TOWARDS FEW-SHOT REINFORCEMENT LEARNING IN PARTICLE ACCELERATOR CONTROL: TOWARDS FEW-SHOT REINFORCEMENT LEARNING IN PARTICLE ACCELERATOR CONTROL

Simon Hirländer*, Lukas Lamminger, Sabrina Pochaba, Jan Kaiser, Chenran Xu, Andrea Santamaria Garcia, Verena Kain (Corresponding author), Luca Scomparin (Corresponding author)

*Corresponding author for this work

Research output: Contribution to conferencePaper

Abstract

This paper addresses the automation of particle accelerator control through Reinforcement Learning (RL). It highlights the potential to increase reliable performance, especially in light of new diagnostic tools and the increasingly complex variable schedules of certain accelerators. We focus on the physics simulation of the AWAKE electron line, an ideal platform for performing in-depth studies that allow a clear distinction between the problem and the performance of different algorithmic approaches for accurate analysis. The main challenges are the lack of realistic simulations and partially observable environments. We show how effective results can be achieved through meta-reinforcement learning, where an agent is trained to quickly adapt to specific real-world scenarios based on prior training in a simulated environment with variable unknowns. When suitable simulations are lacking or too costly, a model-based method using Gaussian processes is used for direct training in a few shots only. This work opens new avenues for the implementation of control automation in particle accelerators, significantly increasing their efficiency and adaptability.
Original languageEnglish
Publication statusPublished - 19 May 2024
Event15th International Particle Accelerator Conference: 15th International Particle Accelerator Conference - Nashville, Nashville, United States
Duration: 19 May 202424 May 2024
https://ipac24.org/

Conference

Conference15th International Particle Accelerator Conference
Country/TerritoryUnited States
City Nashville
Period19/05/2424/05/24
Internet address

Keywords

  • Reinforcement Learning
  • Artificial Intelligence

Fields of Science and Technology Classification 2012

  • 103 Physics, Astronomy

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