A new domain adaption residual separable convolutional neural network model for cross-domain remaining useful life prediction

ISA Trans. 2024 Feb:145:239-252. doi: 10.1016/j.isatra.2023.11.043. Epub 2023 Dec 3.

Abstract

In order to realize the remaining useful life (RUL) prediction of mechanical equipment under different operating conditions, a domain adaption residual separable convolutional neural network (DRSCN) model is proposed in this paper. In the DRSCN model, instead of the traditional convolutional layer, a residual separable convolutional module is developed to improve the feature extraction ability of the model. Moreover, a multi-kernel maximum mean discrepancy metric function and an adversarial learning mechanism are embedded in the DRSCN model to enhance its ability to resist domain shifts, thus improving the cross-domain RUL prediction accuracy of the model. The effectiveness of the DRSCN model is verified on an aircraft engine dataset. The experimental results show that the proposed model can realize high-accuracy RUL prediction.

Keywords: Adversarial learning mechanism; Cross-domain; Multi-kernel maximum mean discrepancy; Remaining useful life.