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Data Mining and Machine Learning Tools for Combinatorial Material Science of All-Oxide Photovoltaic Cells

Authors :
Abraham Yosipof
Oren E. Nahum
Assaf Y. Anderson
Arie Zaban
Hannah-Noa Barad
Hanoch Senderowitz
Source :
Molecular Informatics. 34:367-379
Publication Year :
2015
Publisher :
Wiley, 2015.

Abstract

Growth in energy demands, coupled with the need for clean energy, are likely to make solar cells an important part of future energy resources. In particular, cells entirely made of metal oxides (MOs) have the potential to provide clean and affordable energy if their power conversion efficiencies are improved. Such improvements require the development of new MOs which could benefit from combining combinatorial material sciences for producing solar cells libraries with data mining tools to direct synthesis efforts. In this work we developed a data mining workflow and applied it to the analysis of two recently reported solar cell libraries based on Titanium and Copper oxides. Our results demonstrate that QSAR models with good prediction statistics for multiple solar cells properties could be developed and that these models highlight important factors affecting these properties in accord with experimental findings. The resulting models are therefore suitable for designing better solar cells.

Details

ISSN :
18681743
Volume :
34
Database :
OpenAIRE
Journal :
Molecular Informatics
Accession number :
edsair.doi.dedup.....6d6911f649288b1efd32a38a71716257