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State-of-Charge Estimation of the Lithium-Ion Battery Using Neural Network Based on an Improved Thevenin Circuit Model

机译:基于改进的临时电路模型的神经网络,使用神经网络的锂离子电池的充电估计

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This paper focuses on real-time estimation of State of Charge (SOC) in Lithium-Ion battery. Because of the highly complex electrochemical reaction inside the battery the conventional first order battery model is not accurate and cannot respond to the battery's conditions correctly because of the simplicity of the model. So, the neural network (NN) is selected to estimate the SOC dynamically due to its strong nonlinear fitting ability. The NN strategy also was used to implement the parameter identification for the battery model.
机译:本文侧重于锂离子电池中的充电状态(SOC)的实时估计。由于电池内的高度复杂的电化学反应,传统的一阶电池模型不准确,并且由于模型的简单性,因此无法正确地响应电池的条件。因此,选择神经网络(NN)以动态地估计SOC由于其强的非线性拟合能力而动态。 NN策略还用于实现电池模型的参数识别。

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