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Assessing the Variability of Corn and Soybean Yields in Central Iowa Using High Spatiotemporal Resolution Multi-Satellite Imagery

机译:使用高时空分辨率多卫星影像评估爱荷华州中部玉米和大豆的产量变异性

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The utility of remote sensing data in crop yield modeling has typically been evaluated at the regional or state level using coarse resolution (250 m) data. The use of medium resolution data (10–100 m) for yield estimation at field scales has been limited due to the low temporal sampling frequency characteristics of these sensors. Temporal sampling at a medium resolution can be significantly improved, however, when multiple remote sensing data sources are used in combination. Furthermore, data fusion approaches have been developed to blend data from different spatial and temporal resolutions. This paper investigates the impacts of improved temporal sampling afforded by multi-source datasets on our ability to explain spatial and temporal variability in crop yields in central Iowa (part of the U.S. Corn Belt). Several metrics derived from vegetation index (VI) time-series were evaluated using Landsat-MODIS fused data from 2001 to 2015 and Landsat-Sentinel2-MODIS fused data from 2016 and 2017. The fused data explained the yield variability better, with a higher coefficient of determination (R 2 ) and a smaller relative mean absolute error than using a single data source alone. In this study area, the best period for the yield prediction for corn and soybean was during the middle of the growing season from day 192 to 236 (early July to late August, 1–3 months before harvest). These findings emphasize the importance of high temporal and spatial resolution remote sensing data in agricultural applications.
机译:遥感数据在农作物产量建模中的效用通常使用粗分辨率(> 250 m)数据在区域或州一级进行了评估。由于这些传感器的低瞬时采样频率特性,使用中分辨率数据(10-100 m)进行田间规模的产量估算受到了限制。但是,当组合使用多个遥感数据源时,可以显着改善中等分辨率的时间采样。此外,已经开发了数据融合方法来融合来自不同空间和时间分辨率的数据。本文调查了多源数据集提供的改进的时间采样对我们解释爱荷华州中部(美国玉米带的一部分)作物产量时空变异的能力的影响。使用2001年至2015年的Landsat-MODIS融合数据以及2016年和2017年的Landsat-Sentinel2-MODIS融合数据,评估了一些来自植被指数(VI)时间序列的指标。这些融合数据更好地解释了产量变异性,系数更高。与单独使用单个数据源相比,具有更高的确定性(R 2)和较小的相对平均绝对误差。在该研究区中,预测玉米和大豆单产的最佳时期是在生长季节的中间(从第192天到236天)(7月初至8月下旬,即收获前1-3个月)。这些发现强调了高时空分辨率遥感数据在农业应用中的重要性。

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