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2025jyeregui_PINN_Poster_OBMS.pdf (2.082Mb)
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Title
On-site estimation of battery electrochemical parameters with physics-informed neural networks in dynamic current profiles
Author
Yeregui, Josu cc
Etxeberria, Malen
GARAYALDE, ERIK cc
IRAOLA, UNAI cc
Publication Date
2025
Research Group
Almacenamiento de energía
Version
Postprint
Document type
Conference Object
Language
English
Access
Open access
URI
https://hdl.handle.net/20.500.11984/14000
Published at
Oxford Battery Modelling Symposium  2025
Keywords
ODS 7 Energía asequible y no contaminante
ODS 9 Industria, innovación e infraestructura
ODS 11 Ciudades y comunidades sostenibles
Abstract
The accurate on-site estimation of battery electrochemical parameters is crucial for optimal battery management, enabling advanced control strategies and reliable prognostics. However, physics-based ... [+]
The accurate on-site estimation of battery electrochemical parameters is crucial for optimal battery management, enabling advanced control strategies and reliable prognostics. However, physics-based methods often suffer from high computational costs, require specific testing setups; while data driven solutions lack interpretability, creating a need for solutions including the benefits of both strategies [1]. We present a novel framework for on-site physical parameter estimation, for real-time characterization of lithium-ion batteries, leveraging on the recent attention for hybrid physics-based and data-driven solutions. Our approach utilizes a two-phase modelling strategy that combines Physics-Informed Neural Networks (PINNs) with transfer learning [2]. In an initial ”data-agnostic” phase, a PINN is trained exclusively using the governing physical equations of a single particle model. The model is set to include Fourier Feature transformations on the dependent variables, so that we extend the learning range to dynamic current profiles. During the second phase, critical ageing-related electrochemical parameters are fine-tuned using real-world voltage profile data. This two-phase strategy significantly reduces computational cost compared to traditional optimization methods, making it suitable for implementation on Battery Management Systems, and the dataagnosticism of the initial training phase avoids the need for large chunks of data. We demonstrated the framework’s efficacy through the estimation of diffusivities and active material volume fractions. Experimental and analytical validations showed a relative accuracy of 3.89% in estimating the active material volume fractions. Furthermore, our proposed PINN-based approach outperformed classical optimization techniques in accurately recovering parameters under varied ageing conditions. [-]
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