Litcius/Paper detail

Unveiling future superconductors through machine learning

Zihao Bai, Mangladeep Bhullar, Akinwumi Akinpelu, Yansun Yao

2024Materials Today Physics18 citationsDOIOpen Access PDF

Abstract

The recent discovery of superconductivity above 200 K in hydrides of sulfur and lanthanum under high pressure marked a significant advance toward the realization of room-temperature superconductivity. While binary hydrides have almost been completely studied theoretically, experimental evidence suggests that the next breakthrough in finding high-temperature and low-pressure limits is likely connected with ternary and higher hydrides. Unlike the traditional synthesis-test-repeat approach, experimental discovery of superhydrides under high pressure often follows prior theoretical predictions. In this Minireview, we describe how various artificial intelligence schemes enable and enrich each stage of the discovery cycle of superhydrides and new developments made toward predicting ternary and higher hydrides. As a new enabling tool, machine learning-informed material simulation is still making its way into this field but is already playing an essential role in augmenting the prediction of new superhydrides through automated and iterative machine-learning processes. The review concludes with a perspective on outstanding challenges and possible future developments in the field.

Topics & Concepts

Ternary operationSuperconductivityRealization (probability)Field (mathematics)Perspective (graphical)Materials scienceBinary numberMachine learningHigh pressureArtificial intelligenceComputer scienceNanotechnologyEngineering physicsCondensed matter physicsPhysicsMathematicsStatisticsPure mathematicsProgramming languageArithmeticMachine Learning in Materials ScienceNuclear Materials and PropertiesInorganic Chemistry and Materials