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RIS citation export for WEBO04: Enhancement of the S-DALINAC Control System with Machine Learning Methods

TY  - CONF
AU  - Hanten, J.H.
AU  - Arnold, M.
AU  - Birkhan, J.
AU  - Caliari, C.
AU  - Pietralla, N.
AU  - Steinhorst, M.
ED  - Schaa, Volker RW
ED  - Jansson, Andreas
ED  - Shea, Thomas
ED  - Olander, Johan
TI  - Enhancement of the S-DALINAC Control System with Machine Learning Methods
J2  - Proc. of IBIC2019, Malmö, Sweden, 08-12 September 2019
CY  - Malmö, Sweden
T2  - International Beam Instrumentation Conferenc
T3  - 8
LA  - english
AB  - For the EPICS-based control system of the superconducting Darmstadt electron linear accelerator S-DALINAC**, supporting infrastructures based on machine learning are currently developed. The most important support for the operators is to assist the beam setup and controlling with reinforcement learning using artificial neural networks. A particle accelerator has a very large parameter space with often hidden relationships between them. Therefore neural networks are a suited instrument to use for approximating the needed value function which represents the value of a certain action in a certain state. Different neural network structures and their training with reinforcement learning are currently tested with simulations. Also there are different candidates for the reinforcement learning algorithms such as Deep-Q-Networks (DQN) or Deep-Deterministic-Policy-Gradient (DDPG). In this contribution the concept and first results will be presented.
PB  - JACoW Publishing
CP  - Geneva, Switzerland
SP  - 475
EP  - 478
KW  - network
KW  - target
KW  - controls
KW  - linac
KW  - electron
DA  - 2019/11
PY  - 2019
SN  - 2673-5350
SN  - 978-3-95450-204-2
DO  - doi:10.18429/JACoW-IBIC2019-WEBO04
UR  - http://jacow.org/ibic2019/papers/webo04.pdf
ER  -