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System identification-based lead-acid battery online monitoring system for electric vehicles

机译:基于系统识别的电动汽车铅酸蓄电池在线监控系统

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A system identification-based model for the online monitoring of batteries for electric vehicles (EVs) is presented. This algorithm uses a combination of battery voltage and current measurements plus battery data sheet information to implement model-based estimation of the stored energy, also referred to as state-of-charge (SOC), and power capability, also referred to as state-of-function (SOF), for deep-cycle batteries. This online monitoring scheme has been implemented for a bank of deep-cycle lead-acid batteries and experimental laboratory tests using simulated driving cycles have yielded promising results. In addition, actual road data from an EV powered by these same batteries has been analyzed with the proposed model to demonstrate the system's usefulness in determining the battery state-of-health (SOH). Finally, the limitation of the use of a linear model for battery terminal voltage behavior is discussed.
机译:提出了一种基于系统识别的电动汽车电池在线监测模型。该算法结合了电池电压和电流测量值以及电池数据表信息来实现基于模型的存储能量估计(也称为荷电状态(SOC))和功率容量(也称为状态估计)功能(SOF),用于深循环电池。该在线监测方案已针对一组深循环铅酸电池实施,并且使用模拟行驶周期进行的实验实验室测试已取得了可喜的结果。此外,已使用建议的模型分析了由这些相同电池供电的电动汽车的实际道路数据,以证明该系统在确定电池健康状态(SOH)方面的有用性。最后,讨论了将线性模型用于电池端子电压行为的局限性。

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