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Indirect remaining useful life prognostics for lithium-ion batteries

机译:间接剩余锂离子电池的使用寿命预测

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The capacity is often used as health index(HI) for predicting the remaining useful life (RUL) of a lithium-ion battery. However, it is quite challenging to monitor the capacity of battery on-line. There exist errors of precision and accumulation, which can not be measured in the process of using accurately. In order to solve the problems, discharge voltage and relative parameters are selected as indirect health index, such as time interval of equal discharge voltage. Correlation coefficient method is applied to prove strong relevant between the real capacity and time interval of equal discharge voltage. In this paper, RVM_PF_AR fusion algorithm, which RVM is used to train the degradation tendency of batteries, PF is used to multi-step prognostic and AR is used to forecast the long-term trend, is proposed to estimate the remaining useful life indirectly. Furthermore, B5 from NASA and J9 from a company are used to experiment, showing that the fusion algorithm can predict RUL effectively. Finally, the validity and universality of this algorithm are also proved.
机译:该容量通常用作健康指数(HI),用于预测锂离子电池的剩余使用寿命(RUL)。但是,监控电池容量是非常具有挑战性的。存在精度和累积的误差,可以在准确使用过程中测量。为了解决问题,选择放电电压和相对参数作为间接健康索引,例如等于放电电压的时间间隔。相关系数方法应用于在等放电电压的实际容量和时间间隔之间证明强关系。在本文中,RVM_PF_AR融合算法用于培训电池的降解趋势,PF用于多步预测和AR用于预测长期趋势,建议间接估计剩余的使用寿命。此外,来自公司的NASA和J9的B5用于实验,表明融合算法可以有效地预测RUL。最后,还证明了该算法的有效性和普遍性。

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