Bridging the reality gap in quantum devices with physics-aware machine learning
The discrepancies between reality and simulation impede the optimisation and
scalability of solid-state quantum devices. Disorder induced by the
unpredictable distribution of material defects is one of the major
contributions to the reality gap. We bridge this gap using physics-aware
machine learning, in particular, using an approach combining a physical model,
deep learning, Gaussian random field, and Bayesian inference. This approach has
enabled us to infer the disorder potential of a nanoscale electronic device
from electron transport data. This inference is validated by verifying the
algorithm's predictions about the gate voltage values required for a
laterally-defined quantum dot device in AlGaAs/GaAs to produce current features
corresponding to a double quantum dot regime.
Authors
D.L. Craig, H. Moon, F. Fedele, D.T. Lennon, B. Van Straaten, F. Vigneau, L.C. Camenzind, D.M. Zumbühl, G.A.D. Briggs, M.A. Osborne, D. Sejdinovic, N. Ares