Data-Driven Gradient Optimization for Field Emission Management in a Superconducting Radio-Frequency Linac
Field emission can cause significant problems in superconducting radio-frequency linear accelerators (linacs). When cavity gradients are pushed higher, radiation levels within the linacs may rise exponentially, causing degradation of many nearby systems. This research aims to utilize machine learnin...
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Zusammenfassung: | Field emission can cause significant problems in superconducting
radio-frequency linear accelerators (linacs). When cavity gradients are pushed
higher, radiation levels within the linacs may rise exponentially, causing
degradation of many nearby systems. This research aims to utilize machine
learning with uncertainty quantification to predict radiation levels at
multiple locations throughout the linacs and ultimately optimize cavity
gradients to reduce field emission induced radiation while maintaining the
total linac energy gain necessary for the experimental physics program. The
optimized solutions show over 40% reductions for both neutron and gamma
radiation from the standard operational settings. |
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DOI: | 10.48550/arxiv.2411.07018 |