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State of Charge and State of Health Estimation of AGM VRLA Batteries by Employing a Dual Extended Kalman Filter and an ARX Model for Online Parameter Estimation

机译:通过使用双扩展卡尔曼滤波器和ARX模型进行在线参数估计的AGM VRLA电池充电状态和健康状态估计

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State of charge (SOC) and state of health (SOH) are key issues for the application of batteries, especially the absorbent glass mat valve regulated lead-acid (AGM VRLA) type batteries used in the idle stop start systems (ISSs) that are popularly integrated into conventional engine-based vehicles. This is due to the fact that SOC and SOH estimation accuracy is crucial for optimizing battery energy utilization, ensuring safety and extending battery life cycles. The dual extended Kalman filter (DEKF), which provides an elegant and powerful solution, is widely applied in SOC and SOH estimation based on a battery parameter model. However, the battery parameters are strongly dependent on operation conditions such as the SOC, current rate and temperature. In addition, battery parameters change significantly over the life cycle of a battery. As a result, many experimental pretests investigating the effects of the internal and external conditions of a battery on its parameters are required, since the accuracy of state estimation depends on the quality of the information regarding battery parameter changes. In this paper, a novel method for SOC and SOH estimation that combines a DEKF algorithm, which considers hysteresis and diffusion effects, and an auto regressive exogenous (ARX) model for online parameters estimation is proposed. The DEKF provides precise information concerning the battery open circuit voltage (OCV) to the ARX model. Meanwhile, the ARX model continues monitoring parameter variations and supplies information on them to the DEKF. In this way, the estimation accuracy can be maintained despite the changing parameters of a battery. Moreover, online parameter estimation from the ARX model can save the time and effort used for parameter pretests. The validation of the proposed algorithm is given by simulation and experimental results.
机译:充电状态(SOC)和健康状态(SOH)是电池应用的关键问题,尤其是在怠速停止启动系统(ISS)中使用的吸水玻璃垫阀控铅酸(AGM VRLA)型电池。普遍集成到传统的基于引擎的车辆中。这是由于SOC和SOH估算精度对于优化电池能量利用率,确保安全性和延长电池寿命周期至关重要。双扩展卡尔曼滤波器(DEKF)提供了一种优雅而强大的解决方案,已广泛应用于基于电池参数模型的SOC和SOH估计。但是,电池参数在很大程度上取决于工作条件,例如SOC,电流速率和温度。此外,电池参数会在电池的整个生命周期中发生重大变化。结果,由于状态估计的准确性取决于有关电池参数变化的信息的质量,因此需要进行许多实验性的预测试来研究电池的内部和外部条件对其参数的影响。本文提出了一种新的SOC和SOH估计方法,该方法结合了考虑滞后和扩散效应的DEKF算法,以及一种用于参数在线估计的自回归外生(ARX)模型。 DEKF向ARX模型提供有关电池开路电压(OCV)的精确信息。同时,ARX模型继续监视参数变化并将其相关信息提供给DEKF。以这种方式,尽管电池的参数改变,也可以保持估计精度。此外,通过ARX模型进行在线参数估计可以节省用于参数预测试的时间和精力。仿真和实验结果表明了该算法的有效性。

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