Naguib Mina, Chen Junran, Kollmeyer Phillip, Emadi Ali
McMaster Automotive Resource Center, McMaster University, Hamilton, ON, Canada.
Commun Eng. 2025 Apr 28;4(1):79. doi: 10.1038/s44172-025-00409-2.
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.
随着时间的推移,电池组会出现故障,其中许多故障很难早期检测到。例如,冷却系统堵塞会使温度升高,但在超过保护限值之前可能不会触发警报。这项工作提出了一种基于模型的方法,用于早期检测和识别电池组中的热故障。通过比较测量温度和估计温度,该方法可以识别故障,包括传感器故障、冷却液泵故障和流量堵塞。其核心是一个高精度温度估计模型,该模型将基于物理的热模型与神经网络相结合,在15°C下进行US06放电和6C充电时,均方根误差为0.39°C,最大误差为1°C。在一个72节的风冷电池组上进行测试时,该方法仅使用8个温度传感器,在13至45分钟内就能检测到故障,在11个测试周期中误报率为零。这种方法能够实现早期故障警报,提高电动汽车的可靠性和安全性。