Abstract
Abstract
Nowadays, the methods of remaining useful life (RUL) prediction based on deep learning only use single model, or a simple superposition of two models, which makes it difficult for to maintain good generalization performance in various prediction scenarios, and ignores the dynamic sensitivity of features in the prediction, limiting the accuracy. This paper proposes a method of RUL prediction of bearing using fusion network through two-feature cross weighting (FNT-F). First, a fusion network with two subnets is proposed in this paper to adapt to the prediction problem in different scenarios. Meanwhile, a method of cross weighted joint analysis of the two features is proposed to make up for the shortcomings of feature analysis and achieve complementarity between time-domain and time–frequency features.
Funder
Opening Project of Shanxi Key Laboratory of Advanced Manufacturing Technology
Shanxi Basic Research Program
National Natural Science Foundation of China
Patent transformation special plan project
Central government guides local special projects
Subject
Applied Mathematics,Instrumentation,Engineering (miscellaneous)
Cited by
10 articles.
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