详细信息
被引量:3
文献类型:期刊文献
中文题名:Sensitivity analysis of Biome-BGCMuSo for gross and net primary productivity of typical forests in China
作者:Hongge Ren[1,2] Li Zhang[1] Min Yan[1] Xin Tian[3] Xingbo Zheng[4,5]
第一作者:Hongge Ren
机构:[1]Key Laboratory of Digital Earth Science,Aerospace Information Research Institute,Chinese Academy of Sciences,Beijing,100094,China;[2]University of Chinese Academy of Sciences,Beijing,100049,China;[3]Institute of Forest Resource Information Techniques,Chinese Academy of Forestry,Beijing,100091,China;[4]Key Laboratory of Forest Ecology and Management,Institute of Applied Ecology,Chinese Academy of Sciences,Shenyang,110016,China;[5]Research Station of Changbai Mountain Forest Ecosystems,Chinese Academy of Sciences,Antu,133613,Jilin,China
年份:2022
卷号:9
期号:1
起止页码:111-123
中文期刊名:森林生态系统:英文版
外文期刊名:Forest Ecosystems
收录:Scopus;CSCD:【CSCD2021_2022】;PubMed;
基金:This study was funded by the National Natural Science Foundation of China(grant number 41871279 and 41901364).
语种:英文
中文关键词:Sensitivity analysis;Biome-BGCMuSo;Productivity;Regression analysis;EFAST
分类号:S718.5
摘要:Background:Process-based models are widely used to simulate forest productivity,but complex parameterization and calibration challenge the application and development of these models.Sensitivity analysis of numerous parameters is an essential step in model calibration and carbon flux simulation.However,parameters are not dependent on each other,and the results of sensitivity analysis usually vary due to different forest types and regions.Hence,global and representative sensitivity analysis would provide reliable information for simple calibration.Methods:To determine the contributions of input parameters to gross primary productivity(GPP)and net primary productivity(NPP),regression analysis and extended Fourier amplitude sensitivity testing(EFAST)were conducted for Biome-BGCMuSo to calculate the sensitivity index of the parameters at four observation sites under climate gradient from ChinaFLUX.Results:Generally,GPP and NPP were highly sensitive to C:Nleaf(C:N of leaves),Wint(canopy water interception coefficient),k(canopy light extinction coefficient),FLNR(fraction of leaf N in Rubisco),MRpern(coefficient of linear relationship between tissue N and maintenance respiration),VPDf(vapor pressure deficit complete conductance reduction),and SLA1(canopy average specific leaf area in phenological phase 1)at all observation sites.Various sensitive parameters occurred at four observation sites within different climate zones.GPP and NPP were particularly sensitive to FLNR,SLA1 and Wint,and C:Nleaf in temperate,alpine and subtropical zones,respectively.Conclusions:The results indicated that sensitivity parameters of China's forest ecosystems change with climate gradient.We found that parameter calibration should be performed according to plant functional type(PFT),and more attention needs to be paid to the differences in climate and environment.These findings contribute to determining the target parameters in field experiments and model calibration.
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