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One-shot parameter identification of the Thevenin's model for batteries: Methods and validation'

机译:「电池型号的单拍参数识别:方法和验证“

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摘要

Parameter estimation is of foundational importance for various model-based battery management tasks, including charging control, state-of-charge estimation and aging assessment. However, it remains a challenging issue as the existing methods generally depend on cumbersome and time-consuming procedures to extract battery parameters from data. Departing from the literature, this paper sets the unique aim of identifying all the parameters offline in a one-shot procedure, including the resistance and capacitance parameters and the parameters in the parameterized function mapping from the state-of-charge to the open-circuit voltage. Considering the well-known Thevenin's battery model, the study begins with the parameter identifiability analysis, showing that all the parameters are locally identifiable. Then, it formulates the parameter identification problem in a prediction-error-minimization framework. As the non-convexity intrinsic to the problem may lead to physically meaningless estimates, two methods are developed to overcome this issue. The first one is to constrain the parameter search within a reasonable space by setting parameter bounds, and the other adopts regularization of the cost function using prior parameter guess. The proposed identifiability analysis and identification methods are extensively validated through simulations and experiments.
机译:参数估计对于各种基于模型的电池管理任务的基础重要性,包括充电控制,充电状态估计和老化评估。然而,由于现有方法通常取决于繁琐且耗时的程序来从数据中提取电池参数,这仍然是一个具有挑战性的问题。从文献中脱离,本文设置了识别单次过程中离线的所有参数的独特目的,包括电阻和电容参数以及从充电状态到开路的参数化函数映射中的参数电压。考虑到众所周知的近野的电池模型,该研究开始于参数可识别性分析,显示所有参数都是本地可识别的。然后,它在预测误差最小化框架中制定参数识别问题。由于非凸性固有问题可能导致物理上无意义的估计,开发了两种方法来克服这个问题。第一个是通过设置参数界限来限制合理的空间内的参数搜索,另一个使用先前参数猜测来采用成本函数的正则化。所提出的可识别性分析和识别方法通过模拟和实验广泛验证。

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