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Application and development of advanced deep neural networks for high-granularity calorimeters.
<!--HTML--><p>High-granularity calorimeters, in particular those providing also fine-grained lateral resolution, offer unique possibilities to resolve the development of individual particle showers, separate electromagnetic and hadronic contributions on a shower-by-shower basis and perfo...
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Lenguaje: | eng |
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2020
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Acceso en línea: | http://cds.cern.ch/record/2707944 |
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author | Kieseler, Jan |
author_facet | Kieseler, Jan |
author_sort | Kieseler, Jan |
collection | CERN |
description | <!--HTML--><p>High-granularity calorimeters, in particular those providing also fine-grained lateral resolution, offer unique possibilities to resolve the development of individual particle showers, separate electromagnetic and hadronic contributions on a shower-by-shower basis and perform calorimeter-driven identification tasks. Furthermore, they can be operated as tracking detectors, which makes it possible to follow the trajectories e.g. of muons passing through and connect individual parts of hadronic showers, provided the energy threshold is below MIP level. Analytic solutions based on simplified models and few tuneable parameters might not be able to harness the full potential in particular for hadronic showers. Machine learning techniques, however, have been very successful in pattern recognition tasks for images or - lately - point clouds, where algorithmic solutions tend to be overly complex and - at the same time - by far do not reach the same performance. <br />
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The seminar will cover applications of neural network architectures to shower segmentation, particle identification and energy regression in high granularity calorimeters. The detector geometries and physics considerations call for customised solutions, therefore the focus will be on dedicated developments, such as special graph neural networks, and how they can be applied physics problems. This demand for new solutions triggers machine-learning developments beyond calorimeters with impact on other areas of reconstruction such as tracking and global event reconstruction, e.g. particle flow, but also beyond particle physics.</p> |
id | cern-2707944 |
institution | Organización Europea para la Investigación Nuclear |
language | eng |
publishDate | 2020 |
record_format | invenio |
spelling | cern-27079442022-11-02T22:31:43Zhttp://cds.cern.ch/record/2707944engKieseler, JanApplication and development of advanced deep neural networks for high-granularity calorimeters.Application and development of advanced deep neural networks for high-granularity calorimeters.EP-IT Data science seminars<!--HTML--><p>High-granularity calorimeters, in particular those providing also fine-grained lateral resolution, offer unique possibilities to resolve the development of individual particle showers, separate electromagnetic and hadronic contributions on a shower-by-shower basis and perform calorimeter-driven identification tasks. Furthermore, they can be operated as tracking detectors, which makes it possible to follow the trajectories e.g. of muons passing through and connect individual parts of hadronic showers, provided the energy threshold is below MIP level. Analytic solutions based on simplified models and few tuneable parameters might not be able to harness the full potential in particular for hadronic showers. Machine learning techniques, however, have been very successful in pattern recognition tasks for images or - lately - point clouds, where algorithmic solutions tend to be overly complex and - at the same time - by far do not reach the same performance. <br /> <br /> The seminar will cover applications of neural network architectures to shower segmentation, particle identification and energy regression in high granularity calorimeters. The detector geometries and physics considerations call for customised solutions, therefore the focus will be on dedicated developments, such as special graph neural networks, and how they can be applied physics problems. This demand for new solutions triggers machine-learning developments beyond calorimeters with impact on other areas of reconstruction such as tracking and global event reconstruction, e.g. particle flow, but also beyond particle physics.</p>oai:cds.cern.ch:27079442020 |
spellingShingle | EP-IT Data science seminars Kieseler, Jan Application and development of advanced deep neural networks for high-granularity calorimeters. |
title | Application and development of advanced deep neural networks for high-granularity calorimeters. |
title_full | Application and development of advanced deep neural networks for high-granularity calorimeters. |
title_fullStr | Application and development of advanced deep neural networks for high-granularity calorimeters. |
title_full_unstemmed | Application and development of advanced deep neural networks for high-granularity calorimeters. |
title_short | Application and development of advanced deep neural networks for high-granularity calorimeters. |
title_sort | application and development of advanced deep neural networks for high-granularity calorimeters. |
topic | EP-IT Data science seminars |
url | http://cds.cern.ch/record/2707944 |
work_keys_str_mv | AT kieselerjan applicationanddevelopmentofadvanceddeepneuralnetworksforhighgranularitycalorimeters |