A Fault Prediction Model of Adaptive Fuzzy Neural Network for Optimal Membership Function

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Abstract

As an essential and challenging technology of fault prediction and health management(PHM), fault prediction technology has been a research focus in the field of fault diagnosis. However, the current model-based fault prediction technology and data-driven fault prediction technology have some limitations, and it is difficult to effectively apply them in practice. Therefore, this paper combines the advantages of two kinds of fault prediction technology, sets the fault distribution function as the membership function of the adaptive fuzzy neural network based on the full analysis of the fault mechanism. The use of the fault distribution function to highly generalize the law of fault occurrence, and the strong self-learning ability of the neural network can effectively tap the potential fault information of the fault data, thereby using the fault distribution function to fit the fault data, and forming a set of membership functions by presetting a variety of membership functions, so as to expand the applicability of the proposed model in fault prediction. The experimental results show that the fault prediction model proposed in this paper has the advantages of high prediction accuracy, fast convergence speed and good applicability.

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Zhang, B., Zhang, L., Zhang, B., Yang, B., & Zhao, Y. (2020). A Fault Prediction Model of Adaptive Fuzzy Neural Network for Optimal Membership Function. IEEE Access, 8, 101061–101067. https://doi.org/10.1109/ACCESS.2020.2997368

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