Abstract
AbstractThe computational simulation of the manufacturing process of lithium-ion battery composite electrodes based on mechanistic models allows capturing the influence of manufacturing parameters on electrode properties. However, ensuring that these properties match with experimental data is typically computationally expensive. In this work, we tackled this costly procedure by proposing a functional data-driven framework, aiming first to retrieve the early numerical values calculated from a molecular dynamics simulation to predict if the observable being calculated is prone to match with our range of experimental values, and in a second step, recover additional values of the ongoing simulation to predict its final result. We demonstrated this approach in the context of the calculation of electrode slurries viscosities. We report that for various electrode chemistries, the expected mechanistic simulation results can be obtained 11 times faster with respect to the complete simulations, while being accurate with a $${R}_{\rm{score}}^{2}$$
R
score
2
equals to 0.96.
Publisher
Springer Science and Business Media LLC
Subject
Computer Science Applications,Mechanics of Materials,General Materials Science,Modeling and Simulation
Reference66 articles.
1. Dean, T., Allen, J. & Aloimonos, Y. Artificial intelligence: theory and practice (Benjamin-Cummings Publishing Co., Inc., 1995).
2. Patterson, D. Introduction to artificial intelligence and expert systems (Prentice-Hall, Inc., 1990).
3. Kohl, M. et al. Physical model for the spectroscopic analysis of cortical intrinsic optical signals. Phys. Med. Biol. 45, 3749 (2000).
4. Ngandjong, A. C. et al. Investigating electrode calendering and its impact on electrochemical performance by means of a new discrete element method model: towards a digital twin of li-ion battery manufacturing. J. Power Sources 485, 229320 (2021).
5. Lombardo, T. et al. Accelerated optimization methods for force-field parametrization in battery electrode manufacturing modeling. Batter. Supercaps 3, 721–730 (2020).
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