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A novel approach to reconstruct open circuit voltage for state of charge estimation of lithium ion batteries in electric vehicles

机译:重构电动汽车锂离子电池充电状态开路电压的新方法

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Open circuit voltage (OCV) has a considerable influence on the accuracy of battery state of charge (SOC) estimation. Three efforts have been made to reconstruct OCV for SOC estimation of lithium ion batteries in this study: (1) A new parameter backtracking strategy is proposed for online parameter identification using the recursive least square (RLS) algorithm to obtain stable OCV, which significantly reduces the jitters occurring in OCV identification results. (2) Historical experimental data of lithium ion batteries are used to derive baseline OCV curve and determine constraint boundaries, then an extended Kalman filter (EKF) is employed as a state observer to estimate the SOC for the same types of the batteries that have not been tested. (3) The OCV-SOC curve is reconstructed based on the accumulated online parameter identification and SOC estimation results. The OCV curve can be locally reconstructed even when the accumulated data only cover a partial range of SOC, which is suitable for electric vehicle (EV) operation conditions. Once the OCV curve is reconstructed, the response surface model of OCV-SOC-Capacity is applied to update battery capacity. In this way, the OCV curve can be gradually reconstructed from high SOC to low SOC during battery discharging process. The use of the reconstructed OCV curve to estimate SOC significantly improves the SOC estimation accuracy with the maximum error less than 3% for EV operation conditions.
机译:开路电压(OCV)对电池充电状态(SOC)估计的准确性有很大影响。这项研究为重建锂离子电池SOC估计的OCV进行了三方面的努力:(1)提出了一种新的参数回溯策略,用于使用递归最小二乘(RLS)算法进行在线参数识别,以获得稳定的OCV,从而显着降低OCV识别结果中出现的抖动。 (2)使用锂离子电池的历史实验数据得出基线OCV曲线并确定约束边界,然后使用扩展卡尔曼滤波器(EKF)作为状态观察器,以估算未配备电池的同类电池的SOC。经过测试。 (3)基于累积的在线参数识别和SOC估计结果,重建OCV-SOC曲线。即使累积的数据仅覆盖SOC的部分范围,OCV曲线也可以本地重建,这适用于电动汽车(EV)的运行条件。重建OCV曲线后,将应用OCV-SOC-Capacity的响应面模型来更新电池容量。这样,可以在电池放电过程中将OCV曲线从高SOC逐渐还原为低SOC。使用重建的OCV曲线估算SOC可以显着提高SOC估算精度,对于EV操作条件,最大误差小于3%。

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