基于独立分量分析和瞬时频率的机械故障诊断

Bagus Tris Atmaja, D. Arifianto
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引用次数: 14

摘要

机器状态监测在工业生产中起着保证生产过程连续性的重要作用。这项工作提出了一种简单而快速的方法,利用机器发出的声音混合来检测同时发生的机械故障。我们开发了一个麦克风阵列作为传感器。通过利用单个信号的独立性,估计信号的混合情况,并比较时域独立分量分析(TDICA)、频域独立分量分析(FDICA)和多级独立分量分析(Multi-stage ICA)。在本研究中,评估了工业中常见的四种故障情况,即正常(作为基准)、不平衡、不对中和轴承故障。结果表明,以信噪比为标准的最佳分离方法是时域ICA。最后,利用瞬时频率技术对分离后的信号进行分析,比谱图更准确地确定频率在特定时间的准确位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machinery fault diagnosis using independent component analysis (ICA) and Instantaneous Frequency (IF)
Machine condition monitoring plays an important role in industry to ensure the continuity of the process. This work presents a simple and yet, fast approach to detect simultaneous machinery faults using sound mixture emitted by machines. We developed a microphone array as the sensor. By exploiting the independency of each individual signal, we estimated the mixture of the signals and compared time-domain independent component analysis (TDICA), frequency-domain independent component analysis (FDICA) and Multi-stage ICA. In this research, four fault conditions commonly occurred in industry were evaluated, namely normal (as baseline), unbalance, misalignment and bearing fault. The results showed that the best separation process by SNR criterion was time-domain ICA. At the final stage, the separated signal was analyzed using Instantaneous Frequency technique to determine the exact location of the frequency at the specific time better than spectrogram.
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