Fusion of Multiple Models for Improving Gross Primary Production Estimation With Eddy Covariance Data Based on Machine Learning

Author:

Tian Zhenkun1ORCID,Yi Chuixiang23ORCID,Fu Yingying4ORCID,Kutter Eric2,Krakauer Nir Y.5,Fang Wei6ORCID,Zhang Qin7,Luo Hui8

Affiliation:

1. School of Applied Technology China University of Labor Relations Beijing China

2. School of Earth and Environmental Sciences Queens College City University of New York Flushing NY USA

3. Earth and Environmental Sciences Department Graduate Center City University of New York New York NY USA

4. School of Mathematics and Statistics Beijing Technology and Business University Beijing China

5. Department of Civil Engineering and NOAA‐CREST The City College of New York New York NY USA

6. Department of Biology Dyson College of Arts and Sciences Pace University‐NYC New York NY USA

7. Institution of Water and Environment Research Dalian University of Technology Dalian China

8. State Key Laboratory of Earth Surface Processes and Resource Ecology Beijing Normal University Beijing China

Abstract

AbstractTerrestrial gross primary production (GPP) represents the magnitude of CO2 uptake through vegetation photosynthesis, and is a key variable for carbon cycles between the biosphere and atmosphere. Light use efficiency (LUE) models have been widely used to estimate GPP for its physiological mechanisms and availability of data acquisition and implementation, yet each individual GPP model has exhibited large uncertainties due to input errors and model structure, and further studies of systematic validation, comparison, and fusion of those models with eddy covariance (EC) site data across diverse ecosystem types are still needed in order to further improve GPP estimation. We here compared and fused five GPP models (VPM, EC‐LUE, GOL‐PEM, CHJ, and C‐Fix) across eight ecosystems based on FLUXNET2015 data set using the ensemble methods of Bayesian Model Averaging (BMA), Support Vector Machine (SVM), and Random Forest (RF) separately. Our results showed that for individual models, EC‐LUE gave a better performance to capture interannual variability of GPP than other models, followed by VPM and GLO‐PEM, while CHJ and C‐Fix were more limited in their estimation performance. We found RF and SVM were superior to BMA on merging individual models at various plant functional types (PFTs) and at the scale of individual sites. On the basis of individual models, the fusion methods of BMA, SVM, and RF were examined by a five‐fold cross validation for each ecosystem type, and each method successfully improved the average accuracy of estimation by 8%, 18%, and 19%, respectively.

Funder

China University of Labor Relations

China Scholarship Council

Lawrence Berkeley National Laboratory

US National Science Foundation

U.S. Department of Agriculture

US Department of Energy

Publisher

American Geophysical Union (AGU)

Subject

Paleontology,Atmospheric Science,Soil Science,Water Science and Technology,Ecology,Aquatic Science,Forestry

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