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Ultra-high-granularity detector simulation with intra-event aware generative adversarial network and self-supervised relational reasoning

Baran Hashemi, N. M. Hartmann, Sahand Sharifzadeh, James G. Kahn, T. Kuhr

2024Nature Communications24 citationsDOIOpen Access PDF

Abstract

Simulating high-resolution detector responses is a computationally intensive process that has long been challenging in Particle Physics. Despite the ability of generative models to streamline it, full ultra-high-granularity detector simulation still proves to be difficult as it contains correlated and fine-grained information. To overcome these limitations, we propose Intra-Event Aware Generative Adversarial Network (IEA-GAN). IEA-GAN presents a Transformer-based Relational Reasoning Module that approximates an event in detector simulation, generating contextualized high-resolution full detector responses with a proper relational inductive bias. IEA-GAN also introduces a Self-Supervised intra-event aware loss and Uniformity loss, significantly enhancing sample fidelity and diversity. We demonstrate IEA-GAN's application in generating sensor-dependent images for the ultra-high-granularity Pixel Vertex Detector (PXD), with more than 7.5 M information channels at the Belle II Experiment. Applications of this work span from Foundation Models for high-granularity detector simulation, such as at the HL-LHC (High Luminosity LHC), to simulation-based inference and fine-grained density estimation.

Topics & Concepts

GranularityComputer scienceAdversarial systemGenerative adversarial networkEvent (particle physics)Generative grammarDetectorArtificial intelligenceData miningMachine learningTheoretical computer scienceDeep learningPhysicsProgramming languageQuantum mechanicsTelecommunicationsRadiation Detection and Scintillator TechnologiesParticle Detector Development and PerformanceParticle physics theoretical and experimental studies
Ultra-high-granularity detector simulation with intra-event aware generative adversarial network and self-supervised relational reasoning | Litcius