Deep Recurrent Convolutional Neural Network for Remaining Useful Life Prediction

Meng Ma, Z. Mao
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引用次数: 16

Abstract

Remaining Useful Life (RUL) prediction of rotating machinery plays a critical role in Prognostics and Health Management (PHM). Data-driven methods for RUL estimation have been widely developed because they don’t depend on much prior knowledge of the system. Recurrent neural network (RNN) is capable of modeling sequential data, which has been investigated for RUL prediction with statistical features of vibration signals in time domain and frequency domain. The drawback of utilizing statistical features is the ignorance of time-frequency information, which is critical in RUL prediction because the vibration signals are non-stationary when the fault occurs. To solve this problem, a novel deep architecture, named deep recurrent convolutional neural network (DRCNN) is proposed. By incorporating convolutional operation in the process of state transition of RNN, the spatial information in time-frequency domain can be automatically learned from the vibration signals, which contributes to the improvement of prediction performance. With convolutional operation in RNN, both spatial information in time-frequency domain and previous information are employed for RUL prediction. Furthermore, by stacking recurrent convolutional neural network layer by layer, the deep architecture can learn high-level features in the time-frequency domain. Finally, experimental analysis of RUL prediction using vibration signals of run-to-failure tests are carried out. Compared with the results of conventional deep RNN method, the proposed method shows its effectiveness and superiority.
基于深度循环卷积神经网络的剩余使用寿命预测
旋转机械剩余使用寿命(RUL)预测在预测和健康管理(PHM)中起着至关重要的作用。RUL估计的数据驱动方法已经得到了广泛的发展,因为它们不依赖于太多的系统先验知识。递归神经网络(RNN)具有对序列数据建模的能力,研究了利用振动信号在时域和频域的统计特征进行RUL预测。利用统计特征的缺点是忽略了时频信息,这在故障发生时振动信号是非平稳的,因此在RUL预测中至关重要。为了解决这一问题,提出了一种新的深度结构——深度递归卷积神经网络(DRCNN)。通过在RNN的状态转移过程中加入卷积运算,可以自动从振动信号中学习到时频域的空间信息,从而提高了预测性能。在RNN中进行卷积运算,同时利用时频域的空间信息和先验信息进行RUL预测。此外,通过逐层叠加递归卷积神经网络,深层结构可以在时频域学习高级特征。最后,对利用运行到失效试验的振动信号进行RUL预测的实验分析。与传统深度RNN方法的结果进行比较,表明了该方法的有效性和优越性。
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