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Modeling winter wheat phenology and carbon dioxide fluxes at the ecosystem scale based on digital photography and eddy covariance data

机译:基于数字摄影和涡度协方差数据在生态系统规模上模拟冬小麦物候和二氧化碳通量

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Recent studies have shown that the greenness index derived from digital camera imagery has high spatial and temporal resolution. These findings indicate that it can not only provide a reasonable characterization of canopy seasonal variation but also make it possible to optimize ecological models. To examine this possibility, we evaluated the application of digital camera imagery for monitoring winter wheat phenology and modeling gross primary production (GPP).By combining the data for the green cover fraction and for GPP, we first compared 2 different indices (the ratio greenness index (green-to-red ratio, G/R) and the relative greenness index (green to sum value, G%)) extracted from digital images obtained repeatedly over time and confirmed that G/R was best suited for tracking canopy status. Second, the key phenological stages were estimated using a time series of G/R values. The mean difference between the observed phenological dates and the dates determined from field data was 3.3. days in 2011 and 4. days in 2012, suggesting that digital camera imagery can provide high-quality ground phenological data.Furthermore, we attempted to use the data (greenness index and meteorological data in 2011) to optimize a light use efficiency (LUE) model and to use the optimal parameters to simulate the daily GPP in 2012. A high correlation (R~2=0.90) was found between the values of LUE-based GPP and eddy covariance (EC) tower-based GPP, showing that the greenness index and meteorological data can be used to predict the daily GPP. This finding provides a new method for interpolating GPP data and an approach to the estimation of the temporal and spatial distributions of photosynthetic productivity.In this study, we expanded the potential use of the greenness index derived from digital camera imagery by combining it with the LUE model in an analysis of well-managed cropland. The successful application of digital camera imagery will improve our knowledge of ecosystem processes at the temporal and spatial levels.
机译:最近的研究表明,从数码相机图像获得的绿色指数具有很高的时空分辨率。这些发现表明,它不仅可以为冠层季节变化提供合理的特征,而且可以优化生态模型。为了检验这种可能性,我们评估了数码相机图像在监测冬小麦物候和建模总初级生产(GPP)中的应用。通过结合绿色覆盖率部分和GPP的数据,我们首先比较了两个不同的指标(绿色比率)从随时间反复获得的数字图像中提取的指数(绿色与红色的比率,G / R)和相对绿色指数(绿色与总和,G%)确定了G / R最适合跟踪树冠状态。其次,使用G / R值的时间序列估算关键的物候阶段。观察到的物候日期与从田间数据确定的日期之间的平均差为3.3。 2011年的天数和2012年的4天。这表明数码相机图像可以提供高质量的地面物候数据。此外,我们尝试使用这些数据(2011年的绿色指数和气象数据)来优化光的利用效率(LUE)模型并使用最佳参数模拟2012年的每日GPP。基于LUE的GPP值和基于涡度协方差(EC)的GPP值之间存在较高的相关性(R〜2 = 0.90),表明绿色指数和气象数据可用于预测每日GPP。这项发现为插值GPP数据提供了一种新方法,并且为估算光合生产力的时空分布提供了一种方法。在这项研究中,我们通过将其与LUE相结合,扩展了从数码相机图像获得的绿色指数的潜在用途模型在管理良好的耕地中进行分析。数码相机图像的成功应用将改善我们在时空上对生态系统过程的了解。

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