The CYGNO experiment is developing a high-resolution gaseous Time Projection Chamber with optical readout for directional dark matter searches. The detector uses a helium-tetrafluoromethane (He:CF 60:40) gas mixture at atmospheric pressure and a triple Gas Electron Multiplier amplification stage, coupled with a scientific camera for high-resolution 2D imaging and fast photomultipliers for time-resolved scintillation light detection. This setup enables 3D event reconstruction: photomultiplier signals provide depth information, while the camera delivers high-precision transverse resolution. In this work, we present a Bayesian Network-based algorithm designed to reconstruct the events using only the photomultiplier signals, inferring a 3D description of the particle trajectories. The algorithm models the light collection process probabilistically and estimates spatial and intensity parameters on the Gas Electron Multiplier plane, where light emission occurs. It is implemented within the Bayesian Analysis Toolkit and uses Markov Chain Monte Carlo sampling for posterior inference. Validation using data from the CYGNO LIME prototype shows accurate reconstruction of localized and extended straight tracks. Results demonstrate that the Bayesian approach enables robust 3D description and, when combined with camera data, opens the way to future improvements in spatial and energy resolution. This methodology represents a significant step forward in directional dark matter detection, enhancing the identification of nuclear recoil tracks with high spatial resolution.
Bayesian network 3D event reconstruction in the Cygno optical TPC for dark matter direct detection / Amaro, Fernando Domingues; Antonietti, Rita; Baracchini, Elisabetta; Benussi, Luigi; Bianco, Stefano; Borra, Francesco; Capoccia, Cesidio; Caponero, Michele; Cavoto, Gianluca; Costa, Igor Abritta; Croce, Antonio; Dané, Emiliano; D'Astolfo, Melba; Dho, Giorgio; Di Giambattista, Flaminia; Di Marco, Emanuele; D'Imperio, Giulia; Folcarelli, Matteo; Dos Santos, Joaquim Marques Ferreira; Fiorina, Davide; Iacoangeli, Francesco; Islam, Zahoor Ul; Lima, Herman Pessoa; Kemp, Ernesto; Maccarrone, Giovanni; Mano, Rui Daniel Passos; Marques, David José Gaspar; De Carvalho, Luan Gomes Mattosinhos; Mazzitelli, Giovanni; Mclean, Alasdair Gregor; Meloni, Pietro; Messina, Andrea; Monteiro, Cristina Maria Bernardes; Nobrega, Rafael Antunes; Pains, Igor Fonseca; Paoletti, Emiliano; Passamonti, Luciano; Petrucci, Fabrizio; Piacentini, Stefano; Piccolo, Davide; Pierluigi, Daniele; Pinci, Davide; Prajapati, Atul; Renga, Francesco; Roque, Rita Joana Cruz; Rosatelli, Filippo; Russo, Alessandro; Saviano, Giovanna; Silva, Pedro Alberto Oliveira Costa; Spooner, Neil John Curwen; Tesauro, Roberto; Tomassini, Sandro; Torelli, Samuele; Tozzi, Donatella. - In: EUROPEAN PHYSICAL JOURNAL. C, PARTICLES AND FIELDS. - ISSN 1434-6052. - 85:11(2025), pp. 1-12. [10.1140/epjc/s10052-025-14965-6]
Bayesian network 3D event reconstruction in the Cygno optical TPC for dark matter direct detection
Cavoto, GianlucaMembro del Collaboration Group
;Folcarelli, Matteo
Membro del Collaboration Group
;Messina, AndreaConceptualization
;Saviano, GiovannaMembro del Collaboration Group
;Tozzi, DonatellaMembro del Collaboration Group
2025
Abstract
The CYGNO experiment is developing a high-resolution gaseous Time Projection Chamber with optical readout for directional dark matter searches. The detector uses a helium-tetrafluoromethane (He:CF 60:40) gas mixture at atmospheric pressure and a triple Gas Electron Multiplier amplification stage, coupled with a scientific camera for high-resolution 2D imaging and fast photomultipliers for time-resolved scintillation light detection. This setup enables 3D event reconstruction: photomultiplier signals provide depth information, while the camera delivers high-precision transverse resolution. In this work, we present a Bayesian Network-based algorithm designed to reconstruct the events using only the photomultiplier signals, inferring a 3D description of the particle trajectories. The algorithm models the light collection process probabilistically and estimates spatial and intensity parameters on the Gas Electron Multiplier plane, where light emission occurs. It is implemented within the Bayesian Analysis Toolkit and uses Markov Chain Monte Carlo sampling for posterior inference. Validation using data from the CYGNO LIME prototype shows accurate reconstruction of localized and extended straight tracks. Results demonstrate that the Bayesian approach enables robust 3D description and, when combined with camera data, opens the way to future improvements in spatial and energy resolution. This methodology represents a significant step forward in directional dark matter detection, enhancing the identification of nuclear recoil tracks with high spatial resolution.| File | Dimensione | Formato | |
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