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An integrated approach for real-time model-based state-of-charge estimation of lithium-ion batteries

机译:一种基于实时模型的锂离子电池充电状态估计的集成方法

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Lithium-ion batteries have been widely adopted in electric vehicles (EVs), and accurate state of charge (SOC) estimation is of paramount importance for the EV battery management system. Though a number of methods have been proposed, the SOC estimation for Lithium-ion batteries, such as LiFePo4 battery, however, faces two key challenges: the flat open circuit voltage (OCV) vs SOC relationship for some SOC ranges and the hysteresis effect. To address these problems, an integrated approach for real-time model-based SOC estimation of Lithium-ion batteries is proposed in this paper. Firstly, an auto-regression model is adopted to reproduce the battery terminal behaviour, combined with a non-linear complementary model to capture the hysteresis effect. The model parameters, including linear parameters and non-linear parameters, are optimized off-line using a hybrid optimization method that combines a meta-heuristic method (i.e., the teaching learning based optimization method) and the least square method. Secondly, using the trained model, two real-time model-based SOC estimation methods are presented, one based on the real-time battery OCV regression model achieved through weighted recursive least square method, and the other based on the state estimation using the extended Kalman filter method (EKF). To tackle the problem caused by the flat OCV-vs-SOC segments when the OCV-based SOC estimation method is adopted, a method combining the coulombic counting and the OCV-based method is proposed. Finally, modelling results and SOC estimation results are presented and analysed using the data collected from LiFePo4 battery cell. The results confirmed the effectiveness of the proposed approach, in particular the joint-EKF method. Crown Copyright (C) 2015 Published by Elsevier B.V. All rights reserved.
机译:锂离子电池已被广泛应用于电动汽车(EV)中,准确的充电状态(SOC)估算对于EV电池管理系统至关重要。尽管已经提出了许多方法,但是锂离子电池(例如LiFePo4电池)的SOC估计面临两个关键挑战:在某些SOC范围内,平坦开路电压(OCV)与SOC的关系以及磁滞效应。为了解决这些问题,本文提出了一种基于模型的锂离子电池实时SOC估计的集成方法。首先,采用自回归模型来再现电池端子的行为,并结合非线性互补模型来捕获滞后效应。使用混合优化方法离线优化包括线性参数和非线性参数的模型参数,该混合优化方法结合了元启发式方法(即基于教学学习的优化方法)和最小二乘法。其次,使用训练后的模型,提出了两种基于实时模型的SOC估计方法,一种是基于通过加权递归最小二乘法实现的实时电池OCV回归模型,另一种是基于扩展的状态估计。卡尔曼滤波方法(EKF)。为解决采用基于OCV的SOC估计方法时OCV-vs-SOC段平坦的问题,提出了一种将库仑计数与基于OCV的方法相结合的方法。最后,使用从LiFePo4电池中收集的数据来介绍和分析建模结果和SOC估计结果。结果证实了该方法的有效性,特别是联合EKF方法。 Crown版权所有(C)2015,Elsevier B.V.保留所有权利。

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