Variational autoencoder-driven adversarial SVDD for power battery anomaly detection on real industrial data

Joey Chan*, Te Han, Ershun Pan

*此作品的通讯作者

科研成果: 期刊稿件文章同行评审

摘要

Automotive power batteries are integral to the operation of electric vehicles (EVs) and hybrids, playing a critical role in ensuring their safety and performance. Obtaining sufficient high-quality fault data is challenging, and prior data annotation often relies on expert knowledge, which is both costly and prone to errors. Developing a battery condition detection scheme that does not require labeled data remains a persistent challenge for the industry. In recent years, the Deep Support Vector Data Description method, which is not affected by data distribution, has gained significant attention. However, this approach faces the risk of hypersphere collapse. In response, this paper introduces Deep Variational AutoEncoder-Based Support Vector Data Description with Adversarial Learning (DVAA-SVDD), a specialized one-class classification model tailored for power battery anomaly detection. This approach employs a variational autoencoder to regularize the feature distribution of normal samples, preventing hypersphere collapse caused by deterministic outputs. Additionally, adversarial learning is used to incorporate the quality of model generation into anomaly detection. Experiments conducted on a dataset containing 5 million real-world automotive battery operation data points demonstrate that DVAA-SVDD exhibits outstanding performance in vehicle anomaly detection, making it a robust solution for ensuring the reliability and safety of automotive power batteries.

源语言英语
文章编号114267
期刊Journal of Energy Storage
103
DOI
出版状态已出版 - 10 12月 2024

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