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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >A methodology to derive global maps of leaf traits using remote sensing and climate data
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A methodology to derive global maps of leaf traits using remote sensing and climate data

机译:使用遥感和气候数据导出叶状性状的全球地图的方法

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This paper introduces a modular processing chain to derive global high-resolution maps of leaf traits. In particular, we present global maps at 500 m resolution of specific leaf area, leaf dry matter content, leaf nitrogen and phosphorus content per dry mass, and leaf nitrogen/phosphorus ratio. The processing chain exploits machine learning techniques along with optical remote sensing data (MODIS/Landsat) and climate data for gap filling and up-scaling of in-situ measured leaf traits. The chain first uses random forests regression with surrogates to fill gaps in the database ( 45% of missing entries) and maximizes the global representativeness of the trait dataset. Plant species are then aggregated to Plant Functional Types (PFTs). Next, the spatial abundance of PFTs at MODIS resolution (500 m) is calculated using Landsat data (30 m). Based on these PFT abundances, representative trait values are calculated for MODIS pixels with nearby trait data. Finally, different regression algorithms are applied to globally predict trait estimates from these MODIS pixels using remote sensing and climate data. The methods were compared in terms of precision, robustness and efficiency. The best model (random forests regression) shows good precision (normalized RMSE = 20%) and goodness of fit (averaged Pearson's correlation R = 0.78) in any considered trait. Along with the estimated global maps of leaf traits, we provide associated uncertainty estimates derived from the regression models. The process chain is modular, and can easily accommodate new traits, data streams (traits databases and remote sensing data), and methods. The machine learning techniques applied allow attribution of information gain to data input and thus provide the opportunity to understand trait-environment relationships at the plant and ecosystem scales. The new data products the gap-filled trait matrix, a global map of PFT abundance per MODIS gridcells and the high-resolution global leaf trait maps are complementary to existing large-scale observations of the land surface and we therefore anticipate substantial contributions to advances in quantifying, understanding and prediction of the Earth system.
机译:本文介绍了一种模块化加工链,可以推导出叶状性状的全球高分辨率映射。特别是,我们在每种干含量的特定叶面积,叶片干物质含量,叶片氮气和磷含量和叶氮/磷比例下呈现为500米分辨率的全球地图,以及叶片氮/磷比。加工链利用机器学习技术以及光学遥感数据(MODIS / LANDSAT)和用于原位测量叶状性状的GAP填充和上级的气候数据。链首先使用随机森林与代理人来填补数据库中的差距(& 45%的缺失条目),并最大限度地提高特征数据集的全局代表性。然后将植物物种聚集到植物功能类型(PFT)中。接下来,使用Landsat数据(30米)计算MODIS分辨率(500μm)的PFTS的空间丰度。基于这些PFT丰度,计算具有附近特征数据的MODIS像素的代表性分类值。最后,使用遥感和气候数据将不同的回归算法应用于来自这些MODIS像素的全局预测性状估计。在精确,鲁棒性和效率方面进行比较这些方法。最佳模型(随机森林回归)显示出良好的精度(归一化Rmse& = 20%),并且在任何考虑的特征中均匀的贴合(平均Pearson的相关性R = 0.78)。随着叶状性状的估计全球地图,我们提供了来自回归模型的相关不确定性估计。过程链是模块化的,并且可以容易地容纳新的特征,数据流(特征数据库和遥感数据)和方法。应用机器学习技术允许信息增益归因于数据输入,因此提供了理解工厂和生态系统尺度的特征环境关系的机会。新的数据产品填补的特质矩阵,每种Modis Gridcells和高分辨率全球叶子性状地图的全球PFT丰度地图是对土地面积的现有大规模观测的互补,因此预计会促进贡献量化,理解和预测地球系统。

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