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Assessing the Potential of Sentinel-1 in Retrieving Mango Phenology and Investigating Its Relation to Weather in Southern Ghana
1B. A. TORGBOR, 2M. M. Rahman, 3A. Robson, 2J. Brinkhoff
1. Applied Agricultural Remote Sensing Centre, Precision Agricu
2. Applied Agricultural Remote Sensing Centre, Precision Agriculture Research Group, University of New England, Armidale, NSW 2351, Austral-ia
3. Applied Agricultural Remote Sensing Centre, Precision Agriculture Research Group, University of New England, Armidale, NSW 2351, Australia

The rise in global production of horticultural tree crops over the past few decades is driving technology-based innovation and research to promote productivity and efficiency. Although mango production is on the rise, application of the remote sensing technology is generally limited and the available study on retrieving mango phenology stages specifically, was focused on the application of optical data. We therefore sought to answer the questions; (1) can key phenology stages of mango be retrieved from radar (Sentinel-1) particularly due to the cloud related limitations of optical satellite remote sensing in the tropics? and (2) does weather have any effect on phenology? The study was conducted on a mango farm in the Yilo Krobo Municipal Area of Ghana. Time series analysis for radar vegetation index (RVI) values for 2018 – 2021 was used to retrieve three key phenology stages of mango namely; Start of Season (SoS), Peak of Season (PoS) and End of Season (EoS). Characteristic annual peaks (in April/May for the major season and October/November for the minor season) and troughs (in June/July for the major season and December/January for the minor season) in the phenology trend of mango were identified. Rainfall and temperature explained less than 2% and 14% of the variability respectively in mango phenology. The application of radar remote sensing provides a cutting edge technology in the assessment of mango phenology, particularly in the tropics where cloud cover is a big challenge. This study offers an opportunity for production efficiency in the mango value chain as understanding of the crop’s phenology allows growers to manage farm and post-harvest operations.

Keyword: Remote sensing, Radar Vegetation Index, Synthetic Aperture Radar, Mango (Mangifera indica), Phenology, Sentinel-1