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Machine learning applications in Gravitational Wave research to classify transient signals

<!--HTML--><p><span><span><span>Most of the data collected by Gravitational Wave (GW) interferometers are&nbsp;essentially background noise containing many noise transient signals, which has&nbsp;to be analyzed in a fast and efficient way to increase the detecti...

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Autor principal: Cuoco, Elena
Lenguaje:eng
Publicado: 2019
Materias:
Acceso en línea:http://cds.cern.ch/record/2659418
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author Cuoco, Elena
author_facet Cuoco, Elena
author_sort Cuoco, Elena
collection CERN
description <!--HTML--><p><span><span><span>Most of the data collected by Gravitational Wave (GW) interferometers are&nbsp;essentially background noise containing many noise transient signals, which has&nbsp;to be analyzed in a fast and efficient way to increase the detection confidence&nbsp;and to obtain information about likely noise sources.</span></span></span></p> <p><span><span><span>Characterizing the noise transient signals (glitches) is an important task to&nbsp;reduce the impact of transient noise on the detectors. Inspecting glitches&nbsp;manually is a time-consuming and error-prone task and the increase of&nbsp;sensitivity in advanced detectors will lead to more classes of glitches. The use&nbsp;of machine learning looks a promising way to tackle the classification of&nbsp;glitches. </span></span></span></p> <p><span><span><span>We present classification strategy based on image or time-series data set.</span></span></span></p>
id cern-2659418
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2019
record_format invenio
spelling cern-26594182022-11-02T22:31:43Zhttp://cds.cern.ch/record/2659418engCuoco, ElenaMachine learning applications in Gravitational Wave research to classify transient signalsMachine learning applications in Gravitational Wave research to classify transient signalsEP-IT Data science seminars<!--HTML--><p><span><span><span>Most of the data collected by Gravitational Wave (GW) interferometers are&nbsp;essentially background noise containing many noise transient signals, which has&nbsp;to be analyzed in a fast and efficient way to increase the detection confidence&nbsp;and to obtain information about likely noise sources.</span></span></span></p> <p><span><span><span>Characterizing the noise transient signals (glitches) is an important task to&nbsp;reduce the impact of transient noise on the detectors. Inspecting glitches&nbsp;manually is a time-consuming and error-prone task and the increase of&nbsp;sensitivity in advanced detectors will lead to more classes of glitches. The use&nbsp;of machine learning looks a promising way to tackle the classification of&nbsp;glitches. </span></span></span></p> <p><span><span><span>We present classification strategy based on image or time-series data set.</span></span></span></p>oai:cds.cern.ch:26594182019
spellingShingle EP-IT Data science seminars
Cuoco, Elena
Machine learning applications in Gravitational Wave research to classify transient signals
title Machine learning applications in Gravitational Wave research to classify transient signals
title_full Machine learning applications in Gravitational Wave research to classify transient signals
title_fullStr Machine learning applications in Gravitational Wave research to classify transient signals
title_full_unstemmed Machine learning applications in Gravitational Wave research to classify transient signals
title_short Machine learning applications in Gravitational Wave research to classify transient signals
title_sort machine learning applications in gravitational wave research to classify transient signals
topic EP-IT Data science seminars
url http://cds.cern.ch/record/2659418
work_keys_str_mv AT cuocoelena machinelearningapplicationsingravitationalwaveresearchtoclassifytransientsignals