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Battery Fault Diagnosis for Electric Vehicles Based on Voltage Abnormality by Combining the Long Short-Term Memory Neural Network and the Equivalent Circuit Model

机译:通过组合长短期内存神经网络和等效电路模型基于电压异常的电动车辆电池故障诊断

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摘要

Battery fault diagnosis is essential for ensuring safe and reliable operation of electric vehicles. In this article, a novel battery fault diagnosis method is presented by combining the long short-term memory recurrent neural network and the equivalent circuit model. The modified adaptive boosting method is utilized to improve diagnosis accuracy, and a prejudging model is employed to reduce computational time and improve diagnosis reliability. Considering the influence of the driver behavior on battery systems, the proposed scheme is able to achieve potential failure risk assessment and accordingly to issue early thermal runaway warning. A large volume of real-world operation data is acquired from the National Monitoring and Management Center for New Energy Vehicles in China to examine its robustness, reliability, and superiority. The verification results show that the proposed method can achieve accurate fault diagnosis for potential battery cell failure and precise locating of thermal runaway cells.
机译:电池故障诊断对于确保电动汽车的安全可靠运行至关重要。在本文中,通过组合长短期内存经常性神经网络和等效电路模型来提出一种新型电池故障诊断方法。改进的自适应升压方法用于提高诊断精度,采用预先限制来降低计算时间并提高诊断可靠性。考虑到驾驶员行为对电池系统的影响,所提出的方案能够实现潜在的失败风险评估,并因此发出早期热失控警告。从中国新能源汽车的国家监测和管理中心获得了大量的现实运营数据,以研究其坚固性,可靠性和优越性。验证结果表明,该方法可以实现准确的故障诊断,潜在电池电池故障和热失控细胞的精确定位。

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