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Inferring Scalable Productivity-Related Grassland Functional Diversity in Combination with In-Situ Leaf Spectra and Sentinel-2 Data

Yujin Zhao, Zhisheng Wu,Yanping Zhao,Zhaoju Zheng,Xiaoming Lu, Weicheng Sun, Yang Wang,Yongfei Bai

Fundamental Research(2024)

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摘要
The positive relationships between biodiversity and ecosystem productivity have been broadly recognized in aquatic and terrestrial ecosystems, such as grasslands. However, remotely sensed assessment of functional diversity (FD) and its relationships with productivity across large regions are less studied in grasslands. In this study, we first examined the potential of spectral retrieval of 13 leaf functional traits from a species spectra-trait library to complement field measurements across three types of grassland communities in the Xinlingol grassland located in northern China. We then pre-selected the key traits out of 13 functional traits from 1664 plant individuals of 112 species to calculate in-situ productivity-related FD, and explored the multi-scale relationships of single-trait community weighed mean (CWM) and FD index (Rao's quadratic entropy, Rao Q) with ecosystem productivity at plot level (1 m × 1 m) and site level (30 m × 30 m), respectively. Finally, we applied Sentinel-2 satellite data to infer regional FD through statistical relationships with direct spectral association using partial least squares regression (PLSR). With the leaf spectral prediction (cross-validation R2cv = 0.48-0.81) and in-situ measurement, CWM of organic acid detergent fiber (ADF), phosphorus (P), specific leaf area (SLA), chlorophyll (Chl), lignin (Lig) and carbon (C) together with RaoQ of ADF, C, N, Chl, SLA, and calcium (Ca) were selected to explain changes in ecosystem productivity (80%) at the plot level, while CWM of Car, Chl, Lig, NDF, NSC, P, and SLA together with RaoQ of C, SLA and non-structural carbohydrates (NSC) were selected to indicate productivity (94%) at site level. Furthermore, we found the combination of single-trait CWM (60%) outperformed that of RaoQ (34%) in determining ecosystem productivity at the site level compared with their almost equal contributions at plot level. At the regional scale, Sentinel-2 data could be used to infer these selected single-trait CWM and RaoQ values (R2cv = 0.32-0.82) and biomass (R2cv = 0.76), except for CWM and RaoQ of C (R2cv = 0.12-0.18). This study underscored the potential of Sentinel-2 satellite with leaf spectral measurements to monitor grassland functional diversity, informing the linkages between functional diversity and ecosystem functioning at regional scale.
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关键词
Functional trait,Functional diversity,Spectra-trait library,Precipitation gradient,Ecosystem functioning,partial least squares regression (PLSR)
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