4.7 Review

Machine learning in photosynthesis: Prospects on sustainable crop development

Journal

PLANT SCIENCE
Volume 335, Issue -, Pages -

Publisher

ELSEVIER IRELAND LTD
DOI: 10.1016/j.plantsci.2023.111795

Keywords

Photosynthesis; Machine learning; Crop yield; Deep learning; Photosynthetic pigments

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Improving photosynthesis is a promising approach to enhance food security, and machine learning can aid in analyzing large-scale photosynthetic data to increase crop yield by correlating hyperspectral data with photosynthetic parameters.
Improving photosynthesis is a promising avenue to increase food security. Studying photosynthetic traits with the aim to improve efficiency has been one of many strategies to increase crop yield but analyzing large data sets presents an ongoing challenge. Machine learning (ML) represents a ubiquitous tool that can provide a more elaborate data analysis. Here we review the application of ML in various domains of photosynthetic research, as well as in photosynthetic pigment studies. We highlight how correlating hyperspectral data with photosynthetic parameters to improve crop yield could be achieved through various ML algorithms. We also propose strategies to employ ML in promoting photosynthetic pigment research for furthering crop yield.

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