SIF-based GPP modeling for evergreen forests considering the seasonal variation in maximum photochemical efficiency

初级生产 大气科学 环境科学 常绿 光合作用 叶绿素荧光 化学 生态学 生态系统 物理 生物 生物化学
作者
Ruonan Chen,Liangyun Liu,Zhunqiao Liu,Xinjie Liu,Jongmin Kim,Hyun Seok Kim,Ho-Jin Lee,Guosheng Wu,Chenhui Guo,Lianhong Gu
出处
期刊:Agricultural and Forest Meteorology [Elsevier]
卷期号:344: 109814-109814
标识
DOI:10.1016/j.agrformet.2023.109814
摘要

Solar-induced chlorophyll fluorescence (SIF) has shown great potential in estimating gross primary production (GPP). However, their quantitative relationship is not invariant, which undermines the reliability of empirical SIF-based GPP estimation at fine spatiotemporal scales, especially under extreme conditions. In this study, we developed a parsimonious mechanistic model for SIF-based GPP estimation in evergreen needle forests (ENF) by employing the Mechanistic Light Response framework and Eco-Evolutionary theory to describe the light and dark reactions during photosynthesis, respectively. Specifically, we found that considering the seasonal variation in a key parameter of the MLR framework, the maximum photochemical efficiency of photosystem II (ΦPSIImax), can avoid the GPP overestimation in winter and early spring due to the relatively low environmental sensitivity of SIF. Compared to the estimates from other benchmark models, our GPP estimates were closer to the 1: 1 line and had higher accuracy (average R2 = 0.86, RMSE=1.99 μmol m−2 s−1) across sites. Furthermore, the changes in the relationship between SIF and J (refers to the electron transport rate) contribute a lot to the dynamic SIF–GPP relationship in this study, while the J–GPP relationship is less variant when the temperature drops. The seasonal variation in the SIF–J relationship, especially the reduction in its slope at low temperatures, is found largely explained by the ΦPSIImax. These results indicate the importance of the uncertainty caused by the variation in the SIF–J relationship for SIF-based GPP estimation, and the consideration of changes in ΦPSIImax under extreme conditions (such as severe winter in this study) is crucial for the improvement of GPP estimation via SIF.
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