混合最大熵准则无气味卡尔曼滤波稳健SOC估计

Xiaofei Wang, Quan Sun, Liang Chen, Di Mu, R. Liu
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引用次数: 2

摘要

由于非高斯测量噪声的存在,设计稳健的荷电状态估计方法是电池电量管理的关键。原始的unscented卡尔曼滤波(UKF)和基于均方误差(MSE)准则的SOC估计方法仅在具有高斯假设的测量噪声下表现良好。为了提高UKF在非高斯测量噪声下的估计精度,本文提出了一种混合熵UKF来准确估计SOC。该方法以混合相关系数为代价函数(称为最大混合相关系数准则,MMCC)代替原UKF框架中的MSE,其中采用两个不同核宽的高斯核作为核函数,称之为MMCC-UKF。基于电池二阶等效电路模型的数学模型,利用所提出的MMCC-UKF,提出了一种基于模型驱动的鲁棒SOC估计方法。通过数值仿真,验证了基于MMCC-UKF的SOC估计方法在各种非高斯测量噪声下的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mixture Maximum Correntropy Criterion Unscented Kalman Filter for Robust SOC Estimation
Because of the existence of non-Gaussian measurement noises, designing robust estimate method of state of charge (SOC) is pivotal for managing battery power. The original unscented kalman filter(UKF) with the mean square error (MSE) criterion based SOC estimation method only performs well under the measurement noises with Gaussian assumption. To improve the estimation accuracy of the UKF under non-Gaussian measurement noise, this paper proposes a novel UKF with the mixture correntropy to accurately estimate SOC. In the proposed method, the mixture correntropy as a cost function (noted as maximum mixture correntropy criterion, MMCC) is used to substitute the MSE in original UKF framework, in which two Gaussian kernel with different kernel width are utilized as the kernel function, and we called it MMCC-UKF. Based on the mathematical model of the second-order equivalent circuit model of battery, a model-driven based novel robustness SOC estimation method is developed by using the proposed MMCC-UKF. Numerical simulations are performed to test the efficacy of the proposed MMCC-UKF based SOC estimation method under various types of non-Gaussian measurement noises.
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