Shrestha Amrit, Bheemanahalli Raju, Adeli Ardeshir, Samiappan Sathishkumar, Czarnecki Joby M Prince, McCraine Cary Daniel, Reddy K Raja, Moorhead Robert
Department of Agricultural & Biological Engineering, Mississippi State University, Mississippi State, MS, United States.
Department of Plant and Soil Sciences, Mississippi State University, Mississippi State, MS, United States.
Front Plant Sci. 2023 Jul 21;14:1168732. doi: 10.3389/fpls.2023.1168732. eCollection 2023.
Uncrewed aerial systems (UASs) provide high temporal and spatial resolution information for crop health monitoring and informed management decisions to improve yields. However, traditional in-season yield prediction methodologies are often inconsistent and inaccurate due to variations in soil types and environmental factors. This study aimed to identify the best phenological stage and vegetation index (VI) for estimating corn yield under rainfed conditions. Multispectral images were collected over three years (2020-2022) during the corn growing season and over fifty VIs were analyzed. In the three-year period, thirty-one VIs exhibited significant correlations (r ≥ 0.7) with yield. Sixteen VIs were significantly correlated with the yield at least for two years, and five VIs had a significant correlation with the yield for all three years. A strong correlation with yield was achieved by combining red, red edge, and near infrared-based indices. Further, combined correlation and random forest an alyses between yield and VIs led to the identification of consistent and highest predictive power VIs for corn yield prediction. Among them, leaf chlorophyll index, Medium Resolution Imaging Spectrometer (MERIS) terrestrial chlorophyll index and modified normalized difference at 705 were the most consistent predictors of corn yield when recorded around the reproductive stage (R1). This study demonstrated the dynamic nature of canopy reflectance and the importance of considering growth stages, and environmental conditions for accurate corn yield prediction.
无人航空系统(UAS)为作物健康监测提供了高时空分辨率信息,并有助于做出明智的管理决策以提高产量。然而,由于土壤类型和环境因素的变化,传统的季内产量预测方法往往不一致且不准确。本研究旨在确定在雨养条件下估算玉米产量的最佳物候期和植被指数(VI)。在2020 - 2022年的三年玉米生长季节收集了多光谱图像,并分析了五十多种植被指数。在这三年期间,有31种植被指数与产量呈现出显著相关性(r≥0.7)。16种植被指数至少在两年内与产量显著相关,5种植被指数在所有三年中都与产量显著相关。通过结合基于红边、红色和近红外的指数,实现了与产量的强相关性。此外,产量与植被指数之间的联合相关性分析和随机森林分析,确定了用于玉米产量预测的具有一致性和最高预测能力的植被指数。其中,叶叶绿素指数、中分辨率成像光谱仪(MERIS)陆地叶绿素指数以及705处的修正归一化差异,在生殖阶段(R1)左右记录时,是玉米产量最一致的预测指标。本研究证明了冠层反射率的动态特性以及考虑生长阶段和环境条件对准确预测玉米产量的重要性。