Cargando…

Machine Learning for Real-Time Processing of ATLAS Liquid Argon Calorimeter Signals with FPGAs

Within the Phase-II upgrade of the LHC, the readout electronics of the ATLAS LAr Calorimeters is prepared for high luminosity operation expecting a pile-up of up to 200 simultaneous pp interactions. Moreover, the calorimeter signals of up to 25 subsequent collisions are overlapping, which increases...

Descripción completa

Detalles Bibliográficos
Autor principal: Gutsche, Christian
Lenguaje:eng
Publicado: 2023
Materias:
Acceso en línea:http://cds.cern.ch/record/2863771
_version_ 1780977917756440576
author Gutsche, Christian
author_facet Gutsche, Christian
author_sort Gutsche, Christian
collection CERN
description Within the Phase-II upgrade of the LHC, the readout electronics of the ATLAS LAr Calorimeters is prepared for high luminosity operation expecting a pile-up of up to 200 simultaneous pp interactions. Moreover, the calorimeter signals of up to 25 subsequent collisions are overlapping, which increases the difficulty of energy reconstruction. Real-time processing of digitized pulses sampled at 40 MHz is thus performed using FPGAs. To cope with the signal pile-up, new machine learning approaches are explored: convolutional and recurrent neural networks outperform the optimal signal filter currently used, both in assignment of the reconstructed energy to the correct bunch crossing and in energy resolution. Very good agreement between neural network implementations in FPGA and software based calculations is observed. The FPGA resource usage, the latency and the operation frequency are analysed. Latest performance results and experience with prototype implementations will be reported.
id cern-2863771
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2023
record_format invenio
spelling cern-28637712023-07-03T22:12:36Zhttp://cds.cern.ch/record/2863771engGutsche, ChristianMachine Learning for Real-Time Processing of ATLAS Liquid Argon Calorimeter Signals with FPGAsParticle Physics - ExperimentWithin the Phase-II upgrade of the LHC, the readout electronics of the ATLAS LAr Calorimeters is prepared for high luminosity operation expecting a pile-up of up to 200 simultaneous pp interactions. Moreover, the calorimeter signals of up to 25 subsequent collisions are overlapping, which increases the difficulty of energy reconstruction. Real-time processing of digitized pulses sampled at 40 MHz is thus performed using FPGAs. To cope with the signal pile-up, new machine learning approaches are explored: convolutional and recurrent neural networks outperform the optimal signal filter currently used, both in assignment of the reconstructed energy to the correct bunch crossing and in energy resolution. Very good agreement between neural network implementations in FPGA and software based calculations is observed. The FPGA resource usage, the latency and the operation frequency are analysed. Latest performance results and experience with prototype implementations will be reported.ATL-LARG-SLIDE-2022-699oai:cds.cern.ch:28637712023-07-03
spellingShingle Particle Physics - Experiment
Gutsche, Christian
Machine Learning for Real-Time Processing of ATLAS Liquid Argon Calorimeter Signals with FPGAs
title Machine Learning for Real-Time Processing of ATLAS Liquid Argon Calorimeter Signals with FPGAs
title_full Machine Learning for Real-Time Processing of ATLAS Liquid Argon Calorimeter Signals with FPGAs
title_fullStr Machine Learning for Real-Time Processing of ATLAS Liquid Argon Calorimeter Signals with FPGAs
title_full_unstemmed Machine Learning for Real-Time Processing of ATLAS Liquid Argon Calorimeter Signals with FPGAs
title_short Machine Learning for Real-Time Processing of ATLAS Liquid Argon Calorimeter Signals with FPGAs
title_sort machine learning for real-time processing of atlas liquid argon calorimeter signals with fpgas
topic Particle Physics - Experiment
url http://cds.cern.ch/record/2863771
work_keys_str_mv AT gutschechristian machinelearningforrealtimeprocessingofatlasliquidargoncalorimetersignalswithfpgas