Crop yield estimation using satellite images: comparison of linear and non-linear models

Q4 Agricultural and Biological Sciences AgriScientia Pub Date : 2018-06-29 DOI:10.31047/1668.298X.V1.N35.20447
S. Sayago, M. Bocco
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引用次数: 15

Abstract

Development of models for crop yield prediction using remote sensing allows accurate, reliable and timely estimations over large areas. articularly, this information is necessary to ensure the adequacy of a nation’s food supply as well as to aid policy makers and farmers. In Argentina, soybean (Glycine max (L.) Merr.) and corn (Zea mays L.) are the most important crops. The goal of this research was to develop and evaluate linear and non-linear models to estimate crop yield from satellite data. Particularly, we proposed and applied those models to obtain soybean and corn yield in the central region of Cordoba (Argentina) using Landsat and SPOT images. The models were designed taking into account all or some bands included in the images from one or both satellites. Results showed that models provided a good fit when all images are used, being superior the accuracy obtained by neural networks (NN). For soybean, the best estimation presented a coefficient of determination equal to 0.90 with NN and 0.82 with multiple linear regression models, and for corn 0.92 and 0.88, respectively. This study concludes that Landsat and SPOT images can be effectively used to predict, in early to mid-season crop growth stages, corn and soybean yield.
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利用卫星图像估算作物产量:线性和非线性模型的比较
利用遥感技术开发作物产量预测模型,可以对大面积进行准确、可靠和及时的估计。明确地说,这些信息对于确保一个国家的粮食供应充足以及援助决策者和农民是必要的。在阿根廷,大豆(Glycine max(L.)Merr.)玉米(Zea mays L.)是最重要的作物。这项研究的目标是开发和评估线性和非线性模型,以根据卫星数据估计作物产量。特别是,我们提出并应用这些模型,使用陆地卫星和SPOT图像获得了科尔多瓦(阿根廷)中部地区的大豆和玉米产量。这些模型的设计考虑了一颗或两颗卫星图像中包含的全部或部分波段。结果表明,当使用所有图像时,模型提供了良好的拟合,优于神经网络(NN)获得的精度。对于大豆,最佳估计的决定系数分别为0.90(NN)和0.82(多元线性回归模型),以及0.92和0.88(玉米)。这项研究得出的结论是,陆地卫星和SPOT图像可以有效地用于预测早中期作物生长阶段的玉米和大豆产量。
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来源期刊
AgriScientia
AgriScientia Agricultural and Biological Sciences-Agronomy and Crop Science
CiteScore
0.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
期刊介绍: AgriScientia es una revista de acceso abierto, de carácter científico-académico, gestionada por el Área de Difusión Científica de la Facultad de Ciencias Agropecuarias de la Universidad Nacional de Córdoba, Argentina. La revista recibe artículos en los idiomas español e inglés. El objetivo de esta publicación es la difusión de los resultados de investigaciones de carácter agronómico. Está destinada a investigadores, estudiantes de pregrado, grado y posgrado, profesionales en el área de las ciencias agropecuarias y público en general interesado en las temáticas relacionadas. Su periodicidad es semestral. Los artículos se reciben durante todo el año. Los tipos de documentos que se publican son artículos científicos, comunicaciones y revisiones.
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