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Mapped Observation-Based Oceanic Dissolved Inorganic Carbon (DIC), monthly climatology from January to December (based on observations between 2004 and 2017), from the Max-Planck-Institute for Meteorology (MOBO-DIC_MPIM) (NCEI Accession 0221526)

INVESTIGATORS:
Lydia Keppler - Max Planck Institute for Meteorology - Hamburg (MPI)
Peter Landschützer ORCID logo - Max Planck Institute for Meteorology - Hamburg (MPI)
Nicolas Gruber ORCID logo - Institute of Biogeochemistry and Pollutant Dynamics (IBP)
Siv K. Lauvset ORCID logo - University of Bergen
Irene Stemmler - Max Planck Institute for Meteorology - Hamburg (MPI)

PACKAGE DESCRIPTION: This dataset contains mapped observation-based oceanic dissolved inorganic carbon (DIC), monthly climatology from January to December (based on observations between 2004 and 2017), from the Max-Planck-Institute for Meteorology (MOBO-DIC_MPIM). The SOM-FFN approach by Landschützer et al. (2013) was extended and applied to obtain time-varying gap-filled mapped fields of dissolved inorganic carbon (DIC) in the water column. In the SOM-FFN approach, the first step is to cluster the ocean into regions of similar physical and biogeochemical properties using self-organizing maps (SOM). In the second step, a feed-forward network (FFN) is run in each SOM-cluster to approximate and apply the statistical relationship between the target data (here: DIC), and better constrained predictor data that are available as mapped global fields. The SOM-FFN method was adjusted and in several ways compared to the original method by Landschützer et al. (2013), that mapped oceanic surface pCO2. As we map the DIC in the water column, we extended the mapping grid from three dimensions (latitude, longitude, and time), to four (latitude, longitude, time, and depth), and instead of monthly inter-annual fields, we resolved a monthly climatology based on the period from 2004 through 2017. As different predictors are available and/or meaningful when mapping DIC in the water column, we also have a different set of predictor data compared to the approach used by Landschützer et al. (2013). To overcome potential biases in the random selection of training and internal validation data, a bootstrapping approach was used, running the SOM-FFN method ten times. The mean across this ensemble was taken as the final DIC field. We defined the standard deviation across the ensemble as the uncertainty within the method, and name it ensemble spread.

CITE AS: Keppler, Lydia; Landschützer, Peter; Gruber, Nicolas; Lauvset, Siv K.; Stemmler, Irene (2020). Mapped Observation-Based Oceanic Dissolved Inorganic Carbon (DIC), monthly climatology from January to December (based on observations between 2004 and 2017), from the Max-Planck-Institute for Meteorology (MOBO-DIC_MPIM) (NCEI Accession 0221526). [indicate subset used]. NOAA National Centers for Environmental Information. Dataset. https://doi.org/10.25921/yvzj-zx46. Accessed [date].


IDENTIFICATION INFORMATION FOR THIS DATA PACKAGE:
NCEI ACCESSION: 0221526
NCEI DOI: https://doi.org/10.25921/yvzj-zx46
EXPOCODE: Various;
CRUISE ID: Various;
SECTION/LEG: Various;

TYPES OF STUDY:
Data synthesis product;

TEMPORAL COVERAGE:
START DATE: 2004-01-01
END DATE: 2017-12-01

SPATIAL COVERAGE:
NORTH: 64.5
WEST: -179.5
EAST: 179.5
SOUTH: -64.5

GEOGRAPHIC NAMES:
Pacific Ocean;Atlantic Ocean;Indian Ocean;Southern Ocean;Arctic Ocean;

PLATFORMS:
Various Research Ships;

RESEARCH PROJECT(S):
none;


VARIABLES / PARAMETERS:

Dissolved inorganic carbon (DIC in µmol kg-1, on the grid: lon, lat, depth, month)
Abbreviation: DIC
Unit: µmol kg-1
Ensemble spread (DIC_err in µmol kg-1, on the grid: lon, lat, depth, month)
Abbreviation: DIC_err
Unit: µmol kg-1
Longitude (lon; 179.5°W to 179.5°E, at 1° resolution)
Abbreviation: lon
Unit: degrees_east
Latitude (lat; 64.5°N to 64.5°S, at 1° resolution)
Abbreviation: lat
Unit: degrees_north
Depth (depth; from 2.5 m to 1975 m, on 33 depth levels)
Abbreviation: depth
Unit: meters
Month of the year (month; 1 to 12)
Abbreviation: month
Unit: µmol/kg

PUBLICATIONS DESCRIBING THIS DATASET:
Keppler, L., Landschützer, P., Gruber, N., Lauvset, S. K., and Stemmler, I. (2020). Seasonal carbon dynamics in the near‐global ocean. Global Biogeochemical Cycles, 34, e2020GB006571. https://doi.org/10.1029/2020GB006571
ADDITIONAL INFORMATION:
The calculations are based on GLODAPv2.2019, World Ocean Atlas 2018 and Roemmich-Gilson Argo Climatology data synthesis products
FUNDING AGENCY:
European Community
PROJECT TITLE: The research leading to these results has received funding from the European Community’s Horizon 2020 Project under grant agreement no. 821003 (4C)
PROJECT ID: 821003 (4C)

SUBMITTED BY: Lydia Keppler (lydia.keppler@mpimet.mpg.de)

SUBMISSION DATE: 2020-11-02