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Data-driven prognosis method using hybrid deep recurrent neural network

机译:使用混合深复发神经网络的数据驱动预后方法

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Prognostics and health management (PHM) has attracted increasing attention in modern manufacturing systems to achieve accurate predictive maintenance that reduces production downtime and enhances system safety. Remaining useful life (RUL) prediction plays a crucial role in PHM by providing direct evidence for a cost-effective maintenance decision. With the advances in sensing and communication technologies, data-driven approaches have achieved remarkable progress in machine prognostics. This paper develops a novel data-driven approach to precisely estimate the remaining useful life of machines using a hybrid deep recurrent neural network (RNN). The long short-term memory (LSTM) layers and classical neural networks are combined in the deep structure to capture the temporal information from the sequential data. The sequential sensory data from multiple sensors data can be fused and directly used as input of the model. The extraction of handcrafted features that relies heavily on prior knowledge and domain expertise as required by traditional approaches is avoided. The dropout technique and decaying learning rate are adopted in the training process of the hybrid deep RNN structure to increase the learning efficiency. A comprehensive experimental study on a widely used prognosis dataset is carried out to show the outstanding effectiveness and superior performance of the proposed approach in RUL prediction. (C) 2020 Elsevier B.V. All rights reserved.
机译:预测和健康管理(PHM)在现代制造系统中引起了越来越多的关注,以实现准确的预测性维护,从而降低生产停机时间并增强系统安全性。剩余的使用寿命(RUL)预测通过提供具有成本效益的维护决策的直接证据在PHM中发挥着至关重要的作用。随着传感和通信技术的进步,数据驱动方法在机器预测中取得了显着进展。本文开发了一种新的数据驱动方法,精确地估计了使用混合深复发神经网络(RNN)的剩余机器使用寿命。长短期存储器(LSTM)层和经典神经网络在深度结构中组合以捕获来自顺序数据的时间信息。来自多个传感器数据的顺序感官数据可以融合并直接用作模型的输入。避免了依赖于传统方法所要求的现有知识和域专业知识的手工制作功能的提取。混合深RNN结构的训练过程采用了辍学技术和衰减学习率,以提高学习效率。对广泛使用的预后数据集进行了全面的实验研究,以显示RUL预测中所提出的方法的突出效果和优越性。 (c)2020 Elsevier B.V.保留所有权利。

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