Journal of Computer Applications ›› 2026, Vol. 46 ›› Issue (5): 1614-1623.DOI: 10.11772/j.issn.1001-9081.2025050574

• Frontier and comprehensive applications • Previous Articles    

Prediction-evaluation framework for anomaly detection in electric vehicle lithium-ion battery

Xuechao LIAO1,2(), Rui CHEN1,2   

  1. 1.School of Computer Science and Technology,Wuhan University of Science and Technology,Wuhan Hubei 430065,China
    2.Hubei Province Key Laboratory of Intelligent Information Processing and Real-time Industrial System (Wuhan University of Science and Technology),Wuhan Hubei 430065,China
  • Received:2025-05-28 Revised:2025-08-07 Accepted:2025-08-20 Online:2025-08-28 Published:2026-05-10
  • Contact: Xuechao LIAO
  • About author:CHEN Rui, born in 2001, M. S. candidate. His research interests include fault detection.
  • Supported by:
    National Natural Science Foundation of China(62273264)

电动汽车锂离子电池预测-评估故障检测框架

廖雪超1,2(), 陈睿1,2   

  1. 1.武汉科技大学 计算机科学与技术学院,武汉 430065
    2.智能信息处理与实时工业系统湖北省重点实验室(武汉科技大学),武汉 430065
  • 通讯作者: 廖雪超
  • 作者简介:陈睿(2001—),男,湖北黄冈人,硕士研究生,主要研究方向:故障检测。
  • 基金资助:
    国家自然科学基金资助项目(62273264)

Abstract:

To address the challenges of high complexity in multi-source heterogeneous time-series data, scarcity of anomaly samples, and strong inter-variable dependencies in lithium-ion battery fault detection for electric vehicles, a prediction-evaluation framework based on Dynamic Transformer Memory autoencoder for Anomaly Detection (DTMAD) was proposed to enhance fault identification accuracy and model generalization capability. Firstly, a joint feature encoder was designed by integrating Dynamical autoencoder for Anomaly Detection (DyAD) with Gated Recurrent Unit (GRU) to perform feature fusion and dimensionality reduction on multi-source time-series data, extracting deep cross-modal representations. Simultaneously, a pre-response encoder based on a self-attention mechanism was constructed to capture long-term dependencies in time-series data, enhancing the efficiency and accuracy of feature extraction. Furthermore, a memory parsing module was introduced, which fused predicted path with the actual response path via residual contrastive learning, improving the model's capability to detect anomalous patterns. Secondly, based on the distribution characteristics of reconstruction error, an evaluation model was designed through a collaborative anomaly detection algorithm. Finally, through the comprehensive prediction-evaluation framework, key response patterns were extracted from complex multi-source data, and latent anomalies were identified under unsupervised learning conditions. Experimental results on multi-group and multi-source electric-vehicle lithium-ion battery datasets demonstrate that the proposed framework significantly outperforms baseline methods such as AutoEncoder (AE), Deep Support Vector Data Description (DeepSVDD), and Graph Deviation Network (GDN) in terms of detection accuracy and model robustness. Notably, compared to the DyAD model, the DTMAD model achieves an Area Under the Receiver Operating Characteristic curve (AUROC) of 0.900 8, with result variability reduced from 0.029 to 0.026, indicating superior detection stability and generalization capability.

Key words: lithium-ion battery, fault detection, feature fusion, Variational AutoEncoder (VAE)

摘要:

针对电动汽车锂离子电池故障检测中多源异构时序数据复杂性高、异常样本稀缺及多变量关联性强的挑战,提出一种基于动态变换记忆自编码器的预测-评估故障检测框架(DTMAD),以提升故障识别准确性与模型泛化能力。首先,设计融合动态自编码器(DyAD)与门控循环单元(GRU)的联合特征编码器,对多源时序数据进行特征融合与降维处理,提取跨模态深层特征表示;同时,构建基于自注意力机制的预响应编码器,捕捉时序数据中的长期依赖关系,提升特征提取效率与精度;进一步地,引入记忆解析模块,通过残差对比学习机制融合预测路径与实际响应路径,增强模型对异常模式的检测能力。其次,基于重构误差的分布特性,通过协同异常检测算法设计评估模型。最后,通过综合的预测-评估框架,在无监督学习条件下从多源数据中提取关键响应模式并识别潜在异常。在多组多源电动汽车锂离子电池数据集上的实验结果表明,所提框架的故障检测准确率和模型稳定性均优于对比的编码器(AE)、深度支持向量数据描述(DeepSVDD)与图偏差网络(GDN)等。其中,相较于DyAD模型,DTMAD模型的接收者操作特征曲线下面积(AUROC)提升至0.900 8,且结果波动幅度由0.029降至0.026,展现出更高的检测稳定性与泛化能力。

关键词: 锂离子电池, 故障检测, 特征融合, 变分自编码器

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