CEDAR-GPP: A Spatiotemporally Upscaled Dataset of Gross Primary Productivity Incorporating CO2 Fertilization (Q6692529)
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Dataset published at Zenodo repository.
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | CEDAR-GPP: A Spatiotemporally Upscaled Dataset of Gross Primary Productivity Incorporating CO2 Fertilization |
Dataset published at Zenodo repository. |
Statements
Overview:----------CEDAR-GPP is a global Gross Primary Productivity (GPP) product, including monthly GPP estimates at 0.05 spatial resolution. These datasets were generated via upscaling eddy covariance measurements with machine learning and satellite datasets. CEDAR-GPP uniquely incorporated the direct CO2 fertilization effect (CFE) using both data-driven and theoretical approaches.GPP estimates were produced from ten different model setups that vary by temporal span, direct CFE incorporation method, and GPP partitioning approaches. CEDAR stands for upsCaling Ecosystem Dynamics with ARtificial intelligence. Authors:----------Yanghui Kang, Maoya Bassiouni, Max Gaber, Xinchen Lu, Trevor KeenanUniversity of California, Berkeley File Structure:----------Each zip file contains GPP data from a CEDAR model setup. File Naming Convention:----------All netCDF files follow this naming convention:CEDAR-GPP_version_model-setup_YYYYMM.nc Where:model-setup comprises of temporal_span_CFE_option_GPP_partitioningtemporal_span: ST denotes short-term (2001 to 2020); LT denotes long-term (1982 to 2020)CFE_option: 'Baseline' indicates no direct CO2 fertilization effect, 'CFE-ML' represents direct CO2 fertilization incorporated by ML, 'CFE-Hybrid' implies direct CO2 fertilization incorporated by theoryGPP_partitioning: 'NT' for night-time GPP partitioning method, 'DT' for day-time GPP partitioning method NetCDF characteristics:----------- Spatial Resolution: 0.05 degree- Temporal Resolution: Monthly- Temporal Coverage: Short-term (ST): 2001-2020; Long-term (LT): 1982 - 2020- Image Dimension: Rows: 3600, Columns: 7200- Units: gCm^-2day^-1- Fill Value: -9999- Multiply By Scale Factor: 0.01- Data Type: uint16- File Size: Approximately 99 MB per file Data variables:----------- GPP_mean: monthly gross primary productivity (gCm^-2day^-1), mean from 30 model ensemble- GPP_std: standard deviation of 30 model ensemble Support Contact:----------For any queries related to this dataset, please contact: Name: Yanghui KangEmail: yanghuikang@berkeley.edu
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21 May 2024
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V1.0
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