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An adaptive state of charge estimation approach for lithium-ion series- connected battery system

机译:锂离子串联电池系统的自适应充电状态估计方法

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摘要

Due to the incorrect or unknown noise statistics of a battery system and its cell-to-cell variations, state of charge (SOC) estimation of a lithium-ion series-connected battery system is usually inaccurate or even divergent using model-based methods, such as extended Kalman filter (MT) and unscented Kalman filter (UKF). To resolve this problem, an adaptive unscented Kalman filter (AUKF) based on a noise statistics estimator and a model parameter regulator is developed to accurately estimate the SOC of a series-connected battery system. An equivalent circuit model is first built based on the model parameter regulator that illustrates the influence of cell-to-cell variation on the battery system. A noise statistics estimator is then used to attain adaptively the estimated noise statistics for the AUKF when its prior noise statistics are not accurate or exactly Gaussian. The accuracy and effectiveness of the SOC estimation method is validated by comparing the developed AUKF and UKF when model and measurement statistics noises are inaccurate, respectively. Compared with the UKF and EKF, the developed method shows the highest SOC estimation accuracy.
机译:由于电池系统的噪声统计数据不正确或未知以及其电池间变化,使用基于模型的方法对锂离子串联电池系统的荷电状态(SOC)估算通常不准确,甚至发散,例如扩展卡尔曼滤波器(MT)和无味卡尔曼滤波器(UKF)。为了解决这个问题,开发了一种基于噪声统计估计器和模型参数调节器的自适应无味卡尔曼滤波器(AUKF),以准确估计串联电池系统的SOC。首先基于模型参数调节器构建等效电路模型,该模型说明了电池间变化对电池系统的影响。然后,当噪声统计估计器的先验噪声统计信息不准确或恰好是高斯时,可以使用噪声统计估计器自适应地获得AUKF的估计噪声统计信息。当模型和测量统计数据噪声不准确时,通过比较开发的AUKF和UKF验证SOC估计方法的准确性和有效性。与UKF和EKF相比,该方法显示出最高的SOC估计精度。

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