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首页> 外文期刊>International journal of machine learning and cybernetics >State of health prediction for lithium-ion batteries using multiple- view feature fusion and support vector regression ensemble
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State of health prediction for lithium-ion batteries using multiple- view feature fusion and support vector regression ensemble

机译:使用多视图特征融合和支持向量回归集合的锂离子电池健康预测状态

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摘要

Lithium-ion batteries have been widely used in many electronic systems. Accurately estimating the state of health (SOH) of a lithium-ion battery is important for ensuring its safety and reliability. Among the various kinds of methods for predicting the SOH of lithium-ion batteries, machine-learning-based methods are the most popular. However, two common critical problems in machine-learning-based methods are extracting discriminative features and effectively utilizing the extracted features. In this study, we focused on solving these two issues. First, a sliding-window-based feature extraction technology (SWBFE) was designed to effectively extract features from different views in the discharge process of lithium-ion batteries. Second, we developed a multiple-view feature fusion with a support vector regression (SVR) ensemble strategy (MVFF-ESVR) for enhancing the performance in fusing multiple extracted features. The basic idea of MVFF-ESVR is to transform the feature-level fusion problem into a decision-level fusion problem. More specifically, for each feature, an SVR was modeled on the corresponding training set, and the AdaBoost and Stacking algorithms were utilized to incorporate multiple trained SVRs for generating two ensemble SVR models. By combining SWBFE with MVFF-ESVR, we further implemented two predictors, namely, Ada-TargetSOH and Sta-TargetSOH, for robust prediction of lithium-ion battery SOH. To evaluate the efficacy of the proposed predictors, we applied Ada-TargetSOH and Sta-TargetSOH on three types of lithium-ion battery datasets. The experimental results have demonstrated that our predictors outperform other existing lithium-ion battery SOH predictors.
机译:锂离子电池已广泛应用于许多电子系统。准确估计锂离子电池的健康状况(SOH)对于确保其安全性和可靠性非常重要。在预测锂离子电池的SOH的各种方法中,基于机器学习的方法是最受欢迎的。然而,基于机器学习的方法中的两个共同的关键问题是提取鉴别特征,有效地利用提取的特征。在这项研究中,我们专注于解决这两个问题。首先,设计了一种基于滑动窗口的特征提取技术(SWBFE),以有效地提取锂离子电池的放电过程中的不同视图的特征。其次,我们开发了一种具有支持向量回归(SVR)集合策略(MVFF-ESVR)的多视图功能融合,用于增强融合多个提取功能的性能。 MVFF-ESVR的基本思想是将特征级融合问题转换为决策级融合问题。更具体地,对于每个特征,SVR在相应的训练集上进行建模,并且使用ADABOST和堆叠算法包含用于生成两个集合SVR模型的多个训练的SVR。通过将SWBFE与MVFF-ESVR组合,我们进一步实现了两种预测因子,即ADA-TargetSOH和STA-TargetSOH,用于稳健预测锂离子电池SOH。为了评估所提出的预测因子的功效,我们在三种类型的锂离子电池数据集上应用ADA-TargetSOH和STA-TargetSOH。实验结果表明,我们的预测变量优于其他现有的锂离子电池SOH预测因子。

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  • 作者单位

    State Grid Shandong Elect Power CO Informat & Commun Branch Jinan 250001 Shandong Peoples R China;

    State Grid Shandong Elect Power CO Informat & Commun Branch Jinan 250001 Shandong Peoples R China;

    State Grid Shandong Elect Power CO Informat & Commun Branch Jinan 250001 Shandong Peoples R China;

    State Grid Shandong Elect Power CO Informat & Commun Branch Jinan 250001 Shandong Peoples R China;

    State Grid Shandong Elect Power CO Informat & Commun Branch Jinan 250001 Shandong Peoples R China;

    State Grid Shandong Elect Power CO Informat & Commun Branch Jinan 250001 Shandong Peoples R China;

    NARI Grp Corp State Grid Elect Power Res Inst Nanjing 210003 Jiangsu Peoples R China;

    State Grid Shandong Elect Power CO Informat & Commun Branch Jinan 250001 Shandong Peoples R China;

    Jiangsu Univ Sci & Technol Sch Comp Zhenjiang 212003 Jiangsu Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    State of health; Lithium-ion batteries; Sliding window; Multiple-view feature fusion; Ensemble learning; Support vector regression;

    机译:健康状况;锂离子电池;滑动窗口;多视图特征融合;集合学习;支持矢量回归;

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