Abstract

Rice is considered one of the most important crops in the world. According to the Food and Agriculture Organization of the United Nations (FAO), rice production has increased significantly (156%) during the last 50 years, with a limited increase in cultivated area (24%). With the recent advances in remote sensing technologies, it is now possible to monitor rice crop production for a better understanding of its management at field scale to ultimately improve rice yields. In this work, we monitor within-field rice production of the two main rice varieties grown in Valencia (Spain) JSendra and Bomba during the 2020 season. The sowing date of both varieties was May 22–25, while the harvesting date was September 15–17 for Bomba and October 5–8 for JSendra. Rice yield data was collected over 66.03 ha (52 fields) by harvesting machines equipped with onboard sensors that determine the dry grain yield within irregular polygons of 3–7 m width. This dataset was split in two, selecting 70% of fields for training and 30% for validation purposes. Sentinel-2 surface reflectance spectral data acquired from May until September 2020 was considered over the test area at the two different spatial resolutions of 10 and 20 m. These two datasets were combined assessing the best combination of spectral reflectance bands (SR) or vegetation indices (VIs) as well as the best timing to infer final within-field yields. The results show that SR improves the performance of models with VIs. Furthermore, the correlation of each spectral band and VIs with the final yield changes with the dates and varieties. Considering the training data, the best correlation with the yields is obtained on July 4, with R2 for JSendra of 0.72 at 10 m and 0.76 at 20 m resolution, while the R2 for Bomba is 0.87 at 10 m and 0.92 at 20 m resolution. Based on the validation dataset, the proposed models provide within-field yield modelling Mean Absolute Error (MAE) of 0.254 t×ha−1 (Mean Absolute Percentage Error, MAPE, of 3.73%) for JSendra at 10 m (0.240 t×ha−1; 3.48% at 20 m) and 0.218 t×ha−1 (MAPE 5.82%) for Bomba (0.223 t×ha−1; 5.78% at 20 m) on July 4, that is three months before harvest. At parcel level the model’s MAE is 0.176 t×ha−1 (MAPE 2.61%) for JSendra and 0.142 t×ha−1 (MAPE 4.51%) for Bomba. These results confirm the close correlation between the rice yield and the spectral information from satellite imagery. Additionally, these models provide a timeliness overview of underperforming areas within the field three months before the harvest where farmers can improve their management practices. Furthermore, it highlights the importance of optimum agronomic management of rice plants during the first weeks of rice cultivation (40–50 days after sowing) to achieve high yields.

Highlights

  • Rice (Oryza sativa L.) is one of the three most important crops in the world, being vital for the world’s food supply

  • The main science questions that we aim to answer in this study are: To what degree can Earth observation (EO) data in the optical spectral region explain the rice within-field yield variability? Which spectral band or combination of bands is better correlated with the final yield? When is the most critical timing of the rice growing season when satellite imagery can explain the final yields?

  • In this work we analyzed the use of remote sensing data to monitor rice yield

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Summary

Introduction

Rice (Oryza sativa L.) is one of the three most important crops in the world, being vital for the world’s food supply. Rice is grown in Asia, America, Australia, Europe, and Africa, following diverse production practices. In 2019, the global rice production was close to 755 million tons, covering an area of 162 million hectares. In Europe, its production is mostly located in the southern countries, Spain being one of the major producers and representing approximately 28% of the total production across the European Union in. The Valencian Community produces 16% (125 thousand tons) of the national rice, covering an area of approximately 15 thousand hectares in 2019 [2]. During the last 50 years, world rice production has increased by 156%, while the cultivated area has only increased by 24%, resulting in a 107% increase in yield. The evolution of world population growth and the increase in rice production have been closely connected over the last 50 years [1]

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