Physics-informed neural network method for modelling beam-wall interactions

12/21/2021
by   Kazuhiro Fujita, et al.
0

A mesh-free approach for modelling beam-wall interactions in particle accelerators is proposed. The key idea of our method is to use a deep neural network as a surrogate for the solution to a set of partial differential equations involving the particle beam, and the surface impedance concept. The proposed approach is applied to the coupling impedance of an accelerator vacuum chamber with thin conductive coating, and also verified in comparison with the existing analytical formula.

READ FULL TEXT
research
03/03/2022

A shallow physics-informed neural network for solving partial differential equations on surfaces

In this paper, we introduce a mesh-free physics-informed neural network ...
research
03/14/2022

Neural Network Solver for Coherent Synchrotron Radiation Wakefield Calculations in Accelerator-based Charged Particle Beams

Particle accelerators support a wide array of scientific, industrial, an...
research
07/07/2020

Physics-Based Deep Neural Networks for Beam Dynamics in Charged Particle Accelerators

This paper presents a novel approach for constructing neural networks wh...
research
05/31/2020

A nonlocal physics-informed deep learning framework using the peridynamic differential operator

The Physics-Informed Neural Network (PINN) framework introduced recently...
research
03/15/2023

Forecasting Particle Accelerator Interruptions Using Logistic LASSO Regression

Unforeseen particle accelerator interruptions, also known as interlocks,...
research
01/20/2022

Singularity and Mesh Divergence of Inviscid Adjoint Solutions at Solid Walls

The mesh divergence problem occurring at subsonic and transonic speeds w...
research
10/22/2021

Uncertainty aware anomaly detection to predict errant beam pulses in the SNS accelerator

High-power particle accelerators are complex machines with thousands of ...

Please sign up or login with your details

Forgot password? Click here to reset