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@INPROCEEDINGS{SantamariaGarcia:358340,
author = {Santamaria Garcia, Andrea and Lagrange, Jean-Baptiste and
Hirlaender, Simon and Oeftiger, Adrian},
title = {{A}ctive deep learning for nonlinear optics design of a
vertical {FFA} accelerator},
address = {Geneva, Switzerland},
publisher = {JACoW Publishing},
reportid = {GSI-2025-00524},
pages = {2709 - 2712},
year = {2023},
note = {Published by JACoW Publishing under the terms of the
Creative Commons Attribution 4.0 license.},
abstract = {Vertical Fixed-Field Alternating Gradient (vFFA)
accelerators exhibit particle orbits which move vertically
during acceleration. This recently rediscovered circular
accelerator type has several advantages over conventional
ring accelerators, such as zero momentum compaction factor.
At the same time, inherently non-planar orbits and a unique
transverse coupling make controlling the beam dynamics a
complex task. In general, betatron tune adjustment is
crucial to avoid resonances, particularly when space charge
effects are present. Due to highly nonlinear magnetic fields
in the vFFA, it remains a challenging task to determine an
optimal lattice design in terms of maximising the dynamic
aperture. This contribution describes a deep learning based
algorithm which strongly improves on regular grid scans and
random search to find an optimal lattice: a surrogate model
is built iteratively from simulations with varying lattice
parameters to predict the dynamic aperture. The training of
the model follows an active learning paradigm, which thus
considerably reduces the number of samples needed from the
computationally expensive simulations.},
month = {May},
date = {2023-05-07},
organization = {14th International Particle
Accelerator Conference, Venice (Italy),
7 May 2023 - 12 May 2023},
keywords = {Accelerator Physics (Other) /
mc5-beam-dynamics-and-em-fields - MC5: Beam Dynamics and EM
Fields (Other) / mc5-d13-machine-learning - MC5.D13: Machine
Learning (Other)},
cin = {APH},
cid = {I:(DE-Ds200)APH-20060809OR090},
pnm = {899 - ohne Topic (POF4-899)},
pid = {G:(DE-HGF)POF4-899},
experiment = {$EXP:(DE-Ds200)no_experiment-20200803$},
typ = {PUB:(DE-HGF)8},
doi = {10.18429/JACOW-IPAC2023-WEPA026},
url = {https://repository.gsi.de/record/358340},
}