Abstract
Abstract
The PandaX-III is a Neutrinoless Double-Beta Decay (NLDBD) experiment which uses a Time
Projection Chamber (TPC) detector with a readout plane formed of Micromegas modules, which allows
reconstruction of track topology for the background discrimination as well as reconstruction of
the energy of the events. In NLDBD experiments, in order to achieve the highest sensitivity to the
decay, it is necessary for the detector to have a high energy resolution, the background level
should be low, and techniques for background discrimination must be applied as well. In reality,
inhomogeneous signal gain at each module and the presence of missing channels lead to an incorrect
energy reconstruction of the events. In this work, a method based on a Convolutional Neural
Networks (CNN) aiming to reconstruct the kinematics of the event from imperfect data with missing
channels is presented. Preliminary results of the reconstruction of the missing data using CNN
are showing an increase in detection efficiency. The detection efficiency was evaluated on the
simulated data with three channels randomly chosen per Micromegas module and artificially set as
missing. Direct reconstruction of the energy gives the efficiency of 78%, while after applying
CNN it increases to 86%, providing a promising application of this technique.
Subject
Mathematical Physics,Instrumentation