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Parameter identification of an electrochemical lithium-ion battery model with convolutional neural network

机译:基于卷积神经网络的电化学锂离子电池模型参数识别

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Battery is one of the most important energy supplement source for our society. Especially, lithium-ion battery has been actively used in various fields such as mobile devices, electric vehicles, or energy storage system. However, a lithium-ion battery has a few life degradation and safety problems, for example, ignition and explosion. Therefore, it is required to observe the inner states of lithium-ion battery consistently to predict or prevent the problems above. Electrochemical model of lithium-ion battery represents these states thoroughly because it is derived according to the laws of physics. In the electrochemical model, the parameters mean the inner states such as solid particle conductivity, solid particle areas, and solid electrolyte interface layer thickness. In this paper, deep learning algorithm which is a powerful tool to solve complicated problems, is employed to estimate these parameters. Especially, convolutional neural network (CNN) is adopted for low computational burden compared to other deep learning algorithms. The regression results from CNN shows that the parameters could be estimated with relatively high accuracy.
机译:电池是我们社会最重要的能源补充来源之一。尤其是,锂离子电池已经在诸如移动设备,电动车辆或能量存储系统的各种领域中被积极地使用。然而,锂离子电池具有一些寿命降低和安全问题,例如着火和爆炸。因此,需要一致地观察锂离子电池的内部状态以预测或防止上述问题。锂离子电池的电化学模型可以完全根据物理定律来表示这些状态。在电化学模型中,参数表示内部状态,例如固体颗粒的电导率,固体颗粒的面积和固体电解质界面层的厚度。在本文中,深度学习算法是解决复杂问题的有力工具,用于估计这些参数。尤其是,与其他深度学习算法相比,卷积神经网络(CNN)的计算量较低。 CNN的回归结果表明,可以相对较高的精度估算参数。

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