Operational Accelerator Tuning via Model-Coupled Optics and Bayesian Steering

arXiv:2602.20233v1 Announce Type: new
Abstract: We present an on-line tuning strategy for the ISAC post-accelerator that pre-sets machine optics with a digital twin and then performs Bayesian optimization for steering under online operation with beam. The model computes end-to-end tunes in seconds and interfaces with the control system under device bounds, slew-rate limits, and loss interlocks. We report three experimental case studies demonstrating that decoupling optics from steering yields faster and more reliable convergence than a fully Bayesian optics-plus-steering baseline under identical conditions. Across these cases, iterations to high transmission tunes are reduced by a factor of 4-6, with final average transmissions in the mid- to high-90% range. By factorizing optics from steering, the dimensionality of the parameter space is reduced, convergence becomes more predictable, and operational safeguards are easier to enforce.

More From Author

Representation-induced superposition breakdown in linear physics

Environment-Induced Exciton Renormalization in the Photosystem II Reaction Center

Leave a Reply

Your email address will not be published. Required fields are marked *