植物性状影响光合效率的全球时空变化

IF 15.8 1区 生物学 Q1 PLANT SCIENCES
Yulin Yan, Bolun Li, Benjamin Dechant, Mingzhu Xu, Xiangzhong Luo, Sai Qu, Guofang Miao, Jiye Leng, Rong Shang, Lei Shu, Chongya Jiang, Han Wang, Sujong Jeong, Youngryel Ryu, Jing M. Chen
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引用次数: 0

摘要

光合效率(PE)量化了光化学中用于光合作用产生化学能的吸收光的比例,对于了解生态系统生产力和全球碳循环至关重要,特别是在植被胁迫条件下。然而,近60%的全球陆地PE时空变化仍未得到解释。在这里,我们整合了遥感和生态进化最优理论,以获得关键的植物性状,以及可解释的机器学习和全球涡动相关观测,以揭示每日PE变化的驱动因素。与单独使用气候数据相比,将植物性状纳入我们的模型将C3植被的解释日PE方差从36%增加到80%,C4植被的解释日PE方差从54%增加到84%。叶绿素含量、叶片寿命和单位面积叶质量等关键植物性状在全球生物群落和时间尺度上一直是重要的影响因素。水分供应和光照条件在调节PE方面也至关重要,这强调了将植物性状与气候因素结合起来的综合方法的必要性。总的来说,我们的研究结果证明了遥感和生态进化最优理论在捕获主要PE驱动因素方面的潜力,为更准确地预测生态系统生产力和改进气候变化下的地球系统模型提供了有价值的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Plant traits shape global spatiotemporal variations in photosynthetic efficiency

Plant traits shape global spatiotemporal variations in photosynthetic efficiency

Photosynthetic efficiency (PE) quantifies the fraction of absorbed light used in photochemistry to produce chemical energy during photosynthesis and is essential for understanding ecosystem productivity and the global carbon cycle, particularly under conditions of vegetation stress. However, nearly 60% of the global spatiotemporal variance in terrestrial PE remains unexplained. Here we integrate remote sensing and eco-evolutionary optimality theory to derive key plant traits, alongside explainable machine learning and global eddy covariance observations, to uncover the drivers of daily PE variations. Incorporating plant traits into our model increases the explained daily PE variance from 36% to 80% for C3 vegetation and from 54% to 84% for C4 vegetation compared with using climate data alone. Key plant traits—including chlorophyll content, leaf longevity and leaf mass per area—consistently emerge as important factors across global biomes and temporal scales. Water availability and light conditions are also critical in regulating PE, underscoring the need for an integrative approach that combines plant traits with climatic factors. Overall, our findings demonstrate the potential of remote sensing and eco-evolutionary optimality theory to capture principal PE drivers, offering valuable tools for more accurately predicting ecosystem productivity and improving Earth system models under climate change.

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来源期刊
Nature Plants
Nature Plants PLANT SCIENCES-
CiteScore
25.30
自引率
2.20%
发文量
196
期刊介绍: Nature Plants is an online-only, monthly journal publishing the best research on plants — from their evolution, development, metabolism and environmental interactions to their societal significance.
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