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Anomaly Detection for the ATLAS Pixel Detector

<!--HTML-->Since the ATLAS Detector is exposed to an intense environment during Run-3 and additionally due to its age, the operation of the detector becomes even more challenging. These challenges introduce difficulties in ensuring high data quality standards. In order to counteract against th...

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Autor principal: Yang, Kia-Jung
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2867874
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author Yang, Kia-Jung
author_facet Yang, Kia-Jung
author_sort Yang, Kia-Jung
collection CERN
description <!--HTML-->Since the ATLAS Detector is exposed to an intense environment during Run-3 and additionally due to its age, the operation of the detector becomes even more challenging. These challenges introduce difficulties in ensuring high data quality standards. In order to counteract against that, identifying the emerging problems in the Data Acquisition (DAQ) and Detector Control System (DCS) plays a crucial role. Therefore, a Machine Learning based anomaly detection method is employed. This method detects outliers of various time series data coming from the DAQ and DCS, to identify emerging problems before they impact the data quality. This talk will present first results of feasibility studies of using such methods in the ATLAS Pixel Detector as an example use case.
id cern-2867874
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28678742023-08-18T19:52:24Zhttp://cds.cern.ch/record/2867874engYang, Kia-JungAnomaly Detection for the ATLAS Pixel DetectorCERN openlab Summer Student Lightning Talks (1/2)CERN openlab Summer Student Programme 2023<!--HTML-->Since the ATLAS Detector is exposed to an intense environment during Run-3 and additionally due to its age, the operation of the detector becomes even more challenging. These challenges introduce difficulties in ensuring high data quality standards. In order to counteract against that, identifying the emerging problems in the Data Acquisition (DAQ) and Detector Control System (DCS) plays a crucial role. Therefore, a Machine Learning based anomaly detection method is employed. This method detects outliers of various time series data coming from the DAQ and DCS, to identify emerging problems before they impact the data quality. This talk will present first results of feasibility studies of using such methods in the ATLAS Pixel Detector as an example use case.oai:cds.cern.ch:28678742023
spellingShingle CERN openlab Summer Student Programme 2023
Yang, Kia-Jung
Anomaly Detection for the ATLAS Pixel Detector
title Anomaly Detection for the ATLAS Pixel Detector
title_full Anomaly Detection for the ATLAS Pixel Detector
title_fullStr Anomaly Detection for the ATLAS Pixel Detector
title_full_unstemmed Anomaly Detection for the ATLAS Pixel Detector
title_short Anomaly Detection for the ATLAS Pixel Detector
title_sort anomaly detection for the atlas pixel detector
topic CERN openlab Summer Student Programme 2023
url http://cds.cern.ch/record/2867874
work_keys_str_mv AT yangkiajung anomalydetectionfortheatlaspixeldetector
AT yangkiajung cernopenlabsummerstudentlightningtalks12