Signal-background discrimination with convolutional neural networks in the PandaX-III experiment using MC simulation
arXiv:1802.03489 · doi:10.1007/s11433-018-9233-5
Abstract
The PandaX-III experiment will search for neutrinoless double beta decay of $^{136}$Xe with high pressure gaseous time projection chambers at the China Jin-Ping underground Laboratory. The tracking feature of gaseous detectors helps suppress the background level, resulting in the improvement of the detection sensitivity. We study a method based on the convolutional neural networks to discriminate double beta decay signals against the background from high energy gammas generated by $^{214}$Bi and $^{208}$Tl decays based on detailed Monte Carlo simulation. Using the 2-dimensional projections of recorded tracks on two planes, the method successfully suppresses the background level by a factor larger than 100 with a high signal efficiency. An improvement of $62\%$ on the efficiency ratio of $ε_{s}/\sqrt{ε_{b}}$ is achieved in comparison with the baseline in the PandaX-III conceptual design report.
version accepted by SCPMA, 11 pages, 10 figures and 4 tables