JACoW logo

Journals of Accelerator Conferences Website (JACoW)

JACoW is a publisher in Geneva, Switzerland that publishes the proceedings of accelerator conferences held around the world by an international collaboration of editors.


RIS citation export for TUPOST027: Machine Learning-Based Tuning of Control Parameters for LLRF System of Superconducting Cavities

TY  - CONF
AU  - Diaz Cruz, J.A.
AU  - Biedron, S.
AU  - Pirayesh, R.
AU  - Sosa, S.
ED  - Zimmermann, Frank
ED  - Tanaka, Hitoshi
ED  - Sudmuang, Porntip
ED  - Klysubun, Prapong
ED  - Sunwong, Prapaiwan
ED  - Chanwattana, Thakonwat
ED  - Petit-Jean-Genaz, Christine
ED  - Schaa, Volker R.W.
TI  - Machine Learning-Based Tuning of Control Parameters for LLRF System of Superconducting Cavities
J2  - Proc. of IPAC2022, Bangkok, Thailand, 12-17 June 2022
CY  - Bangkok, Thailand
T2  - International Particle Accelerator Conference
T3  - 13
LA  - english
AB  - The multiple systems involved in the operation of particle accelerators use diverse control systems to reach the desired operating point for the machine. Each system needs to tune several control parameters to achieve the required performance. Traditional Low-Level RF (LLRF) systems are implemented as proportional-integral feedback loops, whose gains need to be optimized. In this paper, we explore Machine Learning (ML) as a tool to improve a traditional LLRF controller by tuning its gains using a Neural Network (NN). We present the data production scheme and a control parameter optimization using a NN. The NN training is performed using the THETA supercomputer.
PB  - JACoW Publishing
CP  - Geneva, Switzerland
SP  - 915
EP  - 917
KW  - cavity
KW  - controls
KW  - LLRF
KW  - simulation
KW  - SRF
DA  - 2022/07
PY  - 2022
SN  - 2673-5490
SN  - 978-3-95450-227-1
DO  - doi:10.18429/JACoW-IPAC2022-TUPOST027
UR  - https://jacow.org/ipac2022/papers/tupost027.pdf
ER  -