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Autonomous battery research: Principles of heuristic operando experimentation

Emily Lu
Gabriel Perez
Peter Baker
Daniel Irving
Santosh Kumar
Veronica Celorrio
Sylvia Britto
Thomas F. Headen
Miguel Gomez-Gonzalez
Connor Wright
Calum Green
Robert Scott Young
Oleg Kirichek
Ali Mortazavi
Sarah Day
Isabel Antony
Zoe Wright
Thomas Wood
Tim Snow
Jeyan Thiyagalingam
Paul Quinn
Martin Owen Jones
William David
James Le Houx
Main:34 Pages
14 Figures
Bibliography:4 Pages
3 Tables
Abstract

Unravelling the complex processes governing battery degradation is critical to the energy transition, yet the efficacy of operando characterisation is severely constrained by a lack of Reliability, Representativeness, and Reproducibility (the 3Rs). Current methods rely on bespoke hardware and passive, pre-programmed methodologies that are ill-equipped to capture stochastic failure events. Here, using the Rutherford Appleton Laboratory's multi-modal toolkit as a case study, we expose the systemic inability of conventional experiments to capture transient phenomena like dendrite initiation. To address this, we propose Heuristic Operando experiments: a framework where an AI pilot leverages physics-based digital twins to actively steer the beamline to predict and deterministically capture these rare events. Distinct from uncertainty-driven active learning, this proactive search anticipates failure precursors, redefining experimental efficiency via an entropy-based metric that prioritises scientific insight per photon, neutron, or muon. By focusing measurements only on mechanistically decisive moments, this framework simultaneously mitigates beam damage and drastically reduces data redundancy. When integrated with FAIR data principles, this approach serves as a blueprint for the trusted autonomous battery laboratories of the future.

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