Publication | Open Access
Unsupervised discovery of thin-film photovoltaic materials from unlabeled data
34
Citations
58
References
2021
Year
EngineeringData ScarcityChemistryPhotovoltaic SystemPhotovoltaic Power StationPhotovoltaicsSemiconductor NanostructuresSemiconductorsIi-vi SemiconductorStructure Search SpaceCompound SemiconductorMaterials ScienceElectrical EngineeringSolar PowerMaterial DiscoveryUnsupervised DiscoverySemiconductor MaterialTransition Metal ChalcogenidesApplied PhysicsBuilding-integrated PhotovoltaicsSolar Cells
Abstract Quaternary chalcogenide semiconductors (I 2 -II-IV-X 4 ) are key materials for thin-film photovoltaics (PVs) to alleviate the energy crisis. Scaling up of PVs requires the discovery of I 2 -II-IV-X 4 with good photoelectric properties; however, the structure search space is significantly large to explore exhaustively. The scarcity of available data impedes even many machine learning (ML) methods. Here, we employ the unsupervised learning (UL) method to discover I 2 -II-IV-X 4 that alleviates the challenge of data scarcity. We screen all the I 2 -II-IV-X 4 from the periodic table as the initial data and finally select eight candidates through UL. As predicted by ab initio calculations, they exhibit good optical conversion efficiency, strong optical responses, and good thermal stabilities at room temperatures. This typical case demonstrates the potential of UL in material discovery, which overcomes the limitation of data scarcity, and shortens the computational screening cycle of I 2 -II-IV-X 4 by ~12.1 years, providing a research avenue for rapid material discovery.
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