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A novel on-line self-learning state-of-charge estimation of battery management system for hybrid electric vehicle

机译:一种新型的混合动力汽车电池管理系统在线自学习荷电状态估计

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State-of-charge (SOC) estimation is the most difficult problem in battery management system, which is one of the key component of electric vehicle and hybrid electric vehicle. Suffered from the non-zero mean noises in practice, the conventional current integral and Kalman filter estimation methods can not achieve the required accuracy, even causing nonconvergent results. According to the SOC truth value obtained by open-circuit-voltage Vs. SOC curve at each vehicle start time, we deduce a mathematic formula to calculate the mean values of system noises and then a self-learning strategy is proposed to improve the current integral and Kalman filter methods in colored noise environment. The simulation experiment based on a typical battery model verifies the availability and efficiency of proposed strategy.
机译:充电状态(SOC)估计是电池管理系统中最困难的问题,它是电动汽车和混合动力汽车的关键组成部分之一。实际上,由于受到非零均值噪声的影响,传统的电流积分和卡尔曼滤波器估计方法无法达到要求的精度,甚至会导致结果不收敛。根据SOC开路电压Vs获得的真值。在每个车辆起步时间的SOC曲线上,我们推导了一个数学公式来计算系统噪声的平均值,然后提出了一种自学习策略,以改进有色噪声环境下的电流积分和卡尔曼滤波方法。基于典型电池模型的仿真实验验证了所提出策略的可用性和效率。

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