Machine-guided Design of Oxidation Resistant Superconductors for Quantum Information Applications
Carson Koppel, Brandon Wilfong, Allana Iwanicki, Elizabeth Hedrick,, Tanya Berry, Tyrel M.McQueen

TL;DR
This paper introduces a machine learning-guided approach to identify and develop oxidation-resistant superconductors suitable for quantum information applications, aiming to enhance qubit coherence times.
Contribution
It develops a thermodynamic metric for surface oxide stability, trains a neural network to predict this metric from composition, and identifies new candidate superconductors for quantum technology.
Findings
Validated the metric with experimental oxidation tests
Predicted new superconductors with improved surface stability
Enhanced selection process for quantum superconductors
Abstract
Decoherence in superconducting qubits has long been attributed to two level systems arising from the surfaces and interfaces present in real devices. A recent significant step in reducing decoherence was the replacement of superconducting niobium by superconducting tantalum, resulting in a tripling of transmon qubit lifetimes (T1). One of these surface variables, the identity, thickness, and quality of the native surface oxide, is thought to play a major role as tantalum only has one oxide whereas niobium has several. Here we report the development of a thermodynamic metric to rank materials based on their potential to form a well-defined, thin, surface oxide. We first compute this metric for known binary and ternary metal alloys using data available from Materials Project, and experimentally validate the strengths and limits of this metric through preparation and controlled oxidation…
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Taxonomy
TopicsMachine Learning in Materials Science · Electronic and Structural Properties of Oxides · Electron and X-Ray Spectroscopy Techniques
