热失控
人工神经网络
锂(药物)
计算机科学
人工智能
电池(电)
热力学
物理
生物
内分泌学
功率(物理)
作者
Seketu Lekoane,Bilainu Oboirien,Naadhira Seedat
标识
DOI:10.1016/j.est.2024.113752
摘要
This paper investigates the electrochemical conditions influencing thermal runaway (TR) in lithium-ion batteries. TR is a critical occurrence marked by an escalation in temperature triggered by exothermic reactions that may lead to fumes, fire, or explosions in lithium-ion batteries. This study develops an artificial neural network (ANN) to predict thermal runaway in a lithium-ion battery pack. Three models were considered: Layer recurrent- NN, Elman- NN, and FF- NN. These models are trained, tested, and verified using data sets obtained from a COMSOL Multiphysics model. The Layer recurrent -NN model is found to perform better because it provided a lower mean squared error (MSE) and root mean squared error (RMSE) of 0.840196 and 0.916622, respectively, because the predicted temperature values are closer to the simulated temperature. Furthermore, the Layer recurrent-NN model was optimised to determine the best network configuration. The optimised configuration consists of 8 hidden neurons , a logistic hidden activation function , and an identity output activation function. The effect of various parameters, such as state of charge , voltage, and current, on the battery temperature was also investigated. • ANN was developed to predict thermal runaway in a lithium-ion battery pack. • Three models were considered: Layer recurrent- NN, Elman- NN, and FF- NN. • These models are trained, tested, and verified using data sets obtained from a COMSOL Multiphysics model. • Layer recurrent -NN model is found to perform best.
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