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Total Least Squares State of Charge Estimation for Lithium-Ion Batteries: An Efficient Moving Horizon Estimation Approach

机译:锂离子电池的总最小二乘充电状态估计:一种有效的移动视野估计方法

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This paper proposes a computationally efficient moving horizon approach for total least squares (TLS) battery state of charge (SOC) estimation. Much of the existing SOC estimation literature assumes that uncertainties arise mainly from (i) unmodeled dynamics and (ii) output measurement noise. In contrast, the total least squares (TLS) estimation problem explicitly examines the added noise affecting both output and input measurements. This increases the computational burden associated with TLS estimation by necessitating input trajectory estimation. We address this challenge by exploiting the differential flatness of a temperature-dependent equivalent circuit battery model to improve the computational speed of TLS estimation. Since the model is differentially flat, one can represent its underlying dynamics in terms of the time history of a single flat output . The exploitation of differential flatness improves the computational efficiency of moving horizon estimation (MHE) in two ways: (i) it decreases the number of decision variables significantly and (ii) eliminates battery dynamics-related equality constraints. A simulation study compares the proposed work to a benchmark unscented Kalman filter (UKF), and shows that the proposed flatness-based MHE framework can provide more accurate SOC estimates.
机译:本文针对总最小二乘(TLS)电池充电状态(SOC)估计提出了一种计算有效的移动视界方法。现有的许多SOC估计文献都假设不确定性主要来自(i)未建模的动力学和(ii)输出测量噪声。相反,总最小二乘(TLS)估计问题明确检查了影响输出和输入测量结果的附加噪声。通过需要输入轨迹估计,这增加了与TLS估计相关的计算负担。我们通过利用温度相关的等效电路电池模型的差分平坦度来提高TLS估计的计算速度,从而解决了这一挑战。由于模型是微分平坦的,因此可以根据单个平坦输出的时间历史来表示其基本动力。差分平坦度的利用通过两种方式提高了移动视界估计(MHE)的计算效率:(i)显着减少了决策变量的数量,并且(ii)消除了与电池动力学相关的相等性约束。仿真研究将提出的工作与基准无味卡尔曼滤波器(UKF)进行了比较,结果表明,提出的基于平坦度的MHE框架可以提供更准确的SOC估计。

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