Data-driven prognostics for lithium-ion battery based on Gaussian Process Regression

Datong Liu, Jingyue Pang, Jianbao Zhou, Yu Peng
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引用次数: 66

Abstract

Lithium-ion battery is a promising power source for electric vehicles owing to its high specific energy and power. Through monitoring battery health in effective way such as determining the operating conditions, planning replacement interval could increase the reliability and stability of the whole system. However, due to the reliance on integration, errors in terminal measurement caused by noise, resolution, the uncertainty when we make prognostics for battery health are cumulative, the prediction result is combined with unsatisfied errors. As a result, the prognostic algorithms supporting uncertainty representation and management are emphasized. So in this paper, we present the Gaussian process model to realize the prognostics for battery health. Because of the advantages of flexible, probabilistic, nonparametric model with uncertainty predictions, the Gaussian process model can provide variance around its mean predictions to describe associated uncertainty in the evaluation and prediction. To evaluate the proposed prediction approach, we have executed experiments with lithium-ion battery. Experimental results prove its effectiveness and confirm the algorithm can be effectively applied to the battery monitoring and prognostics. Furthermore, the comparison of prediction with different amounts of training data has been achieved, and the dynamic model is introduced to improve the prediction for the battery health.
基于高斯过程回归的锂离子电池数据驱动预测
锂离子电池具有高比能量和高功率的特点,是一种很有前途的电动汽车动力源。通过确定运行工况等有效方式监测电池健康状况,规划更换间隔,可以提高整个系统的可靠性和稳定性。然而,由于依赖积分,在对电池健康状况进行预测时,由于噪声、分辨率、不确定性等因素引起的终端测量误差是累积的,导致预测结果与不满意的误差相结合。因此,强调了支持不确定性表示和管理的预测算法。因此,本文提出了高斯过程模型来实现对电池健康状况的预测。由于高斯过程模型具有不确定性预测的灵活性、概率性和非参数性等优点,高斯过程模型可以提供其均值预测周围的方差来描述评价和预测中相关的不确定性。为了评估所提出的预测方法,我们对锂离子电池进行了实验。实验结果证明了该算法的有效性,验证了该算法可以有效地应用于电池监测与预测。在此基础上,对不同训练数据量下的预测结果进行了比较,并引入了动态模型来改进对电池健康状况的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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