cidetec-energy-storage / PINN-SPM-fast-prototypingLinks
Physics-informed neural network trained to provide the evolution of lithium concentration in active material particles in both electrodes during a discharge process as well as the discharge curve of the full battery, based on the Single Particle Model.
☆18Updated last year
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