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Forecasting spring maize yield using vegetation indices and crop phenology metrics from <scp>UAV</scp> observations

Lun Bao, Xuan Li, Jiaxin Yu, Guangshuai Li, Xinyue Chang, Lingxue Yu, Ying Li

2023Food and Energy Security15 citationsDOIOpen Access PDF

Abstract

Abstract Early and accurate prediction and simulation of grain crop yield can help maximize the revision and development of regional food policy, which is crucial for ensuring national food security. The development of unmanned aerial vehicle (UAV) technology is gradually gaining an advantage over satellite remote sensing at the field scale. In this study, we predicted maize yield using canopy vegetation indices (VIs) and crop phenology metrics obtained through UAV with ordinary least squares (OLS), stepwise multiple linear regression (SMLR) and gradient‐boosted regression tree (GBRT). The results reveal that the VIs extracted from UAV imagery had a high correlation with yield ( R = 0.92), facilitating crop yield estimation. Additionally, coupling crop phenology significantly improved the prediction accuracy of SMLR, with the highest R 2 and lowest RMSE of 0.894, 1.238 × 10 3 kg ha −1 , respectively. But, the enhancement of GBRT by this method was slender. Its simulation outperformed OLS and SMLR with dramatic R 2 , RMSE, and MAE of 0.892, 1.189 × 10 3 kg ha −1 , and 9.150 × 10 2 kg ha −1 , respectively. Moreover, the blister stage was deemed the optimal stage for maize yield prediction with an accuracy rate exceeding 81%. These demonstrated the feasibility of using UAV images to predict crop yields, providing an important reference at the field scale.

Topics & Concepts

PhenologyYield (engineering)CropCrop yieldCanopyEnvironmental scienceVegetation (pathology)Scale (ratio)Linear regressionMean squared errorMathematicsAgronomyStatisticsEcologyGeographyCartographyBiologyMaterials sciencePathologyMedicineMetallurgyRemote Sensing in AgricultureLand Use and Ecosystem ServicesRemote Sensing and LiDAR Applications
Forecasting spring maize yield using vegetation indices and crop phenology metrics from <scp>UAV</scp> observations | Litcius