Novel battery model of an all-electric personal rapid transit vehicle to determine state-of-health through subspace parameter estimation and a Kalman Estimator

C. Gould, C. Bingham, D. Stone, P. Bentley
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引用次数: 28

Abstract

The paper describes a real-time adaptive battery model for use in an all-electric personal rapid transit vehicle. Whilst traditionally, circuit-based models for lead-acid batteries centre on the well-known Randles' model, here the Randles' model is mapped to an equivalent circuit, demonstrating improved modelling capabilities and more accurate estimates of circuit parameters when used in Subspace parameter estimation techniques. Combined with Kalman Estimator algorithms, these techniques are demonstrated to correctly identify and converge on voltages associated with the battery State-of-Charge, overcoming problems such as SoC drift (incurred by coulomb-counting methods due to over-charging or ambient temperature fluctuations). Online monitoring of the degradation of these estimated parameters allows battery ageing (State-of-Health) to be assessed and, in safety-critical systems, cell failure may be predicted in time to avoid inconvenience to passenger networks. Due to the adaptive nature of the proposed methodology, this system can be implemented over a wide range of operating environments, applications and battery topologies.
基于子空间参数估计和卡尔曼估计的新型全电动个人快速交通车辆电池模型
本文介绍了一种用于全电动个人快速交通工具的实时自适应电池模型。传统上,铅酸电池的基于电路的模型以著名的Randles模型为中心,而在这里,Randles模型被映射到等效电路,在子空间参数估计技术中使用时,展示了改进的建模能力和更准确的电路参数估计。结合卡尔曼估计算法,这些技术被证明可以正确识别和收敛与电池充电状态相关的电压,克服诸如SoC漂移(由于过充电或环境温度波动而由库仑计数方法引起)等问题。对这些估计参数的退化进行在线监测,可以评估电池老化(健康状态),并且在安全关键系统中,可以及时预测电池故障,以避免给客运网络带来不便。由于所提出方法的适应性,该系统可以在广泛的操作环境、应用和电池拓扑中实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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