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A multiscale framework with extended Kalman filter for lithium-ion battery SOC and capacity estimation

机译:具有扩展卡尔曼滤波器的多尺度框架,用于锂离子电池SOC和容量估计

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摘要

State-of-charge (SOC) and capacity estimation plays an essential role in many battery-powered applications, such as electric vehicle (EV) and hybrid electric vehicle (HEV). However, commonly used joint/dual extended Kalman filter (EKF) suffers from the lack of accuracy in the capacity estimation since (i) the cell voltage is the only measurable data for the SOC and capacity estimation and updates and (ii) the capacity is very weakly linked to the cell voltage. The lack of accuracy in the capacity estimation may further reduce the accuracy in the SOC estimation due to the strong dependency of the SOC on the capacity. Furthermore, although the capacity is a slowly time-varying quantity that indicates cell state-of-health (SOH), the capacity estimation is generally performed on the same time-scale as the quickly time-varying SOC, resulting in high computational complexity. To resolve these difficulties, this paper proposes a multiscale framework with EKF for SOC and capacity estimation. The proposed framework comprises two ideas: (i) a multiscale framework to estimate SOC and capacity that exhibit time-scale separation and (ii) a state projection scheme for accurate and stable capacity estimation. Simulation results with synthetic data based on a valid cell dynamic model suggest that the proposed framework, as a hybrid of coulomb counting and adaptive filtering techniques, achieves higher accuracy and efficiency than joint/dual EKF. Results of the cycle test on Lithium-ion prismatic cells further verify the effectiveness of our framework.
机译:充电状态(SOC)和容量估算在许多由电池供电的应用中起着至关重要的作用,例如电动汽车(EV)和混合电动汽车(HEV)。但是,常用的联合/双重扩展卡尔曼滤波器(EKF)缺乏容量估算的准确性,因为(i)电池电压是SOC和容量估算与更新的唯一可测量数据,并且(ii)容量是与电池电压的连接非常弱。由于SOC对容量的强烈依赖性,容量估计中的准确性的缺乏会进一步降低SOC估计中的准确性。此外,尽管容量是指示细胞健康状态(SOH)的缓慢的时变量,但是容量估计通常在与快速时变SOC相同的时间尺度上执行,导致较高的计算复杂性。为了解决这些困难,本文提出了一种采用EKF的SOC和容量估计的多尺度框架。所提出的框架包括两个想法:(i)用于估计表现出时间尺度分离的SOC和容量的多尺度框架,以及(ii)用于准确和稳定的容量估计的状态投影方案。基于有效细胞动力学模型的合成数据的仿真结果表明,作为库仑计数和自适应滤波技术的混合,所提出的框架比联合/双重EKF具有更高的准确性和效率。锂离子棱柱形电池循环测试的结果进一步证明了我们框架的有效性。

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