Model prediction of biome‐specific global soil respiration from 1960 to 2012
Type de ressource
Auteurs/contributeurs
- Zhao, Zhengyong (Auteur)
- Peng, Changhui (Auteur)
- Yang, Qi (Auteur)
- Meng, Fan‐Rui (Auteur)
- Song, Xinzhang (Auteur)
- Chen, Shutao (Auteur)
- Epule, Terence Epule (Auteur)
- Li, Peng (Auteur)
- Zhu, Qiuan (Auteur)
Titre
Model prediction of biome‐specific global soil respiration from 1960 to 2012
Résumé
Abstract
Biome‐specific soil respiration (Rs) has important yet different roles in both the carbon cycle and climate change from regional to global scales. To date, no comparable studies related to global biome‐specific Rs have been conducted applying comprehensive global Rs databases. The goal of this study was to develop artificial neural network (
ANN
) models capable of spatially estimating global Rs and to evaluate the effects of interannual climate variations on 10 major biomes. We used 1976 annual Rs field records extracted from global Rs literature to train and test the
ANN
models. We determined that the best
ANN
model for predicting biome‐specific global annual Rs was the one that applied mean annual temperature (
MAT
), mean annual precipitation (
MAP
), and biome type as inputs (
r
2
= 0.60). The
ANN
models reported an average global Rs of 93.3 ± 6.1 Pg C yr
−1
from 1960 to 2012 and an increasing trend in average global annual Rs of 0.04 Pg C yr
−1
. Estimated annual Rs increased with increases in
MAT
and
MAP
in cropland, boreal forest, grassland, shrubland, and wetland biomes. Additionally, estimated annual Rs decreased with increases in
MAT
and increased with increases in
MAP
in desert and tundra biomes, and only significantly decreased with increases in
MAT
(
r
2
= 0.87) in the savannah biome. The developed biome‐specific global Rs database for global land and soil carbon models will aid in understanding the mechanisms underlying variations in soil carbon dynamics and in quantifying uncertainty in the global soil carbon cycle.
,
Key Points
Predict biome‐specific global soil respiration from 1960 to 2012 using an artificial neural network model
Prediction determined an average global soil respiration of 93.3 ± 6.1 Pg C yr
−1
and an increasing trend of 0.04 Pg C yr
−1
The 10 biome‐specific soil respiration estimates made it possible to trace different responses to global climate change in each biome
Publication
Earth's Future
Volume
5
Numéro
7
Pages
715-729
Date
07/2017
Abrév. de revue
Earth's Future
Langue
en
ISSN
2328-4277, 2328-4277
Consulté le
18/11/2024 15:03
Catalogue de bibl.
DOI.org (Crossref)
Autorisations
Référence
Zhao, Z., Peng, C., Yang, Q., Meng, F., Song, X., Chen, S., Epule, T. E., Li, P., & Zhu, Q. (2017). Model prediction of biome‐specific global soil respiration from 1960 to 2012. Earth’s Future, 5(7), 715–729. https://doi.org/10.1002/2016EF000480
Auteur·e·s
Lien vers cette notice