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Log-Linear Model for Predicting the Lithium-ion Battery Age Based on Resistance Extraction from Dynamic Aging Profiles

机译:基于动态老化型材的阻力提取预测锂离子电池时效的对数线性模型

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摘要

In this article, we propose a method for extracting, modeling, and predicting the resistance of Lithium-ion batteries directly from the battery dynamic mission profile. While the extraction of the mainly relied on data manipulation and bookkeeping, the modeling and subsequent prediction of the resistance used a log-linear model. It is shown that the estimated log-linear model can be used to create a posterior probability distribution of the age of the battery, given an internal resistance measurement and the state-of-charge (SOC) value at which it was measured. This distribution was used calculate the expected age of the battery, and the expected age was compared to weekly check-ups. At an SOC of 80% a mean absolute error (MAE), between the weekly check-ups and the expected age, of 5.83 weeks [706 full equivalent cycles (FEC)] was achieved. Furthermore, it is shown that by introducing a decision threshold the MAE could be reduced as far as 2.65 weeks (321 FEC). Finally, a method is introduced for handling cases where the SOC was not known exactly.
机译:在本文中,我们提出了一种方法,用于直接从电池动态特派团轮廓提取,建模和预测锂离子电池的电阻。虽然提取主要依赖于数据操纵和簿记,但对电阻的建模和随后预测使用了对数线性模型。结果表明,估计的对数线性模型可用于创造电池时效的后验概率分布,给定内部电阻测量和测量的充电状态(SOC)值。使用该分布计算电池的预期年龄,预期的年龄将与每周检查进行比较。在每周检查和预期年龄之间的平均绝对误差(MAE)的SOC中,在5.83周之间实现了50%,实现了5.83周[706完整等效周期(FEC)]。此外,表明,通过引入决策阈值,MAE可以减少到2.65周(321 FEC)。最后,引入了一种方法,用于处理SOC究竟不知道的情况。

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