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Online learning ANN model for SoC estimation of the Lithium- Ion battery in case of small amount of data for practical applications

机译:实际应用数据少量数据的锂离子电池SOC估计的在线学习ANN模型

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A battery's state of charge (SoC) estimation with accuracy is presented in this paper. Its calculation time is accelerated using online model approach (during operation) with optimal generalization. This novel idea minimizes the initial error of the SoC with the help of artificial neural network (ANN). It is realized by an online learning with offline update parameter estimating model for a battery equivalent circuit. Although degradation of Lithium-Ion (Li-Ion) battery cell is inevitable, accurate estimation of the actual state is needed to extend its life of usage. It is, however, difficult to calculate the parameters by conventional methods, because the parameters are nonlinearly involved in the mathematical notation of the battery impedance and all other variables related with SoC estimation.
机译:本文提出了一种电池的充电状态(SOC)估计。使用在线模型方法(在运行期间)加速其计算时间,具有最佳泛化。在人工神经网络(ANN)的帮助下,这种新颖的想法最小化了SOC的初始错误。它是通过在线学习实现的电池等效电路的离线更新参数估计模型实现。尽管锂离子(锂离子)电池电池的劣化是不可避免的,但需要精确估计实际状态以延长其使用寿命。然而,难以通过传统方法计算参数,因为参数是非线性地涉及电池阻抗的数学符号和与SOC估计相关的所有其他变量。

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