Abstract

The accurate prediction of remaining useful life is a significant issue for ensuring the reliable operation of the system. Considering the dynamic transfer of degenerate state can improve the prediction accuracy and reduce the number of late prediction. Firstly, a time series density peak clustering algorithm suitable for real-time manifold data clustering is proposed. By choosing larger truncation distance at points with high sample density, the cluster centers can be found more accurately. Then, different degradation state patterns according to clustering results can be divided. Moreover, the smoothing parameters can be adaptively updated according to the sample density under different degradation modes and an adaptive kernel density remaining useful life estimation model is established. The test of the gearbox verifies the necessity and accuracy of the proposed model by comparison with the remaining useful life predictions of kernel density estimation without considering degraded state transitions.

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