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.

Abstract

The time-consuming formation process critically impacts the longevity of sodium-ion coin cells and End Of Life (EOL) performance. This study aims to optimize formation protocols for duration efficiency, targeting high-performance outcomes while minimizing the number of experiments to reduce resource consumption and accelerate discovery. Specifically, we consider two potentially competing objectives: minimizing formation time and maximizing EOL performance. Beyond this application focus, we also present a methodological contribution: a framework designed to enable interoperability between the FINALES and Kadi RDM ecosystems, which we employ to tackle our optimization problem. In this setup, the FINALES framework orchestrates experiment planning and execution on the POLiS MAP, while an active-learning agent implemented within Kadi4Mat guides experiment selection, using multi-objective batched Bayesian optimization to efficiently explore the parameter space. This interoperability enhancement enables coordinated, distributed collaboration across automated systems and human-operated workflows, bridging multiple research centers. Using this approach, we iteratively explore the trade-off between formation time and EOL performance and identify candidate solutions approximating the Pareto front. The resulting workflow demonstrates the capability of interoperable infrastructures to facilitate data-driven optimization in battery research, and establishes a transferable framework applicable to diverse materials science and engineering optimization tasks.