Optimisation of the Accelerator Control by Reinforcement Learning: A Simulation-Based Approach
- URL: http://arxiv.org/abs/2503.09665v1
- Date: Wed, 12 Mar 2025 16:57:52 GMT
- Title: Optimisation of the Accelerator Control by Reinforcement Learning: A Simulation-Based Approach
- Authors: Anwar Ibrahim, Denis Derkach, Alexey Petrenko, Fedor Ratnikov, Maxim Kaledin,
- Abstract summary: This study aims to create a simulation-based framework integrated with Reinforcement Learning (RL)<n>Using textttElegant as the simulation backend, we developed a Python wrapper that simplifies the interaction between RL algorithms and accelerator simulations.<n>The proposed RL framework acts as a co-pilot for physicists, offering intelligent suggestions to enhance beamline performance, reduce tuning time, and improve operational efficiency.
- Score: 0.615163395430594
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Optimizing accelerator control is a critical challenge in experimental particle physics, requiring significant manual effort and resource expenditure. Traditional tuning methods are often time-consuming and reliant on expert input, highlighting the need for more efficient approaches. This study aims to create a simulation-based framework integrated with Reinforcement Learning (RL) to address these challenges. Using \texttt{Elegant} as the simulation backend, we developed a Python wrapper that simplifies the interaction between RL algorithms and accelerator simulations, enabling seamless input management, simulation execution, and output analysis. The proposed RL framework acts as a co-pilot for physicists, offering intelligent suggestions to enhance beamline performance, reduce tuning time, and improve operational efficiency. As a proof of concept, we demonstrate the application of our RL approach to an accelerator control problem and highlight the improvements in efficiency and performance achieved through our methodology. We discuss how the integration of simulation tools with a Python-based RL framework provides a powerful resource for the accelerator physics community, showcasing the potential of machine learning in optimizing complex physical systems.
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