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Spatio-Temporal Anomaly Detection with Graph Networks for Data Quality Monitoring of the Hadron Calorimeter

  • Mulugeta Weldezgina Asres*
  • , Christian Walter Omlin*
  • , Long Wang
  • , David Yu
  • , Pavel Parygin
  • , Jay Dittmann
  • , Georgia Karapostoli
  • , Markus Seidel
  • , Rosamaria Venditti
  • , Luka Lambrecht
  • , Emanuele Usai
  • , Muhammad Ahmad
  • , Javier Fernandez Menendez
  • , Kaori Maeshima
  • *Corresponding author for this work
  • University of Agder
  • University of Maryland, College Park
  • Brown University
  • University of Rochester
  • Baylor University
  • University of California at Riverside
  • Riga Technical University
  • University of Bari
  • Ghent University
  • University of Alabama
  • Texas A&M University
  • University of Oviedo
  • Fermi National Accelerator Laboratory

Research output: Contribution to journalArticlepeer-review

Abstract

The Compact Muon Solenoid (CMS) experiment is a general-purpose detector for high-energy collision at the Large Hadron Collider (LHC) at CERN. It employs an online data quality monitoring (DQM) system to promptly spot and diagnose particle data acquisition problems to avoid data quality loss. In this study, we present a semi-supervised spatio-temporal anomaly detection (AD) monitoring system for the physics particle reading channels of the Hadron Calorimeter (HCAL) of the CMS using three-dimensional digi-occupancy map data of the DQM. We propose the GraphSTAD system, which employs convolutional and graph neural networks to learn local spatial characteristics induced by particles traversing the detector and the global behavior owing to shared backend circuit connections and housing boxes of the channels, respectively. Recurrent neural networks capture the temporal evolution of the extracted spatial features. We validate the accuracy of the proposed AD system in capturing diverse channel fault types using the LHC collision data sets. The GraphSTAD system achieves production-level accuracy and is being integrated into the CMS core production system for real-time monitoring of the HCAL. We provide a quantitative performance comparison with alternative benchmark models to demonstrate the promising leverage of the presented system.

Original languageEnglish
Article number9679
JournalSensors
Volume23
Issue number24
DOIs
StatePublished - Dec 2023
Externally publishedYes

Keywords

  • CMS
  • LHC
  • anomaly detection
  • deep learning
  • graph networks
  • monitoring
  • particle sensors
  • spatio-temporal

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