Schwendemann Sebastian, Sikora Axel
Institute of Reliable Embedded Systems and Communication Electronics (ivESK), Offenburg University of Applied Sciences, 777652 Offenburg, Germany.
J Imaging. 2023 Feb 4;9(2):34. doi: 10.3390/jimaging9020034.
Deep learning approaches are becoming increasingly important for the estimation of the Remaining Useful Life (RUL) of mechanical elements such as bearings. This paper proposes and evaluates a novel transfer learning-based approach for RUL estimations of different bearing types with small datasets and low sampling rates. The approach is based on an intermediate domain that abstracts features of the bearings based on their fault frequencies. The features are processed by convolutional layers. Finally, the RUL estimation is performed using a Long Short-Term Memory (LSTM) network. The transfer learning relies on a fixed-feature extraction. This novel deep learning approach successfully uses data of a low-frequency range, which is a precondition to use low-cost sensors. It is validated against the IEEE PHM 2012 Data Challenge, where it outperforms the winning approach. The results show its suitability for low-frequency sensor data and for efficient and effective transfer learning between different bearing types.
深度学习方法对于诸如轴承等机械元件的剩余使用寿命(RUL)估计正变得越来越重要。本文提出并评估了一种基于迁移学习的新颖方法,用于在数据集较小且采样率较低的情况下对不同类型轴承的RUL进行估计。该方法基于一个中间域,该中间域根据轴承的故障频率提取其特征。这些特征由卷积层进行处理。最后,使用长短期记忆(LSTM)网络进行RUL估计。迁移学习依赖于固定特征提取。这种新颖的深度学习方法成功地利用了低频范围的数据,这是使用低成本传感器的一个前提条件。它在IEEE PHM 2012数据挑战赛中得到验证,其性能优于获胜方法。结果表明它适用于低频传感器数据,以及在不同类型轴承之间进行高效且有效的迁移学习。