Functional Data-Driven Framework for Fast Forecasting of Electrode Slurry Rheology Simulated by Molecular Dynamics
Computational modeling of the manufacturing process of Lithium-Ion Battery (LIB) composite electrodes based on mechanistic approaches, allows predicting the influence of manufacturing parameters on electrode properties. However, ensuring that the calculated properties match well with experimental da...
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Zusammenfassung: | Computational modeling of the manufacturing process of Lithium-Ion Battery
(LIB) composite electrodes based on mechanistic approaches, allows predicting
the influence of manufacturing parameters on electrode properties. However,
ensuring that the calculated properties match well with experimental data, is
typically time and resources consuming In this work, we tackled this issue by
proposing a functional data-driven framework combining Functional Principal
Component Analysis and K-Nearest Neighbors algorithms. This aims first to
recover the early numerical values of a mechanistic electrode manufacturing
simulation to predict if the observable being calculated is prone to match or
not, \textit{i.e} screening step. In a second step it recovers additional
numerical values of the ongoing mechanistic simulation iterations to predict
the mechanistic simulation result, \textit{i.e} forecasting step. We
demonstrated this approach in context of LIB manufacturing through
non-equilibrium molecular dynamics (NEMD) simulations, aiming to capture the
rheological behavior of electrode slurries. We discuss in full details our
novel methodology and we report that the expected mechanistic simulation
results can be obtained 11 times faster with respect to running the complete
mechanistic simulation, while being accurate enough from an experimental point
of view, with a $F1_{score}$ equals to 0.90, and a $R^2_{score}$ equals to 0.96
for the learnings validation. This paves the way towards a powerful tool to
drastically reduce the utilization of computational resources while running
mechanistic simulations of battery manufacturing electrodes. |
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DOI: | 10.48550/arxiv.2201.04394 |