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19–29 avr. 2022
Institut Pascal
Fuseau horaire Europe/Paris

Overview of Machine Learning for Calorimeter and Particle Flow

19 avr. 2022, 14:00
1h
Institut Pascal

Institut Pascal

Orateur

Joosep Pata (NICPB, Tallinn)

Description

The reconstruction of particle signals relies on local reconstrution, which involves clustering of granular hits within detector subsystems, followed by global reconstruction, combining signals across detector subsystems for a high-level particle representation of the event. Calorimeter clustering is a local reconstruction method that aims to segment calorimeter hits according to their particle origin. Recently, in light of the future high-granularity detector configurations, considerable progress has been made in disentangling overlapping showers in highly granular detectors using machine learning. Once clusters and tracks are reconstructed, particle-flow algorithms combine the information globally across the detector for an optimized particle-level reconstruction. Machine learning approaches have recently been demonstrated to offer comparable performance to heuristic particle flow algorithms, while potentially allowing for native deployment on heterogeneous platforms. I will give a summary of the progress towards ML-based calorimeter reconstruction and particle flow.

Documents de présentation