特质
光合作用
光合能力
生物
植物
光谱学
计算机科学
物理
天文
程序设计语言
作者
Julien Lamour,Shawn Serbin,Alistair Rogers,Kelvin Acebron,Elizabeth A. Ainsworth,Loren P. Albert,Michael Alonzo,Jeremiah Anderson,Owen K. Atkin,Nicolas Barbier,Mallory L. Barnes,Carl J. Bernacchi,N. Besson,Angela C. Burnett,Joshua S. Caplan,Jérôme Chave,Alexander W. Cheesman,Ilona Clocher,Onoriode Coast,Sabrina Coste
标识
DOI:10.5194/essd-2025-213
摘要
Abstract. Accurate assessment of leaf functional traits is crucial for a diverse range of applications from crop phenotyping to parameterizing global climate models. Leaf reflectance spectroscopy offers a promising avenue to advance ecological and of robust hyperspectral models for predicting leaf photosynthetic capacity and associated traits from reflectance data has been hindered by limited data availability across species and environments. Here we introduce the Global Spectra-Trait Initiative (GSTI), a collaborative repository of paired leaf hyperspectral and gas exchange measurements from diverse ecosystems. The GSTI repository currently encompasses over 7500 observations from 397 species and 41 sites gathered from 36 published and unpublished studies, thereby offering a key resource for developing and validating hyperspectral models of leaf photosynthetic agricultural research by complementing traditional, time-consuming gas exchange measurements. However, the development capacity. The GSTI database is developed on GitHub (https://github.com/plantphys/gsti) and published to ESS-dive https://data.ess-dive.lbl.gov/datasets/doi:10.15485/2530733, Lamour et al., 2025). It includes gas exchange data, derived photosynthetic parameters, and key leaf traits often associated with traditional gas exchange measurements such as leaf mass per area and leaf elemental composition. By providing a standardized repository for data sharing and analysis, we present a critical step towards creating hyperspectral models for predicting photosynthetic traits and associated leaf traits for terrestrial plants.
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