State Estimation Method of Lithium-ion Battery Based on Electro-thermal Model and Strong Tracking Particle Filter

Chunyu Wang, N. Cui, Changlong Li
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Abstract

Accurate estimation of battery state is crucial for battery management system. Lithium-ion battery is a complex electrochemical system with coupled electrothermal characteristics and strong nonlinearity. Therefore a state estimation method based on electrothermal model and strong tracking particle filter is proposed in this article. The calorimetric method is employed to realize fast identification for thermal model parameter. By introducing strong tracking filter into particle filter, an estimator based on strong tracking particle filter is proposed to improve the estimation accuracy and tracking capability of saltatory state. The simulation and experiments are conducted to verify the performance of proposed method under dynamic characterization schedules.
基于电热模型和强跟踪粒子滤波的锂离子电池状态估计方法
电池状态的准确估计是电池管理系统的关键。锂离子电池是一个具有耦合电热特性和强非线性的复杂电化学系统。为此,本文提出了一种基于电热模型和强跟踪粒子滤波的状态估计方法。采用量热法实现了热模型参数的快速识别。通过在粒子滤波器中引入强跟踪滤波器,提出了一种基于强跟踪粒子滤波器的估计器,提高了跳跃状态的估计精度和跟踪能力。通过仿真和实验验证了该方法在动态表征计划下的性能。
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