The Fermilab Linac delivers 400 MeV H- beam to the rest of the accelerator chain. Providing stable intensity, energy, and emittance is key since it directly affects downstream machines. To counter fluctuations of Linac output due to various effects to be described below we are working on implementing dynamic longitudinal parameter optimization based on Machine Learning (ML). As inputs for the ML model, signals from beam diagnostics have to be well understood and reliable. In this paper we discuss the status and plans for ML-based optimization as well as preliminary results of diagnostics studies.
@article{arxiv.2209.02526,
title = {Diagnostics for Linac Optimization With Machine Learning},
author = {R. Sharankova and M. Mwaniki and K. Seiya and M. Wesley},
journal= {arXiv preprint arXiv:2209.02526},
year = {2022}
}