A new North Carolina State University study combines satellite imagery with machine learning technology to help model rice crop productivity faster and more accurately. The tool could help decision-makers around the world better assess how and where to plant rice, which is the primary source of energy for more than half of the world's population.
The study focused on Bangladesh, which is the world's third-largest producer of rice. The country is also the sixth most-vulnerable country in the world to climate change, as the destruction of rice crops by flooding has led to food insecurity.
Traditional crop monitoring techniques have not kept up with the pace of climate change, said Varun Tiwari, a doctoral student at NC State and lead author of the study published in PLOS ONE.
"In order to estimate crop productivity, people in Bangladesh use field data. They physically go to the field, harvest a crop and then interview the farmer, and then build a report on that. It is a time-consuming and labor-intensive process. Additionally, the method adds inaccuracies when rice yield estimates are based on only a few samples rather than data from all fields, making it challenging to upscale to a national level," Tiwari said.
"What that means is that they do not have this information in time to make decisions on exports, imports or crop pricing. It also limits their ability to make long-term decisions like altering crops, introducing climate-resilient rice varieties, or changing rice cropping patterns."
© Copyright 2023 The SSResource Media.
All rights reserved.