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Hauptverfasser: Kuhn, Yannick, Adachi, Masaki, Philipp, Micha, Howey, David A., Horstmann, Birger
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2512.10055
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author Kuhn, Yannick
Adachi, Masaki
Philipp, Micha
Howey, David A.
Horstmann, Birger
author_facet Kuhn, Yannick
Adachi, Masaki
Philipp, Micha
Howey, David A.
Horstmann, Birger
contents Physics-based battery modelling has emerged to accelerate battery materials discovery and performance assessment. Its success, however, is still hindered by difficulties in aligning models to experimental data. Bayesian approaches are a valuable tool to overcome these challenges, since they enable prior assumptions and observations to be combined in a principled manner that improves numerical conditioning. Here we introduce two new algorithms to the battery community, SOBER and BASQ, that greatly speed up Bayesian inference for parameterisation and model comparison. We showcase how Bayesian model selection allows us to tackle data observability, model identifiability, and data-informed model development together. We propose this approach for the search for battery models of novel materials.
format Preprint
id arxiv_https___arxiv_org_abs_2512_10055
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Primer on Bayesian Parameter Estimation and Model Selection for Battery Simulators
Kuhn, Yannick
Adachi, Masaki
Philipp, Micha
Howey, David A.
Horstmann, Birger
Methodology
Data Analysis, Statistics and Probability
Applications
65-01
J.2
Physics-based battery modelling has emerged to accelerate battery materials discovery and performance assessment. Its success, however, is still hindered by difficulties in aligning models to experimental data. Bayesian approaches are a valuable tool to overcome these challenges, since they enable prior assumptions and observations to be combined in a principled manner that improves numerical conditioning. Here we introduce two new algorithms to the battery community, SOBER and BASQ, that greatly speed up Bayesian inference for parameterisation and model comparison. We showcase how Bayesian model selection allows us to tackle data observability, model identifiability, and data-informed model development together. We propose this approach for the search for battery models of novel materials.
title A Primer on Bayesian Parameter Estimation and Model Selection for Battery Simulators
topic Methodology
Data Analysis, Statistics and Probability
Applications
65-01
J.2
url https://arxiv.org/abs/2512.10055