2021
DOI: 10.1002/solr.202100477
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Explaining the Efficiencies of Mass‐Produced p‐Type Cz‐Si Solar Cells by Interpretable Machine Learning

Abstract: It is shown how at Q CELLS, interpretable machine learning algorithms are used to understand the energy conversion efficiencies of mass‐produced Q.ANTUM solar cells based on p‐type Czochralski silicon (Cz‐Si) wafers. For this end, the data of a 1 week ramp‐up of over half a million cells acquired utilizing our TRA.Q single‐wafer‐tracking system are used. These consist of over 300 single information points per cell and feature inline measurements, path‐ and tool‐related information, process data as well as the … Show more

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Cited by 4 publications
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