A Supervised Approach for Corrective Maintenance Using Spectral Features from Industrial Sounds

Luana Gantert, Matteo Sammarco, Marcin Detyniecki, M. Campista
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引用次数: 10

Abstract

The fourth industrial revolution makes extensive use of IoT, AI, and smart sensors for improved automation, safety, production, and prognostics, and health management. In this paper, we address corrective maintenance based on fault recognition relying on sounds produced by machine components. Different spectral features are extracted from industrial sounds and are used as input of supervised learning algorithms for classification between normal and abnormal operations. Experiments using the MIMII (Malfunctioning Industrial Machine Investigation and Inspection) dataset, which contains sound samples produced by pump, slide rail, valve, and fan components, reveals promising results based on the f1-score. We also evaluate the impact of the different spectral features considered, confirming their incremental impact. Finally, we compare our proposal with a baseline alternative from the literature, which employs unsupervised learning and Mel-spectrogram conversion. Our approach improves the AUC (Area Under the Curve) metric by up to 39.5% compared with the baseline approach.
利用工业声音的频谱特征进行纠正性维修的监督方法
第四次工业革命将广泛使用物联网、人工智能和智能传感器,以改善自动化、安全、生产和预测以及健康管理。在本文中,我们解决了基于故障识别的纠偏维修,这种故障识别依赖于机器部件产生的声音。从工业声音中提取不同的频谱特征,并将其作为监督学习算法的输入,用于正常和异常操作的分类。使用MIMII(故障工业机器调查和检查)数据集进行实验,其中包含泵,滑轨,阀门和风扇组件产生的声音样本,基于f1分数显示了有希望的结果。我们还评估了所考虑的不同光谱特征的影响,确认了它们的增量影响。最后,我们将我们的建议与文献中的基线替代方案进行比较,该方案采用无监督学习和mel -谱图转换。与基线方法相比,我们的方法将AUC(曲线下面积)度量提高了39.5%。
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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