Coincident Learning for Beam-based RF Station Fault Identification Using Phase Information at the SLAC Linac Coherent Light Source
Jia Liang, William Colocho, Franz-Josef Decker, Ryan Humble, Ben Morris, Finn H. O'Shea, David A. Steele, Zhe Zhang, Eric Darve, and Daniel Ratner

TL;DR
This paper introduces a deep learning-based method using RF phase data to improve fault detection and diagnosis in SLAC's linear accelerator, significantly increasing anomaly detection coverage and enabling fault categorization.
Contribution
It demonstrates that phase data combined with deep neural networks within the CoAD framework enhances anomaly detection and root cause analysis in RF stations, surpassing amplitude-based methods.
Findings
Nearly three times more anomalies detected with phase data
Broader coverage across RF stations achieved
Anomalies clustered into distinct physical categories
Abstract
Anomalies in radio-frequency (RF) stations can result in unplanned downtime and performance degradation in linear accelerators such as SLAC's Linac Coherent Light Source (LCLS). Detecting these anomalies is challenging due to the complexity of accelerator systems, high data volume, and scarcity of labeled fault data. Prior work identified faults using beam-based detection, combining RF amplitude and beam-position monitor data. Due to the simplicity of the RF amplitude data, classical methods are sufficient to identify faults, but the recall is constrained by the low-frequency and asynchronous characteristics of the data. In this work, we leverage high-frequency, time-synchronous RF phase data to enhance anomaly detection in the LCLS accelerator. Due to the complexity of phase data, classical methods fail, and we instead train deep neural networks within the Coincident Anomaly Detection…
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Taxonomy
TopicsRadio Astronomy Observations and Technology · Particle accelerators and beam dynamics · Engineering and Test Systems
