基于双通道多尺度深度卷积多尺度深度长短期记忆网络的重载列车车轮剩余使用寿命预测

Yanhui Bai, Honghui Li, Sen Zhao, Ning Zhang
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引用次数: 0

摘要

重载铁路列车车轮运行工况复杂,实时运行状态数据具有多维度和时序性。针对传统深度学习模型在剩余使用寿命(RUL)预测中存在学习能力弱、不能提取不同尺度信息以及梯度爆炸等问题,提出了一种多尺度深度长短期记忆(MDLSTM)网络模型,该模型通过LSTM网络的不同隐层单元数提取不同尺度的时间序列特征。为了在减少原始信息损失的前提下获得更鲁棒的特征,更好地预测车轮的RUL,提出了一种双通道多尺度深度卷积多尺度深度长短期记忆(DC-MDCNN-MDLSTM)方法,该方法将CNN和LSTM相结合,提取不同条件下车轮的多尺度特征,从时间序列数据中提取车轮的不同时间步长特征。利用实际车轮数据进行实验。结果表明,DC-MDCNN-MDLSTM网络模型能够有效地预测车轮退化状态,为重型列车工况下的维修提供技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remaining Useful Life Prediction of Wheel of Heavy-duty Railway Train based on Dual Channel Multi-scale Deep convolution Multi-scale Deep Long Short-Term Memory network
The running conditions of wheels of Heavy-duty Railway Train are complex, and the real-time running state data is Multi-Dimension and Time-Sequence. Aiming at the problems that the traditional deep learning models have weak learning ability, cannot extract different scale information and gradient explosion in the prediction of remaining useful life (RUL), this paper proposes a multi-scale deep long short-term memory (MDLSTM) network model, which extracts time-series features of different scales through different number of hidden layer units of LSTM networks. In order to obtain more robust features under the premise of reducing the loss of original information and better to predict RUL of wheels, A Dual Channel Multi-scale Deep convolutional Multi-scale Deep long short-term memory (DC-MDCNN-MDLSTM) is proposed which combined the CNN and LSTM to extract multi-scale feature of wheels under different conditions and extract the different time step features of wheels from time series data. Using the actual wheels data to experiments. The results show that DC-MDCNN-MDLSTM network model is effective in predicting the degradation state of the wheels and provides technical support for repairing on condition of Heavy- duty Railway Train.
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