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Benchmark of Generative Adversarial Networks for Fast HEP Calorimeter Simulations

Highly precise simulations of elementary particles interaction and processes are fundamental to accurately reproduce and interpret the experimental results in High Energy Physics (HEP) detectors and to correctly reconstruct the particle flows. Today, detector simulations typically rely on Monte Carl...

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Autores principales: Rehm, Florian, Vallecorsa, Sofia, Borras, Kerstin, Krücker, Dirk
Lenguaje:eng
Publicado: 2021
Materias:
Acceso en línea:http://cds.cern.ch/record/2824407
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author Rehm, Florian
Vallecorsa, Sofia
Borras, Kerstin
Krücker, Dirk
author_facet Rehm, Florian
Vallecorsa, Sofia
Borras, Kerstin
Krücker, Dirk
author_sort Rehm, Florian
collection CERN
description Highly precise simulations of elementary particles interaction and processes are fundamental to accurately reproduce and interpret the experimental results in High Energy Physics (HEP) detectors and to correctly reconstruct the particle flows. Today, detector simulations typically rely on Monte Carlo-based methods which are extremely demanding in terms of computing resources. The need for simulated data at future experiments - like the ones that will run at the High Luminosity Large Hadron Collider (HL-LHC) - are expected to increase by orders of magnitude, increasing drastically the computational challenge. This expectation motivates the research for alternative deep learning-based simulation strategies. In this research we speed-up HEP detector simulations for the specific case of calorimeters using Generative Adversarial Networks (GANs) with a huge factor of over 150 000x compared to the standard Monte Carlo simulations. This could only be achieved by designing smart convolutional 2D network architectures for generating 3D images representing the detector volume. Detailed physics evaluation shows an accuracy similar to the Monte Carlo simulation. Furthermore, we quantize the data format for the neural network architecture (float32) with the Intel Low Precision Optimization tool (LPOT) to a reduced precision (int8) data format. This results in an additional 1.8x speed-up on modern Intel hardware while maintaining the physics accuracy. These excellent results consolidate the beneficial use of GANs for future fast detector simulations.
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institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2021
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spelling cern-28244072022-08-11T18:17:04Zhttp://cds.cern.ch/record/2824407engRehm, FlorianVallecorsa, SofiaBorras, KerstinKrücker, DirkBenchmark of Generative Adversarial Networks for Fast HEP Calorimeter SimulationsDetectors and Experimental TechniquesComputing and ComputersHighly precise simulations of elementary particles interaction and processes are fundamental to accurately reproduce and interpret the experimental results in High Energy Physics (HEP) detectors and to correctly reconstruct the particle flows. Today, detector simulations typically rely on Monte Carlo-based methods which are extremely demanding in terms of computing resources. The need for simulated data at future experiments - like the ones that will run at the High Luminosity Large Hadron Collider (HL-LHC) - are expected to increase by orders of magnitude, increasing drastically the computational challenge. This expectation motivates the research for alternative deep learning-based simulation strategies. In this research we speed-up HEP detector simulations for the specific case of calorimeters using Generative Adversarial Networks (GANs) with a huge factor of over 150 000x compared to the standard Monte Carlo simulations. This could only be achieved by designing smart convolutional 2D network architectures for generating 3D images representing the detector volume. Detailed physics evaluation shows an accuracy similar to the Monte Carlo simulation. Furthermore, we quantize the data format for the neural network architecture (float32) with the Intel Low Precision Optimization tool (LPOT) to a reduced precision (int8) data format. This results in an additional 1.8x speed-up on modern Intel hardware while maintaining the physics accuracy. These excellent results consolidate the beneficial use of GANs for future fast detector simulations.oai:cds.cern.ch:28244072021
spellingShingle Detectors and Experimental Techniques
Computing and Computers
Rehm, Florian
Vallecorsa, Sofia
Borras, Kerstin
Krücker, Dirk
Benchmark of Generative Adversarial Networks for Fast HEP Calorimeter Simulations
title Benchmark of Generative Adversarial Networks for Fast HEP Calorimeter Simulations
title_full Benchmark of Generative Adversarial Networks for Fast HEP Calorimeter Simulations
title_fullStr Benchmark of Generative Adversarial Networks for Fast HEP Calorimeter Simulations
title_full_unstemmed Benchmark of Generative Adversarial Networks for Fast HEP Calorimeter Simulations
title_short Benchmark of Generative Adversarial Networks for Fast HEP Calorimeter Simulations
title_sort benchmark of generative adversarial networks for fast hep calorimeter simulations
topic Detectors and Experimental Techniques
Computing and Computers
url http://cds.cern.ch/record/2824407
work_keys_str_mv AT rehmflorian benchmarkofgenerativeadversarialnetworksforfasthepcalorimetersimulations
AT vallecorsasofia benchmarkofgenerativeadversarialnetworksforfasthepcalorimetersimulations
AT borraskerstin benchmarkofgenerativeadversarialnetworksforfasthepcalorimetersimulations
AT kruckerdirk benchmarkofgenerativeadversarialnetworksforfasthepcalorimetersimulations