INS-DETCVLGHEP-EXDec 14, 2019

Calorimetry with Deep Learning: Particle Simulation and Reconstruction for Collider Physics

arXiv:1912.06794v3149 citations
Originality Incremental advance
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This provides a fast and computationally efficient solution for particle shower simulation and reconstruction in high-energy physics experiments, though it is incremental as it builds on existing deep learning approaches.

The paper tackles particle simulation and reconstruction in collider physics using deep learning on calorimeter shower data, showing significant improvements over state-of-the-art methods with models for end-to-end reconstruction and generative simulation.

Using detailed simulations of calorimeter showers as training data, we investigate the use of deep learning algorithms for the simulation and reconstruction of particles produced in high-energy physics collisions. We train neural networks on shower data at the calorimeter-cell level, and show significant improvements for simulation and reconstruction when using these networks compared to methods which rely on currently-used state-of-the-art algorithms. We define two models: an end-to-end reconstruction network which performs simultaneous particle identification and energy regression of particles when given calorimeter shower data, and a generative network which can provide reasonable modeling of calorimeter showers for different particle types at specified angles and energies. We investigate the optimization of our models with hyperparameter scans. Furthermore, we demonstrate the applicability of the reconstruction model to shower inputs from other detector geometries, specifically ATLAS-like and CMS-like geometries. These networks can serve as fast and computationally light methods for particle shower simulation and reconstruction for current and future experiments at particle colliders.

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