Intercomparison of global foliar trait maps reveals fundamental differences and limitations of upscaling approaches

IF 11.1 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Remote Sensing of Environment Pub Date : 2024-06-27 DOI:10.1016/j.rse.2024.114276
Benjamin Dechant , Jens Kattge , Ryan Pavlick , Fabian D. Schneider , Francesco M. Sabatini , Álvaro Moreno-Martínez , Ethan E. Butler , Peter M. van Bodegom , Helena Vallicrosa , Teja Kattenborn , Coline C.F. Boonman , Nima Madani , Ian J. Wright , Ning Dong , Hannes Feilhauer , Josep Peñuelas , Jordi Sardans , Jesús Aguirre-Gutiérrez , Peter B. Reich , Pedro J. Leitão , Philip A. Townsend
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Abstract

Foliar traits such as specific leaf area (SLA), leaf nitrogen (N), and phosphorus (P) concentrations play important roles in plant economic strategies and ecosystem functioning. Various global maps of these foliar traits have been generated using statistical upscaling approaches based on in-situ trait observations. Here, we intercompare such global upscaled foliar trait maps at 0.5° spatial resolution (six maps for SLA, five for N, three for P), categorize the upscaling approaches used to generate them, and evaluate the maps with trait estimates from a global database of vegetation plots (sPlotOpen). We disentangled the contributions from different plant functional types (PFTs) to the upscaled maps and quantified the impacts of using different plot-level trait metrics on the evaluation with sPlotOpen: community weighted mean (CWM) and top-of-canopy weighted mean (TWM). We found that the global foliar trait maps of SLA and N differ drastically and fall into two groups that are almost uncorrelated (for P only maps from one group were available). The primary factor explaining the differences between these groups is the use of PFT information combined with remote sensing-derived land cover products in one group while the other group mostly relied on environmental predictors alone. The maps that used PFT and corresponding land cover information exhibit considerable similarities in spatial patterns that are strongly driven by land cover. The maps not using PFTs show a lower level of similarity and tend to be strongly driven by individual environmental variables. Upscaled maps of both groups were moderately correlated to sPlotOpen data aggregated to the grid-cell level (R = 0.2–0.6) when processing sPlotOpen in a way that is consistent with the respective trait upscaling approaches, including the plot-level trait metric (CWM or TWM) and the scaling to the grid cells with or without accounting for fractional land cover. The impact of using TWM or CWM was relevant, but considerably smaller than that of the PFT and land cover information. The maps using PFT and land cover information better reproduce the between-PFT trait differences of sPlotOpen data, while the two groups performed similarly in capturing within-PFT trait variation.

Our findings highlight the importance of explicitly accounting for within-grid-cell trait variation, which has important implications for applications using existing maps and future upscaling efforts. Remote sensing information has great potential to reduce uncertainties related to scaling from in-situ observations to grid cells and the regression-based mapping steps involved in the upscaling.

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全球叶片性状图的相互比较揭示了放大方法的根本差异和局限性
比叶面积(SLA)、叶片氮(N)和磷(P)浓度等叶片性状在植物经济战略和生态系统功能中发挥着重要作用。根据现场性状观测结果,采用统计放大方法生成了这些叶片性状的各种全球地图。在此,我们比较了这些空间分辨率为 0.5°的全球叶片性状地图(SLA 六张、N 五张、P 三张),对生成这些地图所使用的放大方法进行了分类,并用全球植被地块数据库(sPlotOpen)中的性状估计值对这些地图进行了评估。我们区分了不同植物功能类型(PFTs)对放大地图的贡献,并量化了使用不同地块级性状指标对 sPlotOpen 评估的影响:群落加权平均值(CWM)和冠顶加权平均值(TWM)。我们发现,SLA 和 N 的全球叶面性状图差别很大,分为几乎不相关的两组(P 只有一组的图)。造成这两组之间差异的主要原因是,一组使用了结合遥感衍生土地覆被产品的叶面性状信息,而另一组则主要依靠环境预测因子。使用 PFT 和相应土地覆被信息的地图在空间模式上表现出相当大的相似性,而这些空间模式主要由土地覆被驱动。未使用 PFT 的地图显示出较低程度的相似性,并倾向于受个别环境变量的强烈驱动。在处理 sPlotOpen 时,两组的放大地图与汇总到网格单元水平的 sPlotOpen 数据具有适度的相关性(= 0.2-0.6),这与各自的性状放大方法一致,包括地块级性状度量(CWM 或 TWM)以及在考虑或不考虑部分土地覆被的情况下放大到网格单元。使用 TWM 或 CWM 的影响是相关的,但要比使用 PFT 和土地覆被信息的影响小得多。使用 PFT 和土地覆被信息的地图更好地再现了 sPlotOpen 数据的不同地块之间的性状差异,而两组地图在捕捉不同地块内部性状差异方面的表现相似。
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来源期刊
Remote Sensing of Environment
Remote Sensing of Environment 环境科学-成像科学与照相技术
CiteScore
25.10
自引率
8.90%
发文量
455
审稿时长
53 days
期刊介绍: Remote Sensing of Environment (RSE) serves the Earth observation community by disseminating results on the theory, science, applications, and technology that contribute to advancing the field of remote sensing. With a thoroughly interdisciplinary approach, RSE encompasses terrestrial, oceanic, and atmospheric sensing. The journal emphasizes biophysical and quantitative approaches to remote sensing at local to global scales, covering a diverse range of applications and techniques. RSE serves as a vital platform for the exchange of knowledge and advancements in the dynamic field of remote sensing.
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