考虑到特征提取的混合数据驱动框架,用于电池健康状况估计和剩余使用寿命预测

Yuan Chen , Wenxian Duan , Yigang He , Shunli Wang , Carlos Fernandez
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引用次数: 0

摘要

电池寿命预测对电池的安全运行和降低维护成本具有重要意义。本文提出了一种考虑特征提取的混合框架,以实现更准确、更稳定的电池寿命预测性能。通过特征提取,可以得到八个特征,并将其输入寿命预测模型。该混合框架结合了变模分解、多核支持向量回归模型和改进的麻雀搜索算法,分别解决了数据后退、高维特征空间分布不均和局部逃逸能力等问题。通过引入精英混沌对立学习策略和自适应权重优化麻雀搜索算法,获得了更好的估计模型参数。该算法可以提高局部逃逸能力和收敛性能,并找到全局最优。通过美国国家航空航天局的数据集进行比较,结果表明所提出的框架具有更准确、更稳定的预测性能。与其他算法相比,所提算法的 SOH 估计精度提高了 0.16%-1.67%。随着起始点的提前,拟议算法的 RUL 预测精度变化不大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A hybrid data driven framework considering feature extraction for battery state of health estimation and remaining useful life prediction

A hybrid data driven framework considering feature extraction for battery state of health estimation and remaining useful life prediction

Battery life prediction is of great significance to the safe operation, and reduces the maintenance costs. This paper proposes a hybrid framework considering feature extraction to achieve more accurate and stable life prediction performance of the battery. By feature extraction, eight features are obtained to fed into the life prediction model. The hybrid framework combines variational mode decomposition, the multi-kernel support vector regression model and the improved sparrow search algorithm to solve the problem of data backward, uneven distribution of high-dimensional feature space and the local escape ability, respectively. Better parameters of the estimation model are obtained by introducing the elite chaotic opposition-learning strategy and adaptive weights to optimize the sparrow search algorithm. The algorithm can improve the local escape ability and convergence performance and find the global optimum. The comparison is conducted by dataset from National Aeronautics and Space Administration which shows that the proposed framework has a more accurate and stable prediction performance. Compared with other algorithms, the SOH estimation accuracy of the proposed algorithm is improved by 0.16%–1.67%. With the advance of the start point, the RUL prediction accuracy of the proposed algorithm does not change much.

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