Rolling Element Bearing Degradation Prediction Using Dynamic Model and an Improved Adversarial Domain Adaptation Approach
Simeng Xu,
Chenxing Jiang,
Cangjie Yang
et al.
Abstract:Rolling element bearing degradation prediction is an important issue in rotating machinery. With the rapid development of artificial intelligence, data-driven bearing degradation prediction has aroused extensive attention. However, current methods rely on whole life cycle data, which is quite difficult to acquire in real industrial scenarios. To solve this problem, a rotor-bearing dynamic model is built to generate simulation signals for a range of spall sizes, and an improved domain adversarial neural network… Show more
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