Neural network and physical enable one sensor to estimate the temperature for all cells in the battery pack

Rui Xiong, Xinggang Li,Hailong Li, Baoqiang Zhu, Anders Avelin

JOURNAL OF ENERGY STORAGE(2024)

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摘要
The performance of lithium-ion batteries (LIBs) is sensitive to the operating temperature, and the design and operation of battery thermal management systems reply on accurate information of LIBs' temperature. This study proposes a data -driven model based on neural network (NN) for estimating the temperature profile of a LIB module. Only one temperature measurement is needed for the battery module, which can assure a low cost. The method has been tested for battery modules consisting of prismatic and cylindrical batteries. In general, a good accuracy can be observed that the root mean square error (RMSE) of esitmated temperatures is less than 0.8 C-degrees regardless of the different operating conditions, ambient temperatures, and heat dissipation conditions.
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关键词
Battery energy storage,Lithium-ion battery,Temperature estimation,Neural network,Thermal model
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