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首页> 外文期刊>Energies >Estimation of State of Charge for Two Types of Lithium-Ion Batteries by Nonlinear Predictive Filter for Electric Vehicles
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Estimation of State of Charge for Two Types of Lithium-Ion Batteries by Nonlinear Predictive Filter for Electric Vehicles

机译:用电动汽车的非线性预测滤波器估算两种类型的锂离子电池的充电状态

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摘要

Estimation of state of charge (SOC) is of great importance for lithium-ion (Li-ion) batteries used in electric vehicles. This paper presents a state of charge estimation method using nonlinear predictive filter (NPF) and evaluates the proposed method on the lithium-ion batteries with different chemistries. Contrary to most conventional filters which usually assume a zero mean white Gaussian process noise, the advantage of NPF is that the process noise in NPF is treated as an unknown model error and determined as a part of the solution without any prior assumption, and it can take any statistical distribution form, which improves the estimation accuracy. In consideration of the model accuracy and computational complexity, a first-order equivalent circuit model is applied to characterize the battery behavior. The experimental test is conducted on the LiCoO2 and LiFePO4 battery cells to validate the proposed method. The results show that the NPF method is able to accurately estimate the battery SOC and has good robust performance to the different initial states for both cells. Furthermore, the comparison study between NPF and well-established extended Kalman filter for battery SOC estimation indicates that the proposed NPF method has better estimation accuracy and converges faster.
机译:充电状态(SOC)的估计对于电动汽车中使用的锂离子(Li-ion)电池非常重要。本文提出了一种使用非线性预测滤波器(NPF)的充电状态估计方法,并对不同化学性质的锂离子电池进行了评估。与通常假定零均值高斯白噪声的大多数常规滤波器相反,NPF的优势在于,NPF中的噪声被视为未知模型误差,并被确定为解决方案的一部分,而无需任何先验假设,并且它可以采用任何统计分布形式,可以提高估计的准确性。考虑到模型的准确性和计算复杂性,应用一阶等效电路模型来表征电池性能。在LiCoO 2 和LiFePO 4 电池上进行了实验测试,以验证该方法的有效性。结果表明,NPF方法能够准确估算电池SOC,并且对于两个电池的不同初始状态均具有良好的鲁棒性能。此外,NPF与完善的扩展卡尔曼滤波器用于电池SOC估计的比较研究表明,提出的NPF方法具有更好的估计精度,收敛速度更快。

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