Detecting abnormality of battery decline for unbalanced samples via ensemble learning optimization

IF 8.9 2区 工程技术 Q1 ENERGY & FUELS
Jingcai Du, Caiping Zhang, Shuowei Li, Linjing Zhang, Weige Zhang
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引用次数: 0

Abstract

Aiming at the challenges of one single algorithm's limited performance on unbalanced samples and restricted analysis dimensions in battery risk detection, this paper proposes an early abnormal decline battery diagnosis method based on feature engineering and ensemble learning optimized convolutional neural network (CNN) applicable to unbalanced datasets. Initially, comprehensive dimensionless indicators (DI) are derived from the discharge voltage-capacity (V-Q) data, and the Pearson correlation coefficient (PCC) is then conducted to precisely screen out the optimal DI subset that is highly sensitive to abnormal battery decline. Subsequently, an ensemble CNN-based model for diagnosing abnormal decline batteries is constructed. By integrating the prediction results of multiple CNN models, ensemble learning can leverage the strengths of each model across different categories. It effectively balances the model's ability to recognize both minority and majority classes, thereby enhancing the model's adaptability and generalization when dealing with class-imbalanced data. Ultimately, one single CNN model is adopted as a benchmark to highlight the advantages of the ensemble CNN model in addressing the classification problem posed by class-imbalanced datasets. The proposed method is validated using a class-imbalanced Lithium Cobalt Oxide (LCO) battery dataset. The results demonstrate that the ensemble CNN-based method achieves a 100 % accuracy rate in diagnosing abnormal decline batteries.
通过集合学习优化检测不平衡样本电池电量下降的异常情况
针对电池风险检测中单一算法在不平衡样本上性能有限、分析维度受限等难题,本文提出了一种基于特征工程和集合学习优化卷积神经网络(CNN)的早期异常衰退电池诊断方法,适用于不平衡数据集。首先,从放电电压-容量(V-Q)数据中得出综合无量纲指标(DI),然后通过皮尔逊相关系数(PCC)精确筛选出对电池异常衰退高度敏感的最优无量纲指标子集。随后,构建了一个基于 CNN 的集合模型,用于诊断异常衰退电池。通过整合多个 CNN 模型的预测结果,集合学习可以充分利用每个模型在不同类别中的优势。它有效地平衡了模型识别少数类和多数类的能力,从而增强了模型在处理类不平衡数据时的适应性和泛化能力。最后,以一个单一的 CNN 模型为基准,突出了集合 CNN 模型在解决类别不平衡数据集带来的分类问题方面的优势。使用类不平衡锂钴氧化物(LCO)电池数据集对所提出的方法进行了验证。结果表明,基于集合 CNN 的方法在诊断异常衰退电池方面达到了 100% 的准确率。
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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来源期刊
Journal of energy storage
Journal of energy storage Energy-Renewable Energy, Sustainability and the Environment
CiteScore
11.80
自引率
24.50%
发文量
2262
审稿时长
69 days
期刊介绍: Journal of energy storage focusses on all aspects of energy storage, in particular systems integration, electric grid integration, modelling and analysis, novel energy storage technologies, sizing and management strategies, business models for operation of storage systems and energy storage developments worldwide.
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