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Deep heterogeneous GRU model for predictive analytics in smart manufacturing: Application to tool wear prediction

机译:智能制造中预测分析的深度异质GRU模型:刀具磨损预测的应用

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摘要

Smart manufacturing arises the growing demand for predictive analytics to forecast the deterioration and reliability of equipment. Many machine learning algorithms, especially deep learning, have been investigated for the above tasks. However, long-term prediction is still considered as a challenging issue. To address this problem, this paper presents a hybrid prediction scheme accomplished by a newly developed deep heterogeneous GRU model, along with local feature extraction. Specifically, to capture the temporal pattern hidden in the sequential input, a local feature extraction method is designed by integrating expertise knowledge into the deep learning model for enhanced feature learning. Next, an intermediate layer is designed in the deep heterogeneous GRU model structure to capture the inherent relation for long-term prediction. The proposed model is optimized by systematic feature engineering and optimal hyperparameter searching. Finally, experimental studies on tool wear test are performed to validate the superiority of the presented model over conventional approaches. (C) 2019 Elsevier B.V. All rights reserved.
机译:智能制造旨在对预测分析的需求不断增长,以预测设备的恶化和可靠性。许多机器学习算法,尤其是深度学习,已经调查了上述任务。然而,长期预测仍被认为是一个具有挑战性的问题。为了解决这个问题,本文提出了一种通过新开发的深异形GRU模型完成的混合预测方案,以及局部特征提取。具体地,为了捕获隐藏在顺序输入中的时间模式,通过将专业知识集成到增强特征学习的深度学习模型中,设计了本地特征提取方法。接下来,在深度异构的GRU模型结构中设计中间层以捕获用于长期预测的固有关系。所提出的模型由系统特征工程和最优覆盖物搜索进行了优化。最后,进行了对刀具磨损试验的实验研究,以验证所呈现的模型的优越性。 (c)2019年Elsevier B.V.保留所有权利。

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