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A data-driven model for milling tool remaining useful life prediction with convolutional and stacked LSTM network

机译:用于铣削刀具的数据驱动模型,剩余使用卷积和堆叠LSTM网络的使用寿命预测

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This paper introduces a hybrid model that incorporates a convolutional neural network (CNN) with a stacked bi-directional and uni-directional LSTM (SBULSTM) network, named CNN-SBULSTM, to address sequence data in the task of tool remaining useful life (RUL) prediction. In the CNN-SBULSTM network, CNN is firstly utilized for local feature extraction and dimension reduction. Then SBULSTM network is designed to denoise and encode the temporal information. Finally, multiple fully connected layers are built on the top of the CNN-SBULSTM network to add non-linearity to the output, and one regression layer is utilized to generate the target RUL. The cyber-physical system (CPS) is used to collect the internal controller signals and the external sensor signals during milling process. The proposed hybrid model and several other published methods are applied to the datasets acquired from milling experiments. The comparison and analysis results indicate that the integrated framework is applicable to track the tool wear evolution and predict its RUL with the average prediction accuracy reaching up to 90%. (C) 2020 Elsevier Ltd. All rights reserved.
机译:本文介绍了一种混合模型,它包含一个卷积神经网络(CNN),其中名为CNN-SBulstm的堆积的双向和单向LSTM(SBULSTM)网络,以解决剩余使用寿命的工具任务中的序列数据(RUL ) 预言。在CNN-SBULSTM网络中,首先用于局部特征提取和尺寸减小的CNN。然后SBulstm网络被设计为去代标并编码时间信息。最后,在CNN-SBULSTM网络的顶部内构建了多个完全连接的层,以向输出添加非线性度,并且使用一个回归层来生成目标rul。网络物理系统(CPS)用于在研磨过程中收集内部控制器信号和外部传感器信号。所提出的混合模型和几种其他公开的方法应用于从研磨实验获得的数据集。比较和分析结果表明,综合框架适用于跟踪工具磨损进化,并预测其统治的平均预测精度达到高达90%。 (c)2020 elestvier有限公司保留所有权利。

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