Peak finding algorithm for cluster counting with domain adaptation

Cluster counting in drift chamber is the most promising breakthrough in particle identification (PID) technique in particle physics experiment. Reconstruction algorithm is one of the key challenges in cluster counting. In this paper, a semi-supervised domain adaptation (DA) algorithm is developed an...

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Veröffentlicht in:Computer physics communications 2024-07, Vol.300, p.109208, Article 109208
Hauptverfasser: Zhao, Guang, Wu, Linghui, Grancagnolo, Francesco, De Filippis, Nicola, Dong, Mingyi, Sun, Shengsen
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Sprache:eng
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Zusammenfassung:Cluster counting in drift chamber is the most promising breakthrough in particle identification (PID) technique in particle physics experiment. Reconstruction algorithm is one of the key challenges in cluster counting. In this paper, a semi-supervised domain adaptation (DA) algorithm is developed and applied on the peak finding problem in cluster counting. The algorithm uses optimal transport (OT), which provides geometric metric between distributions, to align the samples between the source (simulation) and target (data) samples, and performs semi-supervised learning with the samples in target domain that are partially labeled with the continuous wavelet transform (CWT) algorithm. The model is validated by the pseudo data with labels, which achieves performance close to the fully supervised model. When applying the algorithm on real experimental data, taken at CERN with a 180 GeV/c muon beam, it shows better classification power than the traditional derivative-based algorithm, and the performance is stable for experimental data samples across varying track lengths.
ISSN:0010-4655
1879-2944
DOI:10.1016/j.cpc.2024.109208