工业物联网应用的预测和可解释机器学习

I. Christou, Nikos Kefalakis, A. Zalonis, J. Soldatos
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引用次数: 17

摘要

预测分析和机器学习(ML)是一些最流行的工业4.0应用的核心,如基于状态的监控、预测性维护和质量管理。为了支持这些用例的实现,研究文献中已经提出并验证了各种ML模型。本文针对工业4.0用例介绍了一套新颖的机器学习算法,即QARMA算法,它能够挖掘定量规则。与传统的机器学习和深度学习机制相比,QARMA模型具有几个优势,包括计算性能、预测准确性和“可解释性”。在本文的范围内,我们根据在两条不同生产线上现场部署和验证QARMA模型的实践经验来讨论这些优势。该部署得到了最先进的工业物联网平台的支持,该平台也在论文中进行了介绍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive and Explainable Machine Learning for Industrial Internet of Things Applications
Predictive Analytics and Machine Learning (ML) are at the heart of some of the most popular Industry 4.0 applications such as condition-based monitoring, predictive maintenance, and quality management. To support the implementation of such use cases, various ML models have been proposed and validated in the research literature. This paper introduces a novel set of machine learning algorithms for Industry4.0 use cases, namely the QARMA algorithms, which are capable of mining of quantitative rules. QARMA models present several advantages when compared to conventional ML and Deep Learning mechanisms, including computational performance, predictive accuracy and "explainability". In the scope of this paper, we discuss these advantages based on practical experiences from the field deployment and validation of QARMA models in two different production lines. The deployment has been supported by a state-of-the-art Industrial Internet of Things platform, which is also presented in the paper.
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