Improving Pulse Shape Simulations with Generative Adversarial Machine Learning

ORAL

Abstract

The Large Enriched Germanium Experiment for Neutrinoless double-beta Decay (LEGEND) collaboration is searching for neutrinoless double-beta 0νββ decay in 76Ge using modular arrays of germanium detectors enriched in the isotope. Candidate 0νββ events happen at a single site in the germanium detector. Pulse shape simulations to model the movement of charge carriers in the detectors are key to accurately modelling requirements that can reject background from multi-site and surface events. However, a series of corrections based on physical first principles are needed to correctly generate an accurate detector response. We present a novel neural network model called Cyclic Positional U-Net (CPU-Net) that enables translations of simulated pulses such that they are indistinguishable from actual detector pulses. The model uses a CycleGAN framework to develop an Ad-hoc Translation Network (ATN) for such translations with high precision and low latency. Using an HPGe detector, we demonstrate that the model correctly reproduces critical pulse shape reconstruction parameters, and that its data-driven nature enables generalization to multiple detectors and operating conditions without detector-wise model tuning.

*This work is supported by the U.S. DOE, and the NSF, the LANL, ORNL and LBNL LDRD programs; the European ERC and Horizon programs; the German DFG, BMBF, and MPG;the Italian INFN;the Polish NCN and MNiSW;the Czech MEYS;the Slovak SRDA; the Swiss SNF;the UK STFC; the Russian RFBR ;the Canadian NSERC and CFI; the LNGS and SURF facilities.

Presenters

  • Kevin H Bhimani

    • University of North Carolina at Chapel Hill

Authors

  • Kevin H Bhimani

    • University of North Carolina at Chapel Hill
  • Aobo Li

    • University of North Carolina at Chapel H
  • Julieta Gruszko

    • University of North Carolina
    • University of North Carolina at Chapel Hill