Neural Network Solver for Coherent Synchrotron Radiation Wakefield Calculations in Accelerator-based Charged Particle Beams
Auralee Edelen, Christopher Mayes

TL;DR
This paper introduces a neural network-based solver for calculating the Coherent Synchrotron Radiation wakefield in particle accelerators, achieving significant speedup and high accuracy over traditional methods.
Contribution
The authors develop and validate a neural network approach for CSR wakefield computation, enabling faster and generalizable simulations in accelerator physics.
Findings
Ten-fold speedup in CSR wakefield calculations
High accuracy comparable to electromagnetic solvers
Effective integration into beam tracking simulations
Abstract
Particle accelerators support a wide array of scientific, industrial, and medical applications. To meet the needs of these applications, accelerator physicists rely heavily on detailed simulations of the complicated particle beam dynamics through the accelerator. One of the most computationally expensive and difficult-to-model effects is the impact of Coherent Synchrotron Radiation (CSR). As a beam travels through a curved trajectory (e.g. due to a bending magnet), it emits radiation that in turn interacts with the rest of the beam. At each step through the trajectory, the electromagnetic field introduced by CSR (called the CSR wakefield) needs to computed and used when calculating the updates to the positions and momenta of every particle in the beam. CSR is one of the major drivers of growth in the beam emittance, which is a key metric of beam quality that is critical in many…
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