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Using Convolutional Neural Networks to Accelerate 3D Coherent Synchrotron Radiation Computations

Using Convolutional Neural Networks to Accelerate 3D Coherent Synchrotron Radiation Computations

来源:Arxiv_logoArxiv
英文摘要

Calculating the effects of Coherent Synchrotron Radiation (CSR) is one of the most computationally expensive tasks in accelerator physics. Here, we use convolutional neural networks (CNN's), along with a latent conditional diffusion (LCD) model, trained on physics-based simulations to speed up calculations. Specifically, we produce the 3D CSR wakefields generated by electron bunches in circular orbit in the steady-state condition. Two datasets are used for training and testing the models: wakefields generated by three-dimensional Gaussian electron distributions and wakefields from a sum of up to 25 three-dimensional Gaussian distributions. The CNN's are able to accurately produce the 3D wakefields $\sim 250-1000$ times faster than the numerical calculations, while the LCD has a gain of a factor of $\sim 34$. We also test the extrapolation and out-of-distribution generalization ability of the models. They generalize well on distributions with larger spreads than what they were trained on, but struggle with smaller spreads.

Christopher Leon、Alexander Scheinker、Nikolai Yampolsky、Petr M. Anisimov

信息科学、信息技术物理学

Christopher Leon,Alexander Scheinker,Nikolai Yampolsky,Petr M. Anisimov.Using Convolutional Neural Networks to Accelerate 3D Coherent Synchrotron Radiation Computations[EB/OL].(2025-03-12)[2025-04-27].https://arxiv.org/abs/2503.09551.点此复制

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