基于人工神经网络的锂离子电池循环寿命预测模型

M. Vatani, P. Vie, O. Ulleberg
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引用次数: 4

摘要

锂离子电池最近被引入,作为固定和移动应用中能量存储问题的关键解决方案。然而,该技术的一个主要限制是老化,即存储容量的退化。这种退化在任何情况下都会发生,无论电池是否使用,但其比例取决于使用情况和外部条件。由于表征老化现象的复杂性,锂离子电池的寿命建模近年来受到研究人员的关注。本文利用人工神经网络建立了两种不同商用锂离子电池的循环寿命预测模型。首先,在不同的测试条件下进行加速循环试验,包括不同的温度、充电状态、放电深度和放电电流。然后,将测试数据用于训练前馈神经网络,该网络可以提前一步预测在不同条件下循环的细胞的健康状态。然后,通过计算神经网络模型输出对每个输入的偏导数,采用灵敏度分析方法研究细胞健康状态对每个输入参数的依赖关系。最后,给出并讨论了整个输入范围内的灵敏度曲线。
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Cycling Lifetime Prediction Model for Lithium-ion Batteries Based on Artificial Neural Networks
Lithium-ion battery is introduced recently as a key solution for energy storage problems both in stationary and mobility applications. However, one main limitation of this technology is the aging, i.e., the degradation of storage capacity. This degradation happens in every condition, whether the battery is used or not, but in different proportions dependent on the usage and external conditions. Due to the complexity of aging phenomena to characterize, lifetime modeling of Li-ion cells attracts the attention of researchers in recent years. This paper develops cycling lifetime prediction models, for two different commercially available Li-ion cells, by using artificial neural networks. First, accelerated cycling tests are performed under different testing conditions, including different temperatures, state of charges, depth of discharges, and discharge current rates. Then, the test data is used to train a feedforward neural network that can predict one-step ahead state of health of the cells that are cycled under different conditions. Thereafter, a sensitivity analysis method is used to investigate the dependence of the state of health of the cells to each input parameter by calculating the partial derivative of the neural network model output with regard to each input. Finally, the sensitivity profile over the whole range of the inputs is provided and discussed.
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