使用LSTM网络进行机器运行状况监视

Rui Zhao, Jinjiang Wang, Ruqiang Yan, K. Mao
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引用次数: 140

摘要

有效的机器健康监测系统对现代制造系统和工业至关重要。在各种机器健康监测方法中,由于先进的传感和数据分析技术的发展,数据驱动的方法越来越受欢迎。然而,感官数据作为一种序列数据,由于其噪声、长度的变化和采样的不规则性,不能作为机器状态的直接有意义的表征。以前的大多数模型都集中在特征提取/融合方法上,这些方法涉及昂贵的人力和高质量的专家知识。随着近年来深度学习方法的发展,原始数据表示学习被重新定义。在深度学习模型中,长短期记忆网络(LSTMs)能够捕获长期依赖关系并对序列数据进行建模。因此,lstm能够处理机器状态的感官数据。本文首先对基于lstms的机器健康监测系统进行了实证评估。介绍了一种实际的刀具磨损试验。基础lstm和深度lstm设计用于根据原始传感器数据预测实际刀具磨损。实验结果表明,我们的模型,特别是深度lstm,能够优于几种最先进的基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine health monitoring with LSTM networks
Effective machine health monitoring systems are critical to modern manufacturing systems and industries. Among various machine health monitoring approaches, data-driven methods are gaining in popularity due to the development of advanced sensing and data analytic techniques. However, sensory data that is a kind of sequential data can not serve as direct meaningful representations for machine conditions due to its noise, varying length and irregular sampling. A majority of previous models focus on feature extraction/fusion methods that involve expensive human labor and high quality expert knowledge. With the development of deep learning methods in the last few years, representation learning from raw data has been redefined. Among deep learning models, Long Short-Term Memory networks (LSTMs) are able to capture long-term dependencies and model sequential data. Therefore, LSTMs is able to work on the sensory data of machine condition. Here, the first study about a empirical evaluation of LSTMs-based machine health monitoring systems is presented. A real life tool wear test is introduced. Basic and deep LSTMs are designed to predict the actual tool wear based on raw sensory data. The experimental results have shown that our models, especially deep LSTMs, are able to outperform several state-of-arts baseline methods.
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