基于门控循环单元和自编码器的复杂制造过程故障预测

Dongting Xu, Zhisheng Zhang, Jinfei Shi
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引用次数: 2

摘要

大的损失是由于复杂的制造过程或生产线的故障造成的。设计高效有效的故障检测和预测算法是降低损失的关键,越来越多的算法依赖于先进的机器学习技术。然而,由于多变量时间序列的高维、极不平衡的类别和非平稳分布,故障检测和预测算法的设计尤其具有挑战性。对于实际复杂制造过程中的多变量时间序列,由于在整个生产过程中始终存在变量的变化,很难确定变量是因变量还是自变量。本文设计了一种结合门控循环单元和自编码器的故障预测方法,以提高不平衡学习的性能。将该失效预测算法应用于实际制浆造纸厂,对生产过程中的破片现象进行检测和预测。结果表明,该方法比其他相关方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Failure Prediction Using Gated Recurrent Unit and Autoencoder in Complex Manufacturing Process
Big loss is caused by the failures in complex manufacturing process or in a production line. The design of the efficient and effective failure detection and prediction algorithms is the key for reducing the loss, and more and more algorithms rely on advanced machine learning technologies. The design of failure detection and prediction algorithms is however particularly challenging due to the high dimensionality, extremely imbalanced classes and the non-stationary distribution of the multivariate time series. For multivariate time series in real complex manufacturing process, it's really hard to decide whether the variable is dependent or independent because there is always variation along the production line. In this study, a novel failure prediction approach which combines gated recurrent unit and autoencoder is designed to improve the performance of imbalanced learning. The failure prediction algorithm is applied in a real pulp and paper mill to detect and predict the sheet break during the production. The results show that the proposed method can perform better than other related work.
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