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Main Authors: Ferreira, Ashley, Singh, Mahip, Saito, Yukiya, Capra, Andrea, Carli, Ina, Quiceno, Daniel Duque, Fedorko, Wojciech T., Fujiwara, Makoto C., Li, Muyan, Martin, Lars, Smith, Gareth, Xu, Anqui
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2502.12169
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author Ferreira, Ashley
Singh, Mahip
Saito, Yukiya
Capra, Andrea
Carli, Ina
Quiceno, Daniel Duque
Fedorko, Wojciech T.
Fujiwara, Makoto C.
Li, Muyan
Martin, Lars
Smith, Gareth
Xu, Anqui
author_facet Ferreira, Ashley
Singh, Mahip
Saito, Yukiya
Capra, Andrea
Carli, Ina
Quiceno, Daniel Duque
Fedorko, Wojciech T.
Fujiwara, Makoto C.
Li, Muyan
Martin, Lars
Smith, Gareth
Xu, Anqui
contents The ALPHA-g experiment at CERN aims to precisely measure the terrestrial gravitational acceleration of antihydrogen atoms. A radial Time Projection Chamber (rTPC), that surrounds the ALPHA-g magnetic trap, is employed to determine the annihilation location, called the vertex. The standard approach requires identifying the trajectories of the ionizing particles in the rTPC from the location of their interaction in the gas (spacepoints), and inferring the vertex positions by finding the point where those trajectories (helices) pass closest to one another. In this work, we present a novel approach to vertex reconstruction using an ensemble of models based on the PointNet deep learning architecture. The newly developed model, PointNet Ensemble for Annihilation Reconstruction (PEAR), directly learns the relation between the location of the vertices and the rTPC spacepoints, thus eliminating the need to identify and fit the particle tracks. PEAR shows strong performance in reconstructing vertical vertex positions from simulated data, that is superior to the standard approach for all metrics considered. Furthermore, the deep learning approach can reconstruct the vertical vertex position when the standard approach fails.
format Preprint
id arxiv_https___arxiv_org_abs_2502_12169
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Antimatter Annihilation Vertex Reconstruction with Deep Learning for ALPHA-g Radial Time Projection Chamber
Ferreira, Ashley
Singh, Mahip
Saito, Yukiya
Capra, Andrea
Carli, Ina
Quiceno, Daniel Duque
Fedorko, Wojciech T.
Fujiwara, Makoto C.
Li, Muyan
Martin, Lars
Smith, Gareth
Xu, Anqui
Instrumentation and Detectors
Machine Learning
High Energy Physics - Experiment
The ALPHA-g experiment at CERN aims to precisely measure the terrestrial gravitational acceleration of antihydrogen atoms. A radial Time Projection Chamber (rTPC), that surrounds the ALPHA-g magnetic trap, is employed to determine the annihilation location, called the vertex. The standard approach requires identifying the trajectories of the ionizing particles in the rTPC from the location of their interaction in the gas (spacepoints), and inferring the vertex positions by finding the point where those trajectories (helices) pass closest to one another. In this work, we present a novel approach to vertex reconstruction using an ensemble of models based on the PointNet deep learning architecture. The newly developed model, PointNet Ensemble for Annihilation Reconstruction (PEAR), directly learns the relation between the location of the vertices and the rTPC spacepoints, thus eliminating the need to identify and fit the particle tracks. PEAR shows strong performance in reconstructing vertical vertex positions from simulated data, that is superior to the standard approach for all metrics considered. Furthermore, the deep learning approach can reconstruct the vertical vertex position when the standard approach fails.
title Antimatter Annihilation Vertex Reconstruction with Deep Learning for ALPHA-g Radial Time Projection Chamber
topic Instrumentation and Detectors
Machine Learning
High Energy Physics - Experiment
url https://arxiv.org/abs/2502.12169