An Industrial Case Study Using Vibration Data and Machine Learning to Predict Asset Health

I. Amihai, R. Gitzel, A. Kotriwala, Diego Pareschi, Subanatarajan Subbiah, Guruprasad Sosale
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引用次数: 35

Abstract

Over the years, there has be considerable progress in using condition monitoring of industrial assets to detect and predict failures. However, there are not many papers using real field data to validate such approaches. Our goal is to provide a proof-of-concept, which shows that the condition of industrial assets can be predicted using machine learning applied to field data from an industrial plant. In this paper, an extensive case study based on vibration monitoring is presented. Data collected from 30 industrial pumps in a chemical plant over a 2.5-year period is used to validate the concept. To do so, metrics derived from vibration data are predicted up to 7 days ahead using the well-established and quick-to-use Random Forest algorithm. The model's performance is benchmarked against a standard persistence technique. We detail the pre-processing steps taken to prepare the data for machine learning. In doing so, insights gained from the challenges that arise when applying machine learning to real-world industrial data are also mentioned. For some failures, we also physically verified their root-causes, which showed that such failures could have been prevented with reliable predictions. Thus, our findings are particularly useful for those interested in the applicability of machine learning in an industrial context.
使用振动数据和机器学习预测资产健康的工业案例研究
多年来,在使用工业资产状态监测来检测和预测故障方面取得了相当大的进展。然而,使用实际现场数据来验证这些方法的论文并不多。我们的目标是提供一个概念验证,这表明可以使用应用于工业工厂现场数据的机器学习来预测工业资产的状况。本文提出了一个基于振动监测的广泛案例研究。在2.5年的时间里,从一家化工厂的30台工业泵收集的数据被用来验证这一概念。为了做到这一点,使用完善且快速使用的随机森林算法,可以提前7天预测从振动数据中得出的指标。模型的性能是根据标准持久性技术进行基准测试的。我们详细介绍了为机器学习准备数据所采取的预处理步骤。在此过程中,还提到了将机器学习应用于现实工业数据时所遇到的挑战。对于一些故障,我们还物理验证了它们的根本原因,这表明这些故障可以通过可靠的预测来预防。因此,我们的发现对于那些对机器学习在工业环境中的适用性感兴趣的人特别有用。
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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