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Performance assessment of two adaptive Kalman filters for battery state-of-charge estimation

机译:用于电池充电状态估计的两个自适应卡尔曼滤波器的性能评估

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An accurate state of charge (SOC) is required to improve the reliability, cycle life, safety, and economics of the batteries used in power applications such as electric vehicles and smart grids. The adaptive extended Kalman filter (AEKF) is an advanced technique used to determine the SOC. The first task in estimating the SOC is to choose the initial state covariance (P0) when the process noise covariance (Qk) and the measurement noise covariance (Rk) are simultaneously estimated in the AEKF. The performance of the adaptive methods is also determined by the initial states. This study evaluates the performances of two AEKF approaches, including the Bayesian adaptive estimator (BAE) and the innovation-based adaptive estimator (IAE), which are applied to simultaneously estimate Qk and Rk. These two adaptive filtering methods are implemented on the experimental data of a real lithium-ion battery pack. Their performances, including filtering stability and convergence speed, are compared, and their impact factors are discussed.
机译:需要精确的充电状态(SOC),以提高电力应用(例如电动汽车和智能电网)中使用的电池的可靠性,循环寿命,安全性和经济性。自适应扩展卡尔曼滤波器(AEKF)是用于确定SOC的先进技术。估计SOC的首要任务是,当在AEKF中同时估计过程噪声协方差(Qk)和测量噪声协方差(Rk)时,选择初始状态协方差(P0)。自适应方法的性能还取决于初始状态。这项研究评估了两种AEKF方法的性能,包括贝叶斯自适应估计器(BAE)和基于创新的自适应估计器(IAE),它们可用于同时估计Qk和Rk。这两种自适应滤波方法是在实际锂离子电池组的实验数据上实现的。比较了它们的性能,包括滤波稳定性和收敛速度,并讨论了它们的影响因素。

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