Author:
Meyer zu Theenhausen H.,von Krosigk B.,Wilson J.S.
Abstract
Abstract
The extended physics program of the SuperCDMS SNOLAB dark
matter search experiment aims to maximize the sensitivity to
low-mass dark matter. To realize this, an upgrade of the existing
level-1 trigger of the data acquisition system is proposed by making
use of a recurrent neural network to be implemented on the trigger
FPGA. This provides an improved amplitude estimator and signal-noise
discriminator based on the combined information of filtered traces
from individual detector channels. The architecture and
configuration of this neural trigger are discussed in this article,
and the improvements in key performance indicators such as the
efficiency, resolution, and noise rate are quantified based on
signal simulations and noise data. Based on the findings in this
proof of concept, the trigger threshold is expected to be lowered by
∼ 22%.
Subject
Mathematical Physics,Instrumentation