Bayesian Uncertainty Quantification in Inverse Modelling of Electrochemical Systems
Athinthra Sethurajan, Sergey Krachkovskiy, Gillian Goward, Bartosz, Protas

TL;DR
This paper introduces a Bayesian method for quantifying uncertainties in reconstructed material properties of electrochemical systems from noisy experimental data, enhancing reliability in inverse modelling.
Contribution
The study develops a Bayesian framework for uncertainty quantification in inverse modelling of electrochemical systems, validated with synthetic and experimental data.
Findings
Validated approach with manufactured data showing noise effects
Quantified uncertainty in diffusion coefficient and transference number from experiments
Provided confidence intervals for reconstructed properties
Abstract
This study proposes a novel approach to quantifying uncertainties of constitutive relations inferred from noisy experimental data using inverse modelling. We focus on electrochemical systems in which charged species (e.g., Lithium ions) are transported in electrolyte solutions under an applied current. Such systems are typically described by the Planck-Nernst equation in which the unknown material properties are the diffusion coefficient and the transference number assumed constant or concentration-dependent. These material properties can be optimally reconstructed from time- and space-resolved concentration profiles measured during experiments using the Magnetic Resonance Imaging (MRI) technique. However, since the measurement data is usually noisy, it is important to quantify how the presence of noise affects the uncertainty of the reconstructed material properties. We address this…
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