carbon dioxide fertilization
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Author(s):  
LinLing Tang ◽  
Xiaoling Chen ◽  
Xiaobin Cai ◽  
Jian Li

Abstract Quantifying the drivers of terrestrial vegetation dynamics is critical for monitoring ecosystem carbon sequestration and bioenergy production. Large scale vegetation dynamics can be observed using the Leaf Area Index (LAI) derived from satellite data as a measure of “greenness”. Previous studies have quantified the effects of climate change and carbon dioxide fertilization on vegetation greenness. In contrast, the specific roles of land-use-related drivers (LURDs) on vegetation greenness have not been characterized. Here, we combined the Interior-Point Method-optimized ecosystem model and the Bayesian model averaging statistical method to disentangle the roles of LURDs on vegetation greenness in China from 2000 to 2014. Results showed a significant increase in growing season LAI (greening) over 35% of the land area of China, whereas less than 6% of it exhibited a significantly decreasing trend (browning). The overall impact of LURDs on vegetation greenness over the whole country was comparatively low. However, the local effects of LURDs on the greenness trends of some specified areas were considerable due to afforestation and urbanization. Southern Coastal China had the greatest area fractions (35.82% of its corresponding area) of the LURDs effects on greening, following by Southwest China. It was because of these economic regions with great afforestation programs. Afforestation effects could explain 27% of the observed greening trends in the forest area. In contrast, the browning impact caused by urbanization was approximately three times of the greening effects of both climate change and carbon dioxide fertilization on the urban area. And they made the urban area had a 50% decrease in LAI. The effects of residual LURDs only accounted for less than 8% of the corresponding observed greenness changes. Such divergent roles would be valuable for understanding changes in local ecosystem functions and services under global environmental changes.


2021 ◽  
Vol 9 ◽  
Author(s):  
Liang Qiao ◽  
Zhiyan Zuo ◽  
Dong Xiao ◽  
Lulei Bu

Soil moisture variations and its relevant feedbacks (e.g., soil moisture–temperature and soil moisture–precipitation) have a crucial impact on the climate system. This study uses reanalysis and Coupled Model Intercomparison Project phase 6 simulations datasets to detect, attribute, and project soil moisture variations. The effect of anthropogenic forcings [greenhouse gases (GHG), anthropogenic aerosols (AA), and land use (LU) change] on soil moisture is much larger than that of the natural forcing. Soil moisture shows a drying trend at a global scale, which is mainly attributed to GHG forcing. The effects of external forcings vary with the regions significantly. Over eastern South America, GHG, AA, and natural forcings make soil dry, while LU forcing makes the soil wet. Over severely drying Europe, all the external forcings including GHG, AA, LU, and natural forcing exhibit drying effect. The optimal fingerprint method detection results show that some of GHG, AA, LU, and natural signals can be detected in soil moisture variations in some regions such as Europe. The soil will keep drying in all scenarios over most parts of the globe except Sahel and parts of mid-latitudes of Asia. With the increase of anthropogenic emissions, the variation of global soil moisture will be more extreme, especially in hotspots where the land–atmosphere coupling is intensive. The drying trend of soil moisture will be much larger on the surface than in middle and deep layers in the future, and this phenomenon will be more severe under the high-emission scenario. It may be affected by increased evaporation and the effect of carbon dioxide fertilization caused by global warming.


2021 ◽  
Author(s):  
Alemu Gonsamo ◽  
Philippe Ciais ◽  
Diego G. Miralles ◽  
Stephen Sitch ◽  
Wouter Dorigo ◽  
...  

2017 ◽  
Vol 26 (2) ◽  
pp. 140-145
Author(s):  
In-Lee Choi ◽  
인이 최 ◽  
Jae Su Yoon ◽  
Hyuk Sung Yoon ◽  
Ki-Young Choi ◽  
...  

Sensors ◽  
2016 ◽  
Vol 16 (11) ◽  
pp. 1941 ◽  
Author(s):  
Jianing Wang ◽  
Xintao Niu ◽  
Lingjiao Zheng ◽  
Chuantao Zheng ◽  
Yiding Wang

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