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首页> 外文期刊>International journal of applied earth observation and geoinformation >Remotely sensed vegetation index and LAI for parameter determination of the CSM-CROPGRO-Soybean model when in situ data are not available
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Remotely sensed vegetation index and LAI for parameter determination of the CSM-CROPGRO-Soybean model when in situ data are not available

机译:遥感植被指数和LAI用于参数测定CSM-TRAMGRO-Soybean模型的原位数据不可用

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摘要

An agricultural system is a complex combination of many different components that require different types of data for analysis and modeling. Remote sensing information is an alternative source of data for areas that only have a small amount of ground truth data. The goal of this study was to evaluate whether remotely sensed data can be used for calibration of genetic specific parameters (GSPs) with the ultimate goal of yield estimation. This study used the Normalized Difference Vegetation Index (NDVI) and Enhanced Vegetation Index (EVI) from Moderate Resolution Imaging Spectroradiometer (MODIS) with measured Leaf Area Index (LAI) for soybean fields in Parana, Brazil and Iowa, USA, to calibrate the cultivar parameters of the CSM-CROPGRO-Soybean model. Three calibration methods were performed including field-measured LAI, remotely sensed derived LAI, and remotely sensed derived Light Interception. The cultivar parameters sensitive to LAI and LI were calibrated for yield with a mean error of -4.5 kg/ha (0.1%) and with a R-2 of 0.89 for Parana. The availability of crop growth measurements for Iowa resulted in an average RMSE of 895 kg/ha (average nRMSE of 6%), and Willmott agreement index of 0.98 for time-series biomass, and an average RMSE of 941 kg/ha (average nRMSE of 15%) for pod weight. This study showed that remotely sensed LAI and LI from NDVI data can be used for calibration of GSPs with the ultimate goal of improving yield predictions based on local dynamic temporal and spatial variability.
机译:农业系统是许多不同组件的复杂组合,需要不同类型的数据进行分析和建模。遥感信息是仅具有少量地面真实数据的区域的替代数据来源。本研究的目标是评估远程感测的数据是否可用于校准基因特异性参数(GSP),其具有估计的最终目标。该研究使用了来自适度分辨率成像光谱仪(MODIS)的归一化差异植被指数(NDVI)和增强植被指数(MODIS),在Parana,Brazil和Iowa,美国,美国的大豆领域,筛选叶片区域指数(Lai),以校准品种CSM-CRAMGRO-大豆模型的参数。进行三种校准方法,包括现场测量的LAI,远程感测的LAI,并且远程感测得出的光截止。对Lai和Li敏感的品种参数被校准,其平均误差为-4.5kg / ha(0.1%),r-2为paraana。 AWAA的作物生长测量的可用性导致平均RMSE为895公斤/公顷(平均NRMSE为6%),时间序列生物质的威尔蒙特协议指数为0.98,平均RMSE为941千克/公顷(平均NRMSE豆荚重量的15%)。该研究表明,来自NDVI数据的远程感测的LAI和LI可以用于GSP的校准,基于局部动态时间和空间可变性提高产量预测的最终目标。

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