English

Multi-channel, multi-template event reconstruction for SuperCDMS data using machine learning

Instrumentation and Detectors 2025-08-28 v1 High Energy Physics - Experiment

Abstract

SuperCDMS SNOLAB uses kilogram-scale germanium and silicon detectors to search for dark matter. Each detector has Transition Edge Sensors (TESs) patterned on the top and bottom faces of a large crystal substrate, with the TESs electrically grouped into six phonon readout channels per face. Noise correlations are expected among a detector's readout channels, in part because the channels and their readout electronics are located in close proximity to one another. Moreover, owing to the large size of the detectors, energy deposits can produce vastly different phonon propagation patterns depending on their location in the substrate, resulting in a strong position dependence in the readout-channel pulse shapes. Both of these effects can degrade the energy resolution and consequently diminish the dark matter search sensitivity of the experiment if not accounted for properly. We present a new algorithm for pulse reconstruction, mathematically formulated to take into account correlated noise and pulse shape variations. This new algorithm fits N readout channels with a superposition of M pulse templates simultaneously - hence termed the N×\timesM filter. We describe a method to derive the pulse templates using principal component analysis (PCA) and to extract energy and position information using a gradient boosted decision tree (GBDT). We show that these new N×\timesM and GBDT analysis tools can reduce the impact from correlated noise sources while improving the reconstructed energy resolution for simulated mono-energetic events by more than a factor of three and for the 71Ge K-shell electron-capture peak recoils measured in a previous version of SuperCDMS called CDMSlite to << 50 eV from the previously published value of \sim100 eV. These results lay the groundwork for position reconstruction in SuperCDMS with the N×\timesM outputs.

Keywords

Cite

@article{arxiv.2508.20090,
  title  = {Multi-channel, multi-template event reconstruction for SuperCDMS data using machine learning},
  author = {M. F. Albakry and I. Alkhatib and D. Alonso-Gonzalez and J. Anczarski and T. Aralis and T. Aramaki and I. Ataee Langroudy and C. Bathurst and R. Bhattacharyya and A. J. Biff and P. L. Brink and M. Buchanan and R. Bunker and B. Cabrera and R. Calkins and R. A. Cameron and C. Cartaro and D. G. Cerdeno and Y. -Y. Chang and M. Chaudhuri and J. H. Chen and R. Chen and N. Chott and J. Cooley and H. Coombes and P. Cushman and R. Cyna and S. Das and S. Dharani and M. L. di Vacri and M. D. Diamond and M. Elwan and S. Fallows and E. Fascione and E. Figueroa-Feliciano and S. L. Franzen and A. Gevorgian and M. Ghaith and G. Godden and J. Golatkara and S. R. Golwala and R. Gualtieri and J. Hall and S. A. S. Harms and C. Hays and B. A. Hines and Z. Hong and L. Hsu and M. E. Huber and V. Iyer and V. K. S. Kashyap and S. T. D. Keller and M. H. Kelsey and K. T. Kennard and Z. Kromer and A. Kubik and N. A. Kurinsky and M. Lee and J. Leyva and B. Lichtenberga and J. Liu and Y. Liu and E. Lopez Asamard and P. Lukens and R. Lopez Noe and D. B. MacFarlane and R. Mahapatra and J. S. Mammo and A. J. Mayer and P. C. McNamara and E. Michaud and E. Michielin and K. Mickelson and N. Mirabolfathi and M. Mirzakhani and B. Mohanty and D. Mondal and D. Monteiro and J. Nelson and H. Neog and J. L. Orrell and M. D. Osborne and S. M. Oser and L. Pandey and S. Pandey and R. Partridge and P. K. Patel and D. S. Pedrerosa and W. Peng and W. L. Perry and R. Podviianiuk and M. Potts and S. S. Poudel and A. Pradeep and M. Pyle and W. Rau and T. Reynold and M. Rios and A. Roberts and A. E. Robinson and L. Rosado and J. L. Ryan and T. Saab and D. Sadek and B. Sadoulet and S. P. Sahoo and I. Saikia and S. Salehi and J. Sander and B. Sandoval and A. Sattari and R. W. Schnee and B. Serfass and A. E. Sharbaugh and R. S. Shenoy and A. Simchony and P. Sinervo and Z. J. Smith and R. Soni and K. Stifter and J. Street and M. Stukel and H. Sun and E. Tanner and N. Tenpas and D. Toback and A. N. Villano and J. Viola and B. von Krosigk and O. Wen and Z. William and M. J. Wilson and J. Winchell and S. Yellin and B. A. Young and B. Zatschler and S. Zatschler and A. Zaytsev and E. Zhang and L. Zheng and A. Zuniga and M. J. Zurowski},
  journal= {arXiv preprint arXiv:2508.20090},
  year   = {2025}
}

Comments

22 pages, 8 figures

R2 v1 2026-07-01T05:08:51.943Z