Reinforcement Learning and Differentiable Simulations for Autonomous Tuning and Control of Linear Particle Accelerators

Reinforcement Learning and Differentiable Simulations for Autonomous Tuning and Control of Linear Particle Accelerators

Hardback

By using these links, you support READO. We receive an affiliate commission without any additional costs to you.

Description

Particle accelerators are sophisticated scientific facilities that require precise but time-consuming optimisation to achieve optimal performance. Considering benchmark tasks at the ARES and LCLS facilities, this dissertation proposes methods to deploy simulation-trained reinforcement learning (RL) policies for accelerator tuning zero-shot to the real world and novel tuning tasks, while comparing their performance to traditional methods. A high-speed differentiable beam dynamics simulator is developed to make collecting large datasets for RL feasible, and to enable a multitude of novel gradient-based accelerator applications. These contributions lay the groundwork for faster accelerator tuning to better working points, and enable new scientific discoveries.

Book Information

Main Genre
Specialized Books
Sub Genre
Technology
Format
Hardback
Pages
231
Price
123.40 €