2024
DOI: 10.1088/2632-2153/ad2e18
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Robust errant beam prognostics with conditional modeling for particle accelerators

Kishansingh Rajput,
Malachi Schram,
Willem Blokland
et al.

Abstract: Particle accelerators are complex and comprise thousands of components, with many pieces of equipment running at their peak power. Consequently, they can fault and abort operations for numerous reasons, lowering efficiency and science output. To avoid these faults, we apply anomaly detection techniques to predict unusual behavior and perform preemptive actions to improve the total availability. Supervised Machine Learning (ML) techniques such as Siamese Neural Network (SNN) models can outperform the often-used… Show more

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