Accelerating battery research with an AI interface between FINALES and Kadi4Mat
arXiv cs.AI / 5/5/2026
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Key Points
- The paper addresses how slow battery “formation” procedures limit the lifetime and end-of-life (EOL) performance of sodium-ion coin cells, aiming to optimize protocols more efficiently.
- It sets up an optimization problem with two competing goals: reducing formation time while maximizing EOL performance, and seeks candidate solutions near the Pareto front.
- The authors introduce an interoperability framework connecting the FINALES and Kadi RDM ecosystems so automated and human-involved workflows can coordinate across multiple research centers.
- In this system, FINALES plans and runs experiments on the POLiS MAP, while an active-learning agent in Kadi4Mat selects experiments using multi-objective batched Bayesian optimization to explore the parameter space with fewer tests.
- The resulting workflow shows that interoperable, data-driven infrastructure can accelerate discovery in battery research and is designed to be transferable to other materials science optimization tasks.
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