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首页> 外文期刊>IEEE Transactions on Energy Conversion >A Novel Capacity Estimation Approach for Lithium-Ion Batteries Combining Three-Parameter Capacity Fade Model With Constant Current Charging Curves
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A Novel Capacity Estimation Approach for Lithium-Ion Batteries Combining Three-Parameter Capacity Fade Model With Constant Current Charging Curves

机译:三参数容量褪色模型与恒流充电曲线相结合的锂离子电池的一种新型容量估计方法

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摘要

Accurate and reliable capacity estimation for lithium-ion batteries adapting to uncertain environment plays a significant role in the fields of electric vehicles and renewable energy systems. This paper proposes a novel capacity fusion estimation approach based on three-parameter capacity fade model and constant current charging curves using dual unscented Kalman filters. In view of the battery cycle aging problem under variable temperature situation, a three-parameter capacity fade model is introduced to continuously estimate the battery cell capacity for unknown changes of ambient temperature. Nevertheless, the model parameters may mismatch in practical applications, so the first unscented Kalman filter views the discrete capacity based on constant current charging curves as observations to periodically update the parameters. Thereafter, the second one performs a fusion operation depending on the capacity estimated by constant current charging curves and the three-parameter capacity fade model with the corrected parameters, so as to improve the capacity estimation accuracy online. The results show that the fusion estimation errors of capacity are controlled within 2% by updating the model parameters, and the robustness of the proposed method is also validated.
机译:适应不确定环境的锂离子电池的准确和可靠的容量估计在电动车辆和可再生能源系统领域起着重要作用。本文提出了一种基于三参数容量衰落模型的新型容量融合估算方法,使用双重无置的卡尔曼滤波器恒流充电曲线。考虑到在可变温度情况下的电池循环老化问题,引入了三参数容量衰落模型,以连续估计电池电池容量,以实现环境温度未知变化。然而,模型参数可能在实际应用中不匹配,因此第一个Unscented Kalman滤波器基于恒定电流充电曲线的离散容量作为观察到定期更新参数。此后,第二个根据恒流充电曲线的容量和具有校正参数的三参数容量衰落模型的容量执行融合操作,以提高在线的容量估计精度。结果表明,通过更新模型参数,致电容量的融合估计误差在2%内控制,并且还验证了所提出的方法的鲁棒性。

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