Advanced Farming Strategies Using NASA POWER Data in Peanut-Producing Regions without Surface Meteorological Stations

Author:

Barboza Thiago Orlando Costa1,Ferraz Marcelo Araújo Junqueira1ORCID,Pilon Cristiane2,Vellidis George2ORCID,Valeriano Taynara Tuany Borges3,dos Santos Adão Felipe1ORCID

Affiliation:

1. Department of Agriculture, School of Agriculture Sciences of Lavras, Federal University of Lavras (UFLA), Lavras 37200-900, MG, Brazil

2. Department of Crop and Soil Sciences, University of Georgia, Tifton, GA 31793, USA

3. Bayer CropScience, 51368 Leverkusen, Germany

Abstract

Understanding the impact of climate on peanut growth is crucial, given the importance of temperature in peanut to accumulate Growing Degree Days (GDD). Therefore, our study aimed to compare data sourced from the NASA POWER platform with information from surface weather stations to identify underlying climate variables associated with peanut maturity (PMI). Second, we sought to devise alternative methods for calculating GDD in peanut fields without nearby weather stations. We utilized four peanut production fields in the state of Georgia, USA, using the cultivar Georgia-06G. Weather data from surface stations located near peanut fields were obtained from the University of Georgia’s weather stations. Corresponding data from the NASA POWER platform were downloaded by inputting the geographic coordinates of the weather stations. The climate variables included maximum and minimum temperatures, average temperature, solar radiation, surface pressure, relative humidity, and wind speed. We evaluated the platforms using Pearson correlation (r) analysis (p < 0.05), linear regression analysis, assessing coefficient of determination (R2), root mean square error (RMSE), and Willmott index (d), as well as principal component analysis. Among the climate variables, maximum and minimum temperatures, average temperature, and solar radiation showed the highest R2 values, along with low RMSE values. Conversely, wind speed and relative humidity exhibited lower correlation values with errors higher than those of the other variables. The grid size from the NASA POWER platform contributed to low model adjustments since the grid’s extension is kilometric and can overlap areas. Despite this limitation, NASA POWER proves to be a potential tool for PMI monitoring. It should be especially helpful for growers who do not have surface weather stations near their farms.

Funder

Minas Gerais State Research Support Foundation

Publisher

MDPI AG

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3. (2023, July 18). USDA—United States Department of Agriculture. USDA, Available online: https://ipad.fas.usda.gov/cropexplorer/cropview/commodityView.aspx?cropid=2221000.

4. Rowland, D. Peanut Field Agronomic Resource Manager (PeanutFARM), University of Florida, Agronomy Department. Available online: http://peanutfarm.org/overviews.

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