Deep Learning Pipeline for State-of-Health Classification of Electromagnetic Relays

Lucas Kirschbaum, D. Roman, V. Robu, D. Flynn
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引用次数: 2

Abstract

Industrial-scale component maintenance is shifting towards novel Predictive Maintenance (PdM) strategies supported by Big Data Analytics (BDA). This has resulted in an increased effort to implement Artificial Intelligence (AI) decision making into new maintenance paradigms. The transition of AI into industry faces significant challenges due to the inherent complexities of industrial operations, such as variability in components due to manufacturing, integration, dynamic operating environments and variable loading conditions. Therefore, AI in critical industrial systems requires more advanced capabilities such as robustness, scalability and verifiability. This paper presents the first Deep Learning (DL) based strategy for the classification of the State-Of-Health (SOH) of Electromagnetic Relays (EMR). The DL strategy scales with high-volumes of multivariate time-series data whilst automating labour intensive feature extraction requirements. The method proposed in our paper, combines a Convolutional-Auto-Encoder (CAE) with a Temporal Convolutional Neural Network (TCN), referred to as EMR-SOH CAE- TCN pipeline. Model uncertainty and SOH confidence bounds are approximated by Monte-Carlo dropout. Our pipeline is trained and evaluated on data generated from EMR life-cycle tests. We report a high classification accuracy and discriminatory power of the EMR-SOH classifier. The findings from our paper demonstrate the potential of AI pipelines for maintenance decision making of components in critical applications, providing a transferable AI based PdM solution that scales with large data quantities.
电磁继电器健康状态分类的深度学习管道
工业规模的组件维护正在转向由大数据分析(BDA)支持的新型预测性维护(PdM)策略。这导致了在新的维护范例中实现人工智能(AI)决策的努力增加。由于工业操作固有的复杂性,例如由于制造、集成、动态操作环境和可变负载条件而导致的组件变异性,人工智能向工业的过渡面临着重大挑战。因此,关键工业系统中的人工智能需要更先进的功能,如鲁棒性、可扩展性和可验证性。提出了第一个基于深度学习的电磁继电器健康状态(SOH)分类策略。深度学习策略可用于处理大量多变量时间序列数据,同时自动化劳动密集型特征提取需求。本文提出的方法将卷积自编码器(CAE)与时序卷积神经网络(TCN)相结合,称为EMR-SOH CAE- TCN管道。模型的不确定性和SOH置信区间用蒙特卡罗dropout近似。我们的管道是根据EMR生命周期测试产生的数据进行培训和评估的。我们报告了EMR-SOH分类器的高分类精度和判别能力。本文的研究结果证明了人工智能管道在关键应用中组件维护决策方面的潜力,提供了一种可转移的基于人工智能的PdM解决方案,该解决方案可以根据大数据量进行扩展。
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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