Study of residual artificial neural network for particle identification in the CEPC high-granularity calorimeter prototype
S. Song,
J. Chen,
J. Liu
et al.
Abstract:Particle Identification (PID) plays a central role in
associating the energy depositions in calorimeter cells with the
type of primary particle in a particle flow oriented detector
system. In this paper, we propose novel PID methods based on the
Residual Network (ResNet) architecture which enable the training of
very deep networks, bypass the need to reconstruct feature
variables, and ensure the generalization ability among various
geometries of detectors, to classify electromagnetic showers and
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