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Autonomous Battery Optimization by Deploying Distributed Experiments and Simulations.

Authors :
Vogler, Monika
Steensen, Simon Krarup
Ramírez, Francisco Fernando
Merker, Leon
Busk, Jonas
Carlsson, Johan Martin
Rieger, Laura Hannemose
Zhang, Bojing
Liot, François
Pizzi, Giovanni
Hanke, Felix
Flores, Eibar
Hajiyani, Hamidreza
Fuchs, Stefan
Sanin, Alexey
Gaberšček, Miran
Castelli, Ivano Eligio
Clark, Simon
Vegge, Tejs
Bhowmik, Arghya
Source :
Advanced Energy Materials. 12/13/2024, Vol. 14 Issue 46, p1-13. 13p.
Publication Year :
2024

Abstract

Non‐trivial relationships link individual materials properties to device‐level performance. Device optimization therefore calls for new automation approaches beyond the laboratory bench with tight integration of different research methods. This study demonstrates a Materials Acceleration Platform (MAP) in the field of battery research based on the problem‐agnostic Fast INtention‐Agnostic LEarning Server (FINALES) framework, which integrates simulations and physical experiments while leaving the active control of the hardware and software resources executing experiments or simulations with the partners running the respective units. This decentralization of control is a distinctive feature of MAPs using the FINALES framework. The connected capabilities entail the formulation and characterization of electrolytes, cell assembly and testing, early lifetime prediction, and ontology‐mapped data storage provided by institutions distributed across Europe. The infrastructure is used to optimize the ionic conductivity of electrolytes and the End Of Life (EOL) of lithium‐ion coin cells by varying the electrolyte formulation. Trends in ionic conductivity are rediscovered and the effect of the electrolyte formulation on the EOL is investigated. Further, the capability of this MAP to bridge diverse research modalities, scales, and institutions enabling system‐level investigations under asynchronous conditions while handling concurrent workflows on the material‐ and system‐level is shown, demonstrating true intention‐agnosticism. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
16146832
Volume :
14
Issue :
46
Database :
Academic Search Index
Journal :
Advanced Energy Materials
Publication Type :
Academic Journal
Accession number :
181662558
Full Text :
https://doi.org/10.1002/aenm.202403263