Remaining Useful Life Prediction Considering Operating Condition Change Based on Regression and Empirical Mode Decomposition

H. Lee, Dong Hwan Kim, Tae-Won Noh, Byoung Kuk Lee
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Abstract

This paper proposes remaining useful life prediction method considering the operating conditions and instantaneous noise of the lithium-ion battery. With the change of the operating conditions and instantaneous noise in training data, the regression model cannot accurately predict state of health degradation. Thus, proposed method preprocesses training data by empirical mode decomposition in order to eliminate temporary noise. Moreover, training data reset is performed to extract the latest tendency by excluding the data before the change in operating condition based on regression results. The feasibility of the proposed algorithm was verified through the cycling dataset, and the result shows that the accuracy of the RUL estimation can be improved by proposed method than traditional regression.
基于回归和经验模态分解的考虑工况变化的剩余使用寿命预测
提出了考虑锂离子电池工作条件和瞬时噪声的剩余使用寿命预测方法。由于操作条件的变化和训练数据中的瞬时噪声,回归模型不能准确预测健康退化状态。因此,本文提出的方法通过经验模态分解对训练数据进行预处理,以消除临时噪声。对训练数据进行重置,根据回归结果剔除运行工况变化前的数据,提取最新趋势。通过循环数据集验证了该算法的可行性,结果表明,与传统回归相比,该方法可以提高RUL估计的精度。
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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