A neural network fuzzy energy management strategy for hybrid electric vehicles based on driving cycle recognition

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Abstract

Aiming at the problems inherent in the traditional fuzzy energy management strategy (F-EMS), such as poor adaptive ability and lack of self-learning, a neural network fuzzy energy management strategy (NNF-EMS) for hybrid electric vehicles (HEVs) based on driving cycle recognition (DCR) is designed. The DCR was realized by the method of neural network sample learning and characteristic parameter analysis, and the recognition results were considered as the reference input of the fuzzy controller with further optimization of the membership function, resulting in improvement in the poor pertinence of F-EMS driving cycles. The research results show that the proposed NNF-EMS can realize the adaptive optimization of fuzzy membership function and fuzzy rules under different driving cycles. Therefore, the proposed NNF-EMS has strong robustness and practicability under different driving cycles.

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APA

Zhang, Q., & Fu, X. (2020). A neural network fuzzy energy management strategy for hybrid electric vehicles based on driving cycle recognition. Applied Sciences (Switzerland), 10(2). https://doi.org/10.3390/app10020696

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