Litcius/Paper detail

Self‐Validated Machine Learning Study of Graphdiyne‐Based Dual Atomic Catalyst

Mingzi Sun, Tong Wu, Alan William Dougherty, Maggie Lam, Bolong Huang, Yuliang Li, Chun‐Hua Yan

2021Advanced Energy Materials84 citationsDOI

Abstract

Abstract Although the atomic catalyst has attracted intensive attention in the past few years, the current progress of this field is still limited to a single atomic catalyst (SAC). With very few successful cases of dual atomic catalysts (DACs), the most challenging part of experimental synthesis still lies in two main directions: the thermodynamic stability of the synthesis and the optimal combination of metals. To address such challenges, comprehensive theoretical investigations on graphdiyne (GDY)‐based DAC are proposed by considering both, the formation stability and the d‐band center modifications. Unexpectedly, it is proven that the introduction of selected lanthanide metals to the transition metals contributes to the optimized stability and electroactivity. With further verification by machine learning, the potential f–d orbital coupling is unraveled as the pivotal factor in modulating the d‐band center with enhanced stability by less orbital repulsive forces. These findings supply the delicate explanations of the atomic interactions and screen out the most promising DAC to surpass the limitations of conventional trial and error synthesis. This work has supplied an insightful understanding of DAC, which opens up a brand new direction to advance the research in atomic catalysts for broad applications.

Topics & Concepts

CatalysisStability (learning theory)Dual (grammatical number)Materials scienceCoupling (piping)LanthanideNanotechnologyAtomic numberField (mathematics)Work (physics)Transition metalComputer sciencePhysicsAtomic physicsMachine learningThermodynamicsQuantum mechanicsChemistryPure mathematicsBiochemistryIonMetallurgyMathematicsArtLiteratureElectrocatalysts for Energy ConversionCatalytic Processes in Materials ScienceMachine Learning in Materials Science