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Realistic fault detection of li-ion battery via dynamical deep learning

Engineering and Technology

Realistic fault detection of li-ion battery via dynamical deep learning

J. Zhang, Y. Wang, et al.

Revolutionary research conducted by Jingzhao Zhang and colleagues introduces a cutting-edge deep-learning framework for Li-ion battery anomaly detection, significantly cutting inspection costs and enhancing safety. With over 690,000 charging data points analyzed, this groundbreaking work showcases the power of deep learning in addressing complex battery issues while considering social and financial factors.

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~3 min • Beginner • English
Abstract
Accurate evaluation of Li-ion battery (LiB) safety conditions can reduce unexpected cell failures, facilitate battery deployment, and promote low-carbon economies. Despite the recent progress in artificial intelligence, anomaly detection methods are not customized for or validated in realistic battery settings due to the complex failure mechanisms and the lack of real-world testing frameworks with large-scale datasets. Here, we develop a realistic deep-learning framework for electric vehicle (EV) LiB anomaly detection. It features a dynamical autoencoder tailored for dynamical systems and configured by social and financial factors. We test our detection algorithm on released datasets comprising over 690,000 LiB charging snippets from 347 EVs. Our model overcomes the limitations of state-of-the-art fault detection models, including deep learning ones. Moreover, it reduces the expected direct EV battery fault and inspection costs. Our work highlights the potential of deep learning in improving LiB safety and the significance of social and financial information in designing deep learning models.
Publisher
Nature Communications
Published On
Sep 23, 2023
Authors
Jingzhao Zhang, Yanan Wang, Benben Jiang, Haowei He, Shaobo Huang, Chen Wang, Yang Zhang, Xuebing Han, Dongxu Guo, Guannan He, Minggao Ouyang
Tags
Li-ion battery
anomaly detection
deep learning
electric vehicles
safety evaluation
dynamical autoencoder
data analysis
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