Neural network based deep learning analysis of semiconductor quantum dot qubits for automated control
Jacob R. Taylor, Sankar Das Sarma

TL;DR
This paper presents a CNN-based method to accurately identify and predict disorder in semiconductor quantum dot qubits from charge stability diagrams, enabling automated device tuning and addressing crosstalk issues.
Contribution
It introduces a novel CNN approach that simultaneously predicts multiple disorder parameters in quantum dot systems with high accuracy, improving over previous low-coupling focused methods.
Findings
High prediction accuracy with R^2 > 0.994 for disorder parameters
Ability to tune five or more quantum dots simultaneously
Provides a validation method for neural network predictions
Abstract
Machine learning offers a largely unexplored avenue for improving noisy disordered devices in physics using automated algorithms. Through simulations that include disorder in physical devices, particularly quantum devices, there is potential to learn about disordered landscapes and subsequently tune devices based on those insights. In this work, we introduce a novel methodology that employs machine learning, specifically convolutional neural networks (CNNs), to discern the disorder landscape in the parameters of the disordered extended Hubbard model underlying the semiconductor quantum dot spin qubit architectures. This technique takes advantage of experimentally obtainable charge stability diagrams from neighboring quantum dot pairs, enabling the CNN to accurately identify disorder in each parameter of the extended Hubbard model. Remarkably, our CNN can process site-specific disorder…
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Taxonomy
TopicsNeural Networks and Applications · Machine Learning and ELM · Semiconductor Quantum Structures and Devices
