Saakaar Bhatnagar, Andrew Comerford, Zelu Xu, Davide Berti Polato, Araz Banaeizadeh, Alessandro Ferraris
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Chemical Reaction Neural Networks for Fitting Accelerated Rate Calorimetry Data
As the demand for lithium-ion batteries rapidly increases there is a need to
design these cells in a safe manner to mitigate thermal runaway. Thermal
runaway in batteries leads to an uncontrollable temperature rise and
potentially fires, which is a major safety concern. Typically, when modelling
the chemical kinetics of thermal runaway calorimetry data ( e.g. Accelerated
Rate Calorimetry (ARC)) is needed to determine the temperature-driven
decomposition kinetics. Conventional methods of fitting Arrhenius Ordinary
Differential Equation (ODE) thermal runaway models to Accelerated Rate
Calorimetry (ARC) data make several assumptions that reduce the fidelity and
generalizability of the obtained model. In this paper, Chemical Reaction Neural
Networks (CRNNs) are trained to fit the kinetic parameters of N-equation
Arrhenius ODEs to ARC data obtained from a Molicel 21700 P45B. The models are
found to be better approximations of the experimental data. The flexibility of
the method is demonstrated by experimenting with two-equation and four-equation
models. Thermal runaway simulations are conducted in 3D using the obtained
kinetic parameters, showing the applicability of the obtained thermal runaway
models to large-scale simulations.