2019
DOI: 10.1002/adts.201800173
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Machine Learning Augmented Discovery of Chalcogenide Double Perovskites for Photovoltaics

Abstract: Hybrid organic inorganic perovskite solar cells based on CH 3 NH 3 PbI 3 have drastically increased in efficiency over the past several years and are competitive with decades-old photovoltaic materials such as CdTe. Despite this impressive increase, significant issues still remain due to the intrinsic instability of CH 3 NH 3 PbI 3 which degrades into carcinogenic PbI 2 . Recently, double halide perovskites which use a pair of 1 + -3 + cations to replace Pb 2+ , such as Cs 2 InSbI 6 , and chalcogenide perovski… Show more

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Cited by 65 publications
(45 citation statements)
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“…More accurate bandgaps can be obtained computationally using more expensive methods such as hybrid functionals (HSE06) or GW calculations . Agiorgousis et al have calculated 220 double chalcogenide perovskites (A2BB′X6) with the screened hybrid HSE06 functional, followed by training RF and SVM classifiers using this data set. The percentage error of classifying whether the bandgap of given perovskite falls between 0.7 to 2.0 eV was 13.80 % for RF, and 31.63% for SVM.…”
Section: Applicationmentioning
confidence: 99%
“…More accurate bandgaps can be obtained computationally using more expensive methods such as hybrid functionals (HSE06) or GW calculations . Agiorgousis et al have calculated 220 double chalcogenide perovskites (A2BB′X6) with the screened hybrid HSE06 functional, followed by training RF and SVM classifiers using this data set. The percentage error of classifying whether the bandgap of given perovskite falls between 0.7 to 2.0 eV was 13.80 % for RF, and 31.63% for SVM.…”
Section: Applicationmentioning
confidence: 99%
“…In the last few decades, there have been multiple studies on in silico design of novel materials for PV devices as well as new ferroelectrics. Recent examples include novel light-harvesting materials based on inorganic and metal-organic perovskites, oxynitride and sulfide materials, and known materials from existing databases [20][21][22][23][57][58][59][60][61][62][63][64]. In the case of ferroelectrics there has recently been some progress in obtaining design rules that can readily be applied to computational discovery of new materials exhibiting switchable spontaneous polarization.…”
Section: In Silico Discovery Of Photoferroic Materialsmentioning
confidence: 99%
“…Using machine learning, Agiorgousis et al isolated Ba2AlNbS6, Ba2GaNbS6, Ca2GaNbS6, Sr2InNbS6, and Ba2SnHfS6, out of 450 chalcogenide double perovskites, as the most promising photovoltaic materials [34]. Guided by computational screening of ternary sulfides, Kuhar et al…”
Section: Introductionmentioning
confidence: 99%