Rolling bearing fault diagnosis based on refined composite multi-scale approximate entropy and optimized probabilistic neural network

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Abstract

A rolling bearing early fault diagnosis method is proposed in this paper, which is derived from a refined composite multi-scale approximate entropy (RCMAE) and improved coyote optimization algorithm based probabilistic neural network (ICOA-PNN) algorithm. Rolling bearing early fault diagnosis is a time-sensitive task, which is significant to ensure the reliability and safety of mechanical fault system. At the same time, the early fault features are masked by strong background noise, which also brings difficulties to fault diagnosis. So, we firstly utilize the composite ensemble intrinsic time-scale decomposition with adaptive noise method (CEITDAN) to decompose the signal at different scales, and then the refined composite multi-scale approximate entropy of the first signal component is calculated to analyze the complexity of describing the vibration signal. Afterwards, in order to obtain higher recognition accuracy, the improved coyote optimization algorithm based probabilistic neural network classifiers is employed for pattern recognition. Finally, the feasibility and effectiveness of this method are verified by rolling bearing early fault diagnosis experiment.

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Ma, J., Li, Z., Li, C., Zhan, L., & Zhang, G. Z. (2021). Rolling bearing fault diagnosis based on refined composite multi-scale approximate entropy and optimized probabilistic neural network. Entropy, 23(2), 1–28. https://doi.org/10.3390/e23020259

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