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Autori principali: Awal, Awal, Hetzel, Jan, Gebel, Ralf, Pretz, Jörg
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2406.12735
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author Awal, Awal
Hetzel, Jan
Gebel, Ralf
Pretz, Jörg
author_facet Awal, Awal
Hetzel, Jan
Gebel, Ralf
Pretz, Jörg
contents Optimizing the injection process in particle accelerators is crucial for enhancing beam quality and operational efficiency. This paper presents a framework for utilizing Reinforcement Learning (RL) to optimize the injection process at accelerator facilities. By framing the optimization challenge as an RL problem, we developed an agent capable of dynamically aligning the beam's transverse space with desired targets. Our methodology leverages the Soft Actor-Critic algorithm, enhanced with domain randomization and dense neural networks, to train the agent in simulated environments with varying dynamics promoting it to learn a generalized robust policy. The agent was evaluated in live runs at the Cooler Synchrotron COSY and it has successfully optimized the beam cross-section reaching human operator level but in notably less time. An empirical study further validated the importance of each architecture component in achieving a robust and generalized optimization strategy. The results demonstrate the potential of RL in automating and improving optimization tasks at particle acceleration facilities.
format Preprint
id arxiv_https___arxiv_org_abs_2406_12735
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Injection Optimization at Particle Accelerators via Reinforcement Learning: From Simulation to Real-World Application
Awal, Awal
Hetzel, Jan
Gebel, Ralf
Pretz, Jörg
Accelerator Physics
Optimizing the injection process in particle accelerators is crucial for enhancing beam quality and operational efficiency. This paper presents a framework for utilizing Reinforcement Learning (RL) to optimize the injection process at accelerator facilities. By framing the optimization challenge as an RL problem, we developed an agent capable of dynamically aligning the beam's transverse space with desired targets. Our methodology leverages the Soft Actor-Critic algorithm, enhanced with domain randomization and dense neural networks, to train the agent in simulated environments with varying dynamics promoting it to learn a generalized robust policy. The agent was evaluated in live runs at the Cooler Synchrotron COSY and it has successfully optimized the beam cross-section reaching human operator level but in notably less time. An empirical study further validated the importance of each architecture component in achieving a robust and generalized optimization strategy. The results demonstrate the potential of RL in automating and improving optimization tasks at particle acceleration facilities.
title Injection Optimization at Particle Accelerators via Reinforcement Learning: From Simulation to Real-World Application
topic Accelerator Physics
url https://arxiv.org/abs/2406.12735