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Mapping within-field leaf chlorophyll content in agricultural crops for nitrogen management using Landsat-8 imagery

机译:使用Landsat-8图像在农业作物中映射野外叶片叶绿素含量

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Spatial information on crop nutrient status is central for monitoring vegetation health, plant productivity and managing nutrient optimization programs in agricultural systems. This study maps the spatial variability of leaf chlorophyll content within fields with differing quantities of nitrogen fertilizer application, using multispectral Landsat-8 OLI data (30 m). Leaf chlorophyll content and leaf area index measurements were collected at 15 wheat (Triticum aestivum) sites and 13 corn (Zea mays) sites approximately every 10 days during the growing season between May and September 2013 near Stratford, Ontario. Of the 28 sites, 9 sites were within controlled areas of zero nitrogen fertilizer application. Hyperspectral leaf reflectance measurements were also sampled using an Analytical Spectral Devices FieldSpecPro spectroradiometer (400-2500 nm). A two-step inversion process was developed to estimate leaf chlorophyll content from Landsat-8 satellite data at the sub-field scale, using linked canopy and leaf radiative transfer models. Firstly, at the leaf-level, leaf chlorophyll content was modelled using the PROSPECT model, using both hyperspectral and simulated mulitspectral Landsat-8 bands from the same leaf sample. Hyperspectral and multispectral validation results were both strong (R-2 = 0.79, RMSE = 13.62 mu g/cm(2)and R-2 = 0.81, RMSE = 9.45 mu g/cm(2), respectively). Secondly, leaf chlorophyll content was estimated from Landsat-8 satellite imagery for 7 dates within the growing season, using PROSPECT linked to the 4-Scale canopy model. The Landsat-8 derived estimates of leaf chlorophyll content demonstrated a strong relationship with measured leaf chlorophyll values (R-2 = 0.64, RMSE = 16.18 mu g/cm(2)), and compared favourably to correlations between leaf chlorophyll and the best performing tested spectral vegetation index (Green Normalised Difference Vegetation Index, GNDVI; R-2 = 0.59). This research provides an operational basis for modelling within-field variations in leaf chlorophyll content as an indicator of plant nitrogen stress, using a physically-based modelling approach, and opens up the possibility of exploiting a wealth of multispectral satellite data and UAV-mounted multispectral imaging systems.
机译:关于作物营养状况的空间信息是监测植被健康,植物生产力和农业系统营养优化计划的核心。本研究利用多光谱覆盖-8 OLI数据(30米)地图利用不同数量的氮肥施氮量内的叶片叶绿素含量的空间变异性。在2013年5月至2013年5月至9月在安大略省的斯特拉斯福德之间的生长季节,大约每10天收集叶片叶绿素含量和叶面积指数测量。在28个地点,9个点位于零氮肥应用的受控区域内。使用分析光谱器件FieldSpecProper SpectrorIdiomometer(400-2500nm)还采样高光谱叶反射率测量。开发了两步反演过程,以利用链接的遮篷和叶片辐射传输模型在子场比例下从Landsat-8卫星数据估算叶片叶绿素含量。首先,在叶子级,使用来自同一叶样品的高光谱和模拟Mulitspectral Landsat-8带,使用前景模型进行建模叶叶叶含量。高光谱和多光谱验证结果均强(R-2 = 0.79,RMSE =13.62μg/ cm(2)和R-2 = 0.81,RMSE =9.45μg/ cm(2))。其次,使用与4尺度冠层模型相关的前景,从Landsat-8卫星图像估计叶片叶绿素含量为7个日期。叶片-8衍生叶片叶绿素含量的估计证明了与测量的叶片叶绿素值的强烈关系(R-2 = 0.64,RMSE =16.18μg/ cm(2)),并且有利地与叶片叶绿素之间的相关性和最佳表现测试光谱植被指数(绿色归一化差异植被指数,GNDVI; R-2 = 0.59)。本研究为使用物理为基础的建模方法为植物氮气胁迫的指示器进行了对叶片叶绿素含量的叶片叶绿素含量的局部变化的局部变化的操作依据,并开辟了利用大量多光谱卫星数据和无人机的多光谱的可能性成像系统。

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