Abstract:
In this paper, an artificial neural network (ANN) is
developed to model how the geometrical parameters of hybrid
copper-graphene interconnects affect the per-unit-length
resistance values. The proposed ANN is intelligently trained using
large amounts of data representing the prior knowledge about the
interconnects, extracted from an analytical model and sparse
amount of data extracted from a rigorous full-wave
electromagnetic solver. In this way, the training of the ANN model
is accelerated without significant loss in accuracy.