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Online Identification of Thevenin Equivalent Circuit Model Parameters and Estimation State of Charge of Lithium-Ion Batteries

机译:戴维南等效电路模型参数的在线识别和锂离子电池充电状态估计

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On Electrical and Hybrid Vehicles (EVs, HEVs), energy is stored in accumulators, mainly electro-chemical batteries. A reliable and cost effective management of energy storage system is a key point for the development of such devices, their durability and for vehicle performance optimization. This requires the accurate estimation of the battery state over time and in a wide range of operating conditions. The battery state is usually expressed as State Of Charge (SOC) and State Of Health (SOH). Their estimations requires an accurate model to represent the static and dynamic behaviors of the battery. This paper presents a model adaptive Unscented Kalman Filter (UKF) method to estimate online SOC of Li-ion batteries. The proposed approach uses a Recursive Least Squares method to update the UKF model parameters during a discharge period. The effectiveness of the method has been verified based on real data acquired from five LiFePO4 battery packs installed on a working EV.
机译:在电动和混合动力车辆(EV,HEV)上,能量存储在蓄电池中,主要是电化学电池。储能系统的可靠且经济高效的管理是此类设备开发,耐用性和车辆性能优化的关键。这需要随着时间的推移以及在广泛的工作条件下准确估算电池状态。电池状态通常表示为充电状态(SOC)和健康状态(SOH)。他们的估计需要一个准确的模型来表示电池的静态和动态行为。本文提出了一种模型自适应无味卡尔曼滤波器(UKF)方法来估计锂离子电池的在线SOC。所提出的方法使用递推最小二乘法在放电期间更新UKF模型参数。该方法的有效性已根据从安装在正在运行的电动汽车上的五个LiFePO4电池组获取的真实数据进行了验证。

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