Exploring ML for Predictive Maintenance Using Imbalance Correction techniques and SHAP

Krish Patel, A. Shanbhag
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引用次数: 1

Abstract

This paper focuses on an application of machine learning in industries - predicting machine failure from sensor data for maintenance purposes. The primary purpose of this paper is to use machine learning models to predict whether a machine is going to fail or function normally. Various machine learning techniques are implemented and evaluated on a synthetic dataset and then a real-world dataset. This method allows a comparison to be drawn between a theoretical approach and real-world application. This paper first introduces the various machine learning (ML) models and describes the datasets. Then, the best performing models are further developed and discussed. Lastly, the models are evaluated quantitatively (using performance metrics) and qualitatively (by Shapley Additive Explanations, SHAP values).
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利用不平衡校正技术和SHAP探索机器学习的预测性维护
本文重点研究机器学习在工业中的应用——从传感器数据预测机器故障以进行维护。本文的主要目的是使用机器学习模型来预测机器是否会发生故障或正常运行。各种机器学习技术在一个合成数据集上实现和评估,然后是一个真实的数据集。这种方法可以在理论方法和实际应用之间进行比较。本文首先介绍了各种机器学习模型,并对数据集进行了描述。然后,进一步开发和讨论了性能最好的模型。最后,对模型进行定量评估(使用性能指标)和定性评估(通过Shapley加性解释,SHAP值)。
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