Abstract

We present a physics informed deep learning technique for Deeply Virtual Compton Scattering (DVCS) cross sections from an unpolarized proton target using both an unpolarized and polarized electron beam. Training a deep learning model typically requires a large size of data that might not always be available or possible to obtain. Alternatively, a deep learning model can be trained using additional knowledge gained by enforcing some physics constraints such as angular symmetries for better accuracy and generalization. By incorporating physics knowledge to our deep learning model, our framework shows precise predictions on the DVCS cross sections and better extrapolation on unseen kinematics compared to the basic deep learning approaches.

Keywords:
Extrapolation Deep learning Artificial neural network Compton scattering Deep neural networks Kinematics

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Topics

Computational Physics and Python Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
Nuclear physics research studies
Physical Sciences →  Physics and Astronomy →  Nuclear and High Energy Physics
Laser-Plasma Interactions and Diagnostics
Physical Sciences →  Physics and Astronomy →  Nuclear and High Energy Physics

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