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BP Neural Network Model of Lithium-iron Phosphate Battery Based on Step-discharge Current Response

机译:基于阶梯式电流响应的锂铁磷酸盐电池BP神经网络模型

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Li-ion battery is a strongly coupled nonlinear time-varying device and is difficult to establish its deterministic mathematical model for online parameter identification and state estimation for the performance managements of battery. This paper proposes an AI model based on back-propagation neural network (BPNN). The training process is designed and the parameters of the network are determined referring the electrochemical mechanism of the battery. The performances of BPNN model are compared with the mathematical model using the voltage response of step-discharge current of battery. The experiments verify that BPNN model not only predicts the V-I characteristics accurately, but also shows associative and migratory abilities.
机译:锂离子电池是强烈耦合的非线性时变装置,并且难以为电池性能管理的在线参数识别和状态估计来建立其确定性数学模型。本文提出了一种基于反向传播神经网络(BPNN)的AI模型。设计了训练过程,并且网络的参数是指电池的电化学机构。使用电池踩放电电流的电压响应与数学模型进行比较BPNN模型的性能。实验验证了BPNN模型不仅可以准确地预测V-I特征,而且还显示了关联和迁移能力。

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