Fast and flexible physics-based battery models in Python
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Updated
Apr 29, 2024 - Python
Fast and flexible physics-based battery models in Python
Code and data for the paper "Systematic derivation and validation of a reduced thermal-electrochemical model for lithium-ion batteries using asymptotic methods" by Brosa Planella et al. (2021).
Create reduced-order state-space models for lithium-ion batteries utilising realisation algorithms.
cideMOD solves DFN physicochemical equations by Finite Element methods using FEniCS library. It enables doing physics-based battery simulations with a wide variety of use cases, from different drive cycles to studies of the SEI growth under storage conditions. Thermal and degradation models can be used to obtain more realistic predictions.
Supporting material for the review of continuum models by Brosa Planella et al (2022).
Physics-Informed Neural Network SurrogaTe for Rapidly Identifying Parameters in Energy Systems
A cookiecutter template for battery modeling projects using PyBaMM
Within this repository you will find the outcome of my internship at Siemens Energy R&D, Gurgaon. You will find an end-to-end code solution for modelling battery degradation under randomised usage along with a documentation!
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