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Linking process-based potato models with light reflectance data: Does model complexity enhance yield prediction accuracy?

机译:将基于过程的Potato Models与光反射率数据连接:模型复杂性提高产量预测准确性吗?

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Data acquisition for parameterization is one of the most important limitations for the use of potato crop growth models. Non-destructive techniques such as remote sensing for gathering required data could circumvent this limitation. Our goal was to analyze the effects of incorporating ground-based spectral canopy reflectance data into two light interception models with different complexity. A dynamic-hourly scale-canopy photosynthesis model (DCPM), based on a non-rectangular hyperbola applied to sunlit and shaded leaf layers and considering carbon losses by respiration, was implemented (complex model). Parameters included the light extinction coefficient, the proportion of light transmitted by leaves, the fraction of incident diffuse photosynthetically active radiation and leaf area index. On the other hand, a simple crop growth model (CGM) based on daily scale of light interception, light use efficiency (LUE) and harvest index was parameterized using either canopy cover (CGM(cc)) or the weighted difference vegetation index (CGM(WDVI)). A spectroradiometer, a chlorophyll meter and a multispectral camera were used to derive the required parameters. CGM(WDVI) improved yield prediction compared to CGM(cc). Both CGM(WDVI) and DCPM showed high degree of accuracy in the yield prediction. Since large LUE variations were detected depending on the diffuse component of radiation, the improvement of simple CGM using remotely sensed data is contingent on an appropriate LUE estimation. Our study suggests that the incorporation of remotely sensed data in models with different temporal resolution and level of complexity improves yield prediction in potato. (C) 2016 Elsevier B.V. All rights reserved.
机译:参数化数据采集是使用马铃薯作物生长模型的最重要限制之一。非破坏性技术,例如收集所需数据的遥感可以避免这种限制。我们的目标是分析将地基光谱冠层反射数据掺入两个光拦截模型中,以不同的复杂性。基于非矩形双曲线施加到阳光照射和阴影叶片层并考虑呼吸碳损失的动态时分冠层光合模型(DCPM)(复杂模型)。参数包括光消光系数,叶片传递的光比例,入射的分数弥漫性光合作用辐射和叶面积指数。另一方面,使用基于每日光拦截的简单作物生长模型(CGM),使用顶篷覆盖(CGM(CC))或加权差异植被指数(CGM (WDVI))。光谱辐射器,叶绿素仪表和多光谱相机用于得出所需的参数。与CGM(CC)相比,CGM(WDVI)改善了产量预测。 CGM(WDVI)和DCPM均在产量预测中显示出高度精度。由于根据辐射的漫反射分量检测到大的齿状变化,因此使用远程感测数据的简单CGM的改善在适当的LUE估计上。我们的研究表明,在具有不同时间分辨率和复杂程度水平的模型中将远程感测数据提高了马铃薯的产量预测。 (c)2016年Elsevier B.v.保留所有权利。

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