19-21 noviembre 2025
Europe/Madrid timezone

Applying Machine Learning to the WASA-FRS experiment analysis

20 nov. 2025 10:00
15m
Poster Red Temática de Física Nuclear (FNUC) Red FNUC (Red Temática de Física Nuclear)

Ponente

David Calonge (CSIC)

Descripción

The WASA-FRS HypHI Experiment focuses on the study of light hypernuclei by means of heavy-ion induced
reactions in 6Li collisions with 12C at 1.96GeV/u. It is part of the WASA-FRS experimental campaign, and so
is the eta-prime experiment [1]. The distinctive combination of the high-resolution spectrometer FRagment
Separator (FRS) [2] and the high-acceptance detector system WASA [3] is used. The experiment was success-
fully conducted at GSI-FAIR in Germany in March 2022 as a component of the FAIR Phase-0 Physics Program,
within the Super-FRS Experiment Collaboration. The primary objectives of this experiment are twofold: to
shed light on the hypertriton puzzle [4] and to investigate the existence of the previously proposed nnΛ bound
state [5]. Currently, the data from the experiment is under analysis.
Part of the data analysis is to provide a precise ion-optics of the measurement of the fragment originated from
the mesonic weak decay of the hypernuclei of interest. The reconstruction the ion-optics of fragments is based
on the calibration run of FRS optics. We have proposed to implement machine learning models and neural
networks to represent the ion-optics of FRS: While the current state of the problem involves solving equations
of motion of particles in non-ideal magnetic fields - which leads to the application of approximations in the
calculations - the implementation of data-driven models allows us to obtain accurate results with possible
better momentum and angular resolution.
Another important contribution to the analysis would be the correct identification of signal versus background
in the experimental data. For this purpose, we present an analysis using ML techniques as opposed to typical
selection conditions methods. The interest of this new approach comes from the fact that the models interpret
the physics behind the data by making more accurate cuts and more consistent with the experiment.
In this presentation, we will show two different results of the current status of the R&D in machine learning
model of the ion-optics and the prospect of the inference of the track parameters of the fragments based on the
calibration data recorded during the WASA-FRS experimental campaign of 2022 and the signal to background
ratio enhancement with ML. For the ion optics part: our model selection optimization follows this approach:
we utilize AutoML environments [6], to determine the best pipeline for our data. Once identified, this opti-
mized pipeline is implemented in a PyTorch model. Regarding the signal to background ratio enhancement,
we will make use of autoML libraries such as autogluon [7] to identify the H3Λ hypernuclei present in the
experimental datafile.
The results of this study demonstrate a robust reconstruction of the track angles in the FRS mid-focal plane,
achieving an improvement of up to a ~40%. A resolution of 0.65 mrad and 0.46 mrad was achieved for the
horizontal and vertical angular track plane, respectively. Additionally, the reconstruction of the magnetic
rigidity in the final focal plane attained a resolution Δp/p of 5 10⁻⁴. From these results, we demonstrated that
a data-driven model of non-linear ion optics is feasible. We also observed that training the full model can be
achieved very quickly, paving the way for online training during data collection at the FRS. This capability
will enable more accurate real-time analysis of fragment identification and improve the quality of the exotic
beam obtained from the fragment separator.
Also, a correct identification of signal events in the experimental data has also been carried out, which al-
lows a precise analysis of the properties of the H3Λ from the experimental data, such as the lifetime of the
hypernuclei.
[1] Y.K. Tanaka et al., J. Phys. Conf. Ser. 1643 (2020) 012181.
[2] H. Geissel et al., Nucl. Instr. and Meth. B 70 (1992) 286-297.
[3] C. Bargholtz et al., Nucl. Instr. and Meth. A 594 (2008) 339-350.
[4] T.R. Saito et al., Nature Reviews Physics 3 (2021) 803-813.
[5] C. Rappold et al., Phys. Rev. C 88 (2013) 041001.
[6] M. Feurer et al., JMLR 23 261 (2022) 1-61.
[7] N. Erickso et al., 7th ICML Workshop on AutoML (2020).

Abstract

Estudio de experimento en Física Nuclear empleando las técnicas innovadoras de Machine Learning e Inteligencia Artificial en el contexto del experimento WASA-FRS

Autores primarios

David Calonge (CSIC) Christophe Rappold (IEM, CSIC)

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