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Antimatter Annihilation Vertex Reconstruction with Deep Learning for ALPHA-g Radial Time Projection Chamber

13 February 2025
Ashley Ferreira
Mahip Singh
Yukiya Saito
Andrea Capra
Ina Carli
Daniel Duque Quiceno
Wojciech T. Fedorko
Makoto C. Fujiwara
Muyan Li
Lars Martin
Gareth Smith
Anqui Xu
    3DPC
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Abstract

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.

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@article{ferreira2025_2502.12169,
  title={ Antimatter Annihilation Vertex Reconstruction with Deep Learning for ALPHA-g Radial Time Projection Chamber },
  author={ Ashley Ferreira and Mahip Singh and Yukiya Saito and Andrea Capra and Ina Carli and Daniel Duque Quiceno and Wojciech T. Fedorko and Makoto C. Fujiwara and Muyan Li and Lars Martin and Gareth Smith and Anqui Xu },
  journal={arXiv preprint arXiv:2502.12169},
  year={ 2025 }
}
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