Abstract
A quantum dot network, which consists of coupled structures of randomly
dispersed quantum dots, has been studied as a nano-scale optical
reservoir for effective machine learning processing. In this study, we
defined spatio-temporal fluorescence of a quantum dot network as the
reservoir output, which is due to the characteristic dynamics of the
excited energy in the network induced by laser pulse irradiation. In
order to verify whether a quantum dot reservoir can improve the
processing efficiency of advanced machine learning applications, we
performed experimental reservoir computing using a numerical model.
Several parameters that were required for the construction of the
model were defined from the spatio-temporal fluorescence of an
experimental quantum dot reservoir. Subsequently, the corresponding
reservoir computing based on the model was numerically demonstrated.
Reliable performances were successfully demonstrated as sufficient
error rates toward the delayed XOR task. Additionally, the dependency
on quantum dot compositions of these performances was clarified.
Funder
Core Research for Evolutional Science and
Technology