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State-of-charge and state-of-health estimation with state constraints and current sensor bias correction for electrified powertrain vehicle batteries

机译:带有状态约束的充电状态和健康状态估算以及电流传感器偏置校正,用于电动动力总成汽车电池

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摘要

Pragmatic approaches are proposed to enhance battery state estimation using Kalman filter (KF) and extended KF. Notable novelties introduced include: the use of state/parameter constraints, asymmetric equivalent circuit model behaviour, inclusion of nominal models, and current sensor measurement bias estimation and compensation. The so-called delta parameters are estimated to handle cell variations, aging, and online deviation of parameters. Strategic simplifications that enable the use of traditional KF algorithm are described. Unique filter structures are presented for state-of-charge and state-of-health estimation, the latter focuses on capacity and impedance estimation. The performance of the proposed approaches is demonstrated on experimental drive-cycle data designed for electric vehicle (EV) and hybrid EV applications.
机译:提出了实用的方法来增强使用卡尔曼滤波器(KF)和扩展KF的电池状态估计。引入的显着创新包括:使用状态/参数约束,不对称等效电路模型行为,包含标称模型以及电流传感器测量偏置估计和补偿。估计所谓的增量参数以处理细胞变化,老化和参数在线偏差。描述了可以使用传统KF算法的战略简化。提出了用于充电状态和健康状态估计的独特滤波器结构,后者着重于容量和阻抗估计。在为电动汽车(EV)和混合电动汽车应用设计的实验性驾驶循环数据中证明了所提出方法的性能。

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