MEDIC: a network for monitoring data quality in collider experiments
Juvenal Bassa, Arghya Chattopadhyay, Sudhir Malik, Mario Escabi Rivera

TL;DR
This paper introduces MEDIC, a neural network framework using simulation data to detect and localize detector anomalies in particle physics experiments, aiming to enhance data quality monitoring with machine learning.
Contribution
It presents a novel simulation-driven approach and a neural network model for detector anomaly detection and localization in collider experiments.
Findings
Successful preliminary detection of simulated detector faults
Demonstration of a simulation-based framework for DQM
Potential for future development of data-driven DQM systems
Abstract
Data Quality Monitoring (DQM) is a crucial component of particle physics experiments and ensures that the recorded data is of the highest quality, and suitable for subsequent physics analysis. Due to the extreme environmental conditions, unprecedented data volumes, and the sheer scale and complexity of the detectors, DQM orchestration has become a very challenging task. Therefore, the use of Machine Learning (ML) to automate anomaly detection, improve efficiency, and reduce human error in the process of collecting high-quality data is unavoidable. Since DQM relies on real experimental data, it is inherently tied to the specific detector substructure and technology in operation. In this work, a simulation-driven approach to DQM is proposed, enabling the study and development of data-quality methodologies in a controlled environment. Using a modified version of Delphes -- a fast,…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Particle Detector Development and Performance · Radiation Detection and Scintillator Technologies
