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Open-Circuit Voltage-Based State of Charge Estimation of Lithium-ion Battery Using Dual Neural Network Fusion Battery Model

机译:基于双神经网络融合电池模型的锂离子电池基于开路电压的充电状态估计

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The OCV (open circuit voltage)-based method for SOC (state of charge) estimation by using the dual neural network fusion battery model is proposed in this paper. The weights of the constructed dual neural network fusion battery model can be used to describe the characteristics of the corresponding parameters of electrochemical model for the battery. The constructed dual neural network fusion battery model consists of two neural network models connected in series. The first part is a linear neural network battery model which can be used to identify parameters of the first-order electrochemical model or second-order electrochemical model for the battery, the second part is a BP (Back of Prorogation) neural network used for capturing the relationship between OCV and SOC. The DST (Dynamic Stress Test) data is adopted for training the dual neural network fusion battery model, by which the relationship between OCV and SOC is offline obtained. Under FUDS (Federal Urban Driving Schedule) condition, the experimental results show that the dual neural network fusion battery model can effectively estimate SOC based on the first-order electrochemical model or second-order electrochemical model. (C) 2015 Elsevier Ltd. All rights reserved.
机译:提出了利用双神经网络融合电池模型的基于OCV(开路电压)的SOC(荷电状态)估计方法。所构建的双神经网络融合电池模型的权重可用于描述电池电化学模型的相应参数的特征。构造的双神经网络融合电池模型由两个串联的神经网络模型组成。第一部分是线性神经网络电池模型,可用于识别电池的一阶电化学模型或二阶电化学模型的参数,第二部分是用于捕获的BP神经网络OCV和SOC之间的关系。采用DST(Dynamic Stress Test,动态应力测试)数据训练双神经网络融合电池模型,从而离线获得OCV和SOC之间的关系。实验结果表明,在FUDS(联邦城市驾驶计划)条件下,双神经网络融合电池模型可以基于一阶电化学模型或二阶电化学模型有效地估算SOC。 (C)2015 Elsevier Ltd.保留所有权利。

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