Deep neural network-based prediction for low-energy beam transport tuning

Time-varying characteristics of an ion source are induced by environmental change or aging of parts inevitably, making a data-driven prediction model inaccurate. We consider non-invasively measured beam profiles as important features to represent initial beam from ion sources in real time. Beam-indu...

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Veröffentlicht in:Journal of the Korean Physical Society 2023-10, Vol.83 (8), p.647-653
Hauptverfasser: Kim, Dong-Hwan, Kim, Han-Sung, Kwon, Hyeok-Jung, Lee, Seung-Hyun, Yun, Sang-Pil, Kim, Seung-Geun, Yu, Yong-Gyun, Dang, Jeong-Jeung
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Sprache:eng
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Zusammenfassung:Time-varying characteristics of an ion source are induced by environmental change or aging of parts inevitably, making a data-driven prediction model inaccurate. We consider non-invasively measured beam profiles as important features to represent initial beam from ion sources in real time. Beam-induced fluorescence monitor was tested to confirm change of beam properties by ion source operating conditions during a beam commissioning phase. Machine learning-based regression models were built with beam dynamics simulation datasets over a range of input parameters in the RFQ-based accelerator. Best prediction for the low-energy beam tuning was obtained by deep neural networks model. The methodology presented in the study can help develop advanced beam tuning models with non-invasive beam diagnostics in time-varying systems.
ISSN:0374-4884
1976-8524
DOI:10.1007/s40042-023-00848-0