Litcius/Paper detail

Phenological analysis and yield estimation of rice based on multi-spectral and SAR data in Maha Sarakham, Thailand

Tingyan Fu, Shufang Tian, Qian Zhan

2023Journal of Spatial Science10 citationsDOIOpen Access PDF

Abstract

Rice is one of the most essential food crops in the world and accurate estimation of rice yield is a major content of agricultural research. Recently, scholars have used machine learning algorithms for rice yield estimation. However, there are few studies on rice yield prediction based on rice phenological stages. In this study, a method for rice yield prediction on the basis of rice phenology analysis was proposed. For this study, the cumulative NDVI and EVI based Logistic regression curves were carried out to determine the phenological period. Comparing several regression models, the results of the random forest regression model developed using phenology-based regression analysis performed better. The R2 of training and validation samples were 0.96 and 0.95, respectively, with RMSE of 0.06 ton/ha. This method is feasible for governments to predict rice yield and make farm risk management decisions.

Topics & Concepts

PhenologyYield (engineering)Normalized Difference Vegetation IndexEstimationRegression analysisLogistic regressionStatisticsAgricultureRandom forestRegressionMathematicsAgronomyEcologyMachine learningComputer scienceBiologyEngineeringLeaf area indexSystems engineeringMetallurgyMaterials scienceRemote Sensing in AgricultureSpectroscopy and Chemometric AnalysesSmart Agriculture and AI