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Design of adaptive H filter for implementing on state-of-charge estimation based on battery state-of-charge-varying modelling

机译:基于电池充电状态变化模型的充电状态估计的自适应 H 滤波器设计

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摘要

This study suggests a new method for modelling lithium-ion battery types and state-of-charge (SOC) estimation using adaptive filter (AHF). First, a universal linear model with some free parameters is considered for dynamical behaviour of the battery. The battery voltage and SOC are used as states of the model. Then for every period in the charge/discharge process the free parameters of the model are identified. Each period of process is associated with a specific SOC value, hence the parameters can be regarded as functions of SOC in the entire process. The functions are determined based on polynomial approximation and least squares method. The proposed SOC-varying model is incorporated in AHF for SOC estimation. Moreover, a new method for adjusting the tuning parameters of the filter is suggested. The proposed method is verified by experimental tests on a lithium-ion battery and is compared with adaptive extended Kalman filter and square-root unscented Kalman filter.
机译:这项研究提出了一种使用自适应滤波器(AHF)建模锂离子电池类型和充电状态(SOC)估计的新方法。首先,考虑具有一些自由参数的通用线性模型的电池动力学行为。电池电压和SOC用作模型的状态。然后,对于充电/放电过程中的每个周期,都会确定模型的自由参数。每个过程周期都与一个特定的SOC值相关联,因此可以将参数视为整个过程中SOC的函数。这些函数是基于多项式逼近和最小二乘法确定的。所提出的SOC变化模型被并入AHF以进行SOC估计。此外,提出了一种调整滤波器调谐参数的新方法。通过在锂离子电池上的实验测试验证了该方法,并与自适应扩展卡尔曼滤波器和平方根无味卡尔曼滤波器进行了比较。

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