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Big data driven Lithium-ion battery modeling method: a Cyber-Physical System approach

机译:大数据驱动的锂离子电池建模方法:网络物理系统方法

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摘要

Batteries are the bottleneck technology of electric vehicles (EV), which host complex and hardly observable internal chemical reactions. Therefore, a precise mathematical model is crucial for the battery management system (BMS) to ensure the secure and stable operation of the battery. Aiming at achieving a flexible, self-configuring, reliable BMS, this paper mainly focuses on the following research points: Firstly, a Cloud-based BMS (C-BMS) is established based on the Cyber-Physical system (CPS), and the conjunction working mode between the C-BMS and the BMS in vehicles (V-BMS) is also proposed. Then, we make the first attempt to apply the Deep Belief Network-Back Propagation (DBN-BP) algorithm to battery modeling issues. The idea is to fully excavate the hidden features in battery big data. Using the battery data extracted from electric buses, the effectiveness and accuracy of the model are validated. The error of the estimated battery terminal voltage is within 2.5%.
机译:电池是电动汽车(EV)的瓶颈技术,它承载着复杂且几乎无法观察到的内部化学反应。因此,精确的数学模型对于电池管理系统(BMS)至关重要,以确保电池安全稳定地运行。为了实现一种灵活的,可自我配置的,可靠的BMS,本文主要研究以下方面:首先,基于网络物理系统(CPS)建立基于云的BMS(C-BMS),并且还提出了车辆中C-BMS和BMS之间的联合工作模式(V-BMS)。然后,我们首次尝试将深度信念网络反向传播(DBN-BP)算法应用于电池建模问题。这个想法是要充分挖掘电池大数据中的隐藏功能。使用从电动公交车提取的电池数据,验证了模型的有效性和准确性。估计的电池端子电压的误差在2.5%以内。

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