19–24 May 2024
Music City Center
US/Central timezone

Beam condition diagnostics and forecasting with non-destructive measurements at FACET-II

MOPS78
20 May 2024, 16:00
2h
Blues (MCC Exhibit Hall A)

Blues

MCC Exhibit Hall A

Poster Presentation MC5.D13 Machine Learning Monday Poster Session

Speaker

Joshua Einstein-Curtis (RadiaSoft LLC)

Description

Beam diagnostic technology is one of the foundations of large particle accelerator facilities. A challenge with operating these systems is the measurement of beam dynamics. Many methods such as beam position monitors have an inherent destructive quality to the beam and produce perturbations after the measurement. The ability to measure the beam conditions with non-destructive edge radiation allows for us to have a more stable understanding and predictability of the beam condition. We are developing a machine learning workflow for the downstream prediction and future forecasting of the beam condition utilizing the non-destructive edge radiation measurements and novel graph neural networks in collaboration with FACET-II at SLAC. We are developing machine learning algorithms with the beam physics integrated within each layer of the network. Additionally, we are developing an online surrogate model of edge radiation using SRW to allow for automatic generation of new beam states due to the changing parameters of accelerator facilities over time. We plan to integrate and test our prediction system at the SLAC facility to perform beam condition prediction and verification at FACET-II.

Funding Agency

DOE

Region represented North America
Paper preparation format LaTeX

Primary author

Matthew Kilpatrick (RadiaSoft LLC)

Co-authors

Boaz Nash (RadiaSoft LLC) Brendan O'Shea (SLAC National Accelerator Laboratory) Joshua Einstein-Curtis (RadiaSoft LLC) Paul Moeller (RadiaSoft LLC) Robbie Watt (SLAC National Accelerator Laboratory)

Presentation materials

There are no materials yet.