Crop Yield Assessment Using Field-Based Data and Crop Models at the Village Level: A Case Study on a Homogeneous Rice Area in Telangana, India

Roja Mandapati, Murali Krishna Gumma, Devender Reddy Metuku, Pavan Kumar Bellam, Pranay Panjala, Sagar Maitra, Nagaraju Maila
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Abstract

Crop yield estimation has gained importance due to its vital significance for policymakers and decision-makers in enacting schemes, ensuring food security, and assessing crop insurance losses due to biotic and abiotic stress. This research focused on rice yield estimation at the field level in the Karimnagar district of Telangana during 2021 and 2022 by employing the leaf area index (LAI) as the primary criterion for integrating remote sensing technology and crop simulation models. Using Sentinel-2 satellite data, the rice crop was mapped with the help of ground data and machine learning algorithms, attaining an accuracy of 93.04%. Crop management data for the DSSAT tool were collected during the field visits; the model results revealed a 0.80 correlation between observed and predicted yields. Due to its strong correlation with LAI (0.82), the normalized difference vegetation index (NDVI) was selected as the critical element for integration with the model. A spatial LAI map was generated using the linear equation developed between the NDVI and LAI. The relationship between LAI and yield was used to create a spatial yield map. The study’s findings show that assimilating remote sensing data with crop models enhances the precision of rice yield prediction for insurance companies and policy- and decision-makers.
基于田间数据和村级作物模型的作物产量评估:以印度特伦甘纳同质水稻区为例
作物产量估算对政策制定者和决策者制定计划、确保粮食安全以及评估生物和非生物胁迫造成的作物保险损失具有重要意义,因此受到重视。本研究以叶面积指数(LAI)为主要标准,结合遥感技术和作物模拟模型,对泰伦加纳邦Karimnagar地区2021年和2022年稻田产量进行估算。利用Sentinel-2卫星数据,结合地面数据和机器学习算法绘制水稻作物图,精度达到93.04%。DSSAT工具的作物管理数据是在实地考察期间收集的;模型结果显示,观测产量与预测产量之间的相关性为0.80。由于归一化植被指数(NDVI)与LAI的相关性较强(0.82),因此选择NDVI作为与模型整合的关键要素。利用NDVI和LAI之间的线性方程生成空间LAI图。利用LAI与产量之间的关系,绘制空间产量图。该研究的发现表明,将遥感数据与作物模型相结合可以提高保险公司以及政策和决策者预测水稻产量的精度。
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CiteScore
4.70
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