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Spatiotemporal Changes and Driver Analysis of Ecosystem Respiration in the Tibetan and Inner Mongolian Grasslands.

Authors :
Liu, Weihua
He, Honglin
Wu, Xiaojing
Ren, Xiaoli
Zhang, Li
Zhu, Xiaobo
Feng, Lili
Lv, Yan
Chang, Qingqing
Xu, Qian
Zhang, Mengyu
Zhang, Yonghong
Wang, Tianxiang
Source :
Remote Sensing; Aug2022, Vol. 14 Issue 15, p3563-3563, 22p
Publication Year :
2022

Abstract

Ecosystem respiration (RE) plays a critical role in terrestrial carbon cycles, and quantification of RE is important for understanding the interaction between climate change and carbon dynamics. We used a multi-level attention network, Geoman, to identify the relative importance of environmental factors and to simulate spatiotemporal changes in RE in northern China's grasslands during 2001–2015, based on 18 flux sites and multi-source spatial data. Results indicate that Geoman performed well (R<superscript>2</superscript> = 0.87, RMSE = 0.39 g C m<superscript>−2</superscript> d<superscript>−1</superscript>, MAE = 0.28 g C m<superscript>−2</superscript> d<superscript>−1</superscript>), and that grassland type and soil texture are the two most important environmental variables for RE estimation. RE in alpine grasslands showed a decreasing gradient from southeast to northwest, and that of temperate grasslands showed a decreasing gradient from northeast to southwest. This can be explained by the enhanced vegetation index (EVI), and soil factors including soil organic carbon density and soil texture. RE in northern China's grasslands showed a significant increase (1.81 g C m<superscript>−2</superscript> yr<superscript>−1</superscript>) during 2001–2015. The increase rate of RE in alpine grassland (2.36 g C m<superscript>−2</superscript> yr<superscript>−1</superscript>) was greater than that in temperate grassland (1.28 g C m<superscript>−2</superscript> yr<superscript>−1</superscript>). Temperature and EVI contributed to the interannual change of RE in alpine grassland, and precipitation and EVI were the main contributors in temperate grassland. This study provides a key reference for the application of advanced deep learning models in carbon cycle simulation, to reduce uncertainties and improve understanding of the effects of biotic and climatic factors on spatiotemporal changes in RE. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20724292
Volume :
14
Issue :
15
Database :
Complementary Index
Journal :
Remote Sensing
Publication Type :
Academic Journal
Accession number :
158523622
Full Text :
https://doi.org/10.3390/rs14153563