Rice yield prediction model using normalized vegetation and water indices from Sentinel-2A satellite imagery datasets

被引:0
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作者
Aung Myint Htun
Md. Shamsuzzoha
Tofael Ahamed
机构
[1] University of Tsukuba,Graduate School of Science and Technology
[2] Agricultural Mechanization Department,Graduate School of Life and Environmental Sciences
[3] Ministry of Agriculture,Department of Emergency Management, Faculty of Environmental Science and Disaster Management
[4] Livestock and Irrigation,Faculty of Life and Environmental Sciences
[5] University of Tsukuba,undefined
[6] Patuakhali Science and Technology University,undefined
[7] University of Tsukuba,undefined
关键词
Rice crop; Linear regression; Multiple regression; Myanmar; Satellite remote sensing; Yield prediction;
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中图分类号
学科分类号
摘要
Yield predictions prior to harvesting crops is significant for agricultural decision-making. This study aimed to predict rice yield at the stage prior to harvesting using crops and soil phenological properties in the Pathein District of Myanmar. Remote sensing imagery data derived from Sentinel-2A satellite imageries during the month of November at the stage prior to harvest of rice fields were collected and analyzed from 2016 to 2021. Four vegetation indices (VIs): (i) normalized difference vegetation index (NDVI), (ii) normalized difference water index (NDWI), (iii) soil-adjusted vegetation index (SAVI), and (iv) rice growth vegetation index (RGVI) were specified as independent variables for a rice yield prediction model, after which simple and multiple linear regression models were estimated and validated. The accuracy of the estimated models was assessed using observed data from 1790 ground reference points (GRPs) in rice-yielding croplands. The average observed rice yield over 6 years was 1.57 tons per acre, and the average rice yield predictions over 6 years were 1.28, 1.48, 1.28, and 1.17 per acre with simple linear regression models from NDVI, NDWI, SAVI and RGVI, respectively. On the other hand, THE observed rice yield was 1.49 tons per acre with a multiple regression model. This indicates that prediction by the multiple regression model with four vegetation indices is superior to predictions by all other linear regression models. The early predicted yield data is useful for rice-growing farmers to compare expenses against losses after any extreme climatic event.
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页码:491 / 519
页数:28
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