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首页> 外文期刊>Field Crops Research >Estimating maize and cotton yield in southeastern Turkey with integrated use of satellite images, meteorological data and digital photographs.
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Estimating maize and cotton yield in southeastern Turkey with integrated use of satellite images, meteorological data and digital photographs.

机译:综合利用卫星图像,气象数据和数字照片,估算土耳其东南部的玉米和棉花产量。

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This study focuses on yield estimates of planted areas of cotton and maize in southeastern Turkey. It integrates multi-temporal satellite images, daily digital photographs of cultivated parcels, and daily meteorological data. Our research produced vegetation cover fraction (VF) estimates from digital photos and defined relationships between this information and the spectral vegetation index (VI) obtained from satellite images. Meteorological parameters limiting the light use efficiency of crops (LUE), such as temperature and vapor pressure deficit, were also calculated and incorporated into the yield estimation process. Results showed that the use of digital photo-based VF rather than the fraction of photosynthetically active radiation (fAPAR) in the LUE model provided the most accurate yield estimates. It produced less than 5 percent relative error in cotton and maize test parcels. In general, the VF-SVI relationship showed high linear correlation, with a range of 0.825-0.980 R2 in all test parcels. Crop specific regression equations derived from these relationships enabled yield estimates at the parcel level across the study area. When compared to statistical yield information at four districts, the remote sensing-based method proved to be reliable, with relative errors below 10 percent in most cases. Moreover, greenness index (GI) was also used in gross primary production (GPP) approximation, and yield estimates using this method also provided reasonable accuracy. Results also provided valuable information about the effects of region-specific meteorological conditions and crop management activities on yields. Finally, the higher yield estimation errors that result from the use of generic SVI-fAPAR equations in the literature indicate the need for local calibration of this relationship.
机译:这项研究侧重于土耳其东南部棉花和玉米种植面积的单产估算。它整合了多时相卫星图像,耕地包裹的每日数字照片以及每日气象数据。我们的研究从数字照片得出植被覆盖率(VF)估计值,并在此信息与从卫星图像获得的光谱植被指数(VI)之间定义了关系。还计算了限制作物光利用效率(LUE)的气象参数,例如温度和蒸气压不足,并将其纳入产量估算过程。结果表明,在LUE模型中使用基于数字照片的VF而不是光合有效辐射(fAPAR)的比例可提供最准确的产量估算。它在棉花和玉米测试包裹中产生的相对误差小于5%。通常,VF-SVI关系显示出较高的线性相关性,在所有测试宗地中,R 2 的范围为0.825-0.980。从这些关系得出的特定于作物的回归方程使整个研究区域的地块水平上的单产估算成为可能。与四个地区的统计产量信息相比,基于遥感的方法被证明是可靠的,在大多数情况下相对误差低于10%。此外,绿色指数(GI)也用于初级生产总值(GPP)估算中,并且使用此方法进行的产量估算也提供了合理的准确性。结果还提供了有关特定地区气象条件和作物管理活动对单产影响的宝贵信息。最后,由于文献中使用通用SVI-fAPAR方程而导致的更高的产量估算误差表明需要对该关系进行局部校准。

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