人工神经网络
电池(电)
锂(药物)
断层(地质)
离子
锂离子电池
计算机科学
物理
工程物理
人工智能
心理学
地质学
地震学
热力学
量子力学
功率(物理)
精神科
作者
Mina Naguib,Junran Chen,Phillip J. Kollmeyer,Ali Emadi
标识
DOI:10.1038/s44172-025-00409-2
摘要
Battery packs develop faults over time, many of which are difficult to detect early. For instance, cooling system blockages raises temperatures but may not trigger alerts until protection limits are exceeded. This work presents a model-based method for early thermal fault detection and identification in battery packs. By comparing measured and estimated temperatures, the method identifies faults including failed sensors, coolant pump malfunctions, and flow blockages. The core is a high-accuracy temperature estimation model, integrating a physics-based thermal model with a neural network, achieves a root mean square error of 0.39 °C and a maximum error of 1 °C under a US06 discharge and 6C charge at 15 °C. Tested on a 72-cell air-cooled pack, the method detects faults using only eight temperature sensors within 13 to 45 minutes, with zero false detections in 11 testing cycles. This approach enables early fault alerts, enhancing reliability and safety in electric vehicles.
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