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A Multi-Step Predictive Model to Estimate Li-Ion State of Charge for Higher C-Rates

机译:一种多步步预测模型,以估计升离C速率的锂离子状态

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Energy Storage or battery management systems for Li-ion batteries require accurate prediction of state of charge (SOC). Existing methods predict SOC for a given charging/discharging rate (C-rate) using experimentally obtained values of cell current and voltage. However, in scenarios where there is a lack of such historical data, these methods perform poorly because of inadequate training data. This paper proposes a combinatorial model involving autoregressive integrated moving average (ARIMA) and a nonlinear autoregressive network with exogenous inputs (NARX-net). ARIMA is used to first predict cell current and cell voltage for the desired higher C-rate (C/10) only using the voltage and current from historical, lower C-rates (C/2 to C/8) of an actual 3.7V, 3.5Ah Li-ion battery. The NARX-net is used to predict SOC using the voltage and current values predicted by ARIMA. To train NARX-net, four algorithms are used, and their performance is evaluated by comparing the predicted SOC values with those obtained experimentally for C/10. Results show that the proposed data-driven model is effective at predicting SOC for Li-ion batteries given some preliminary historical data on current and voltage of previous, lower C-rates.
机译:锂离子电池的储能或电池管理系统需要准确地预测充电状态(SOC)。现有方法使用实验获得的电池电流和电压值来预测给定的充电/放电率(C速率)的SOC。但是,在缺乏这样的历史数据的情况下,由于培训数据不足,这些方法表现不佳。本文提出了一种涉及自回归综合移动平均(Arima)的组合模型和外源投入(NARX-NET)的非线性自回归网络。 Arima用于首先使用实际3.7V的电压和电流(C / 2至C / 8)的电压和电流来首先预测所需的较高C速率(C / 10)的电池电流和电池电压,3.5Ah锂离子电池。 narx-net用于使用Arima预测的电压和电流值来预测SOC。为了训练NARX-NET,使用四种算法,通过将预测的SOC值与实验获得的C / 10获得的那些进行比较来评估它们的性能。结果表明,在预测锂离子电池的情况下,所提出的数据驱动模型可有效地预测SOC,但是在上次的电流和电压的一些初步历史数据上,较低的C-rates。

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