Physics-Based Deep Neural Networks for Beam Dynamics in Charged Particle
Accelerators
- URL: http://arxiv.org/abs/2007.03555v1
- Date: Tue, 7 Jul 2020 15:33:11 GMT
- Title: Physics-Based Deep Neural Networks for Beam Dynamics in Charged Particle
Accelerators
- Authors: Andrei Ivanov, Ilya Agapov
- Abstract summary: Taylor maps arising in the representation of dynamics are mapped onto the weights of a neural network.
The resulting network approximates the dynamical system with perfect accuracy prior to training.
We demonstrate our approach on the examples of the existing PETRA III and the planned PETRA IV storage rings at DESY.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper presents a novel approach for constructing neural networks which
model charged particle beam dynamics. In our approach, the Taylor maps arising
in the representation of dynamics are mapped onto the weights of a polynomial
neural network. The resulting network approximates the dynamical system with
perfect accuracy prior to training and provides a possibility to tune the
network weights on additional experimental data. We propose a symplectic
regularization approach for such polynomial neural networks that always
restricts the trained model to Hamiltonian systems and significantly improves
the training procedure. The proposed networks can be used for beam dynamics
simulations or for fine-tuning of beam optics models with experimental data.
The structure of the network allows for the modeling of large accelerators with
a large number of magnets. We demonstrate our approach on the examples of the
existing PETRA III and the planned PETRA IV storage rings at DESY.
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