北纬生态系统模拟器(BEPS)模型估算半北纬山地松林总初级生产力的适用性

Q4 Agricultural and Biological Sciences Forestry Studies Pub Date : 2021-12-01 DOI:10.2478/fsmu-2021-0008
Fariha Harun, K. Soosaar, A. Krasnova, J. Pisek
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引用次数: 0

摘要

总初级生产力(GPP)是陆地和全球碳循环以及地球气候研究的核心组成部分。本研究以爱沙尼亚Soontaga地区为例,利用BEPS模型对半北方森林的GPP进行估算。该模型采用遥感(叶面积指数(LAI)、结块指数)和气象数据输入(气温、全球辐射、空气湿度、降水和风速)相结合的方式运行。结果与现有通量塔测量得到的GPP进行了验证。使用多个空间阈值(500 m-2 km)对场地的空间代表性进行了评估。研究发现,在提供高质量输入数据的条件下,BEPS模型可以很好地跟踪针叶半寒带森林GPP的季节和年际变化。
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Suitability of the boreal ecosystem simulator (BEPS) model for estimating gross primary productivity in hemi-boreal upland pine forest
Abstract Gross Primary Productivity (GPP) is the core component of the terrestrial and global carbon cycle and Earth’s climate research. In this study, GPP estimation was performed with the Boreal Ecosystem Productivity Simulator (BEPS) model to check its performance for hemi-boreal forests on the example of the Soontaga area in Estonia. The model was run by using a combination of remote sensing (leaf area index (LAI), clumping index) and meteorological data inputs (air temperature, global radiation, air humidity, precipitation and wind speed). The results were validated against GPP derived from the available flux tower measurements. The spatial representativeness of the site was evaluated using multiple spatial thresholds (500 m–2 km), as well. We found that the BEPS model can track the GPP changes with the season and inter-annual variation very well in a coniferous hemi-boreal forest, given that good quality input data are provided.
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Forestry Studies
Forestry Studies Agricultural and Biological Sciences-Forestry
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