fault detection can be achieved by Minimum Quantization Error calculation (MQE), which can also be transformed into normalized Confidence Value(CV). Finally, the proposed method was also verified to be effective and pragmatic for fault detection via a hydraulic pump test.
基于小波包和SOM神经网络的故障检测研究
成功的故障检测是基于有效的特征提取和选择过程。特征映射是目前常用的故障诊断方法之一。通过连续跟踪轨迹,可以检测到特征空间中的退化趋势。挑战在于如何构建一个能够一致地显示退化模式的特征空间。自组织映射(SOM)神经网络可以将任意高维输入映射到低维空间,同时保持其原有的拓扑结构。本文采用小波包分解的方法提取采集到的振动信号不同频率通道的能量值作为特征向量。提出了一种基于SOM的特征空间构建方法。通过最小量化误差计算(MQE)实现故障检测,并将其转化为归一化置信值(CV)。最后,通过液压泵试验验证了该方法的有效性和实用性。
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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