Contributors | Affiliation | Role |
---|---|---|
Lange, Nico | GEOMAR Kiel (GEOMAR) | Principal Investigator |
Benway, Heather | Woods Hole Oceanographic Institution (WHOI) | Co-Principal Investigator |
Fiedler, Björn | GEOMAR Kiel (GEOMAR) | Co-Principal Investigator |
Kinkade, Danie | Woods Hole Oceanographic Institution (WHOI BCO-DMO) | Co-Principal Investigator |
Tanhua, Toste | GEOMAR Kiel (GEOMAR) | Co-Principal Investigator |
Álvarez, Marta | Spanish National Research Council (IEO-CSIC) | Scientist |
Benoit-Cattin, Alice | Marine and Freshwater Research Institute of Iceland (MRI) | Scientist |
Buttigieg, Pier Luigi | Alfred Wegener Institute for Polar and Marine Research (AWI) | Scientist |
Coppola, Laurent | Laboratoire d’Océanographie de Villefranche CNRS (LOV-CNRS) | Scientist |
Currie, Kim I. | New Zealand National Institute of Water and Atmospheric Research (NIWA) | Scientist |
Flecha, Susana | Mediterranean Institute for Advanced Studies (IMEDEA-UIB-CSIC) | Scientist |
Honda, Makio C | Japan Agency for Marine-Earth Science and Technology (JAMSTEC) | Scientist |
Huertas, Emma I. | Instituto de Ciencias Marinas de Andalucia CSIC (ICMAN-CSIC) | Scientist |
Körtzinger, Arne | GEOMAR Kiel (GEOMAR) | Scientist |
Lauvset, Siv Kari | NORCE Norwegian Research Center AS (NORCE) | Scientist |
Muller-Karger, Frank | University of South Florida (USF) | Scientist |
O'Brien, Kevin M. | National Oceanic and Atmospheric Administration (NOAA-PMEL) | Scientist |
Ólafsdóttir, Sólveig | Marine and Freshwater Research Institute of Iceland (MRI) | Scientist |
Pacheco, Fernando Carvalho | University of Hawaiʻi at Mānoa (SOEST) | Scientist |
Rueda-Roa, Digna | University of South Florida (USF) | Scientist |
Skjelvan, Ingunn | NORCE Norwegian Research Center AS (NORCE) | Scientist |
Wakita, Masahide | Japan Agency for Marine-Earth Science and Technology (JAMSTEC) | Scientist |
White, Angelicque E. | University of Hawaiʻi at Mānoa (SOEST) | Scientist |
Gerlach, Dana Stuart | Woods Hole Oceanographic Institution (WHOI BCO-DMO) | BCO-DMO Data Manager |
This time-series data synthesis pilot product includes data from 12 fixed ship-based time-series programs with a focus on biogeochemical essential ocean variables. Data used in this synthesis product were made possible with funding through the following:
Oceanographic data from twelve fixed ship-based time-series programs were synthesized into a pilot product with focus on biogeochemical essential ocean variables (BGC-EOV). Measurements of dissolved oxygen, dissolved inorganic nutrients, inorganic carbon (pH, TALK, DIC, pCO2), particulate matter, and DOC were compiled from the time series programs listed below.
Methods, Sampling, and Instruments are dependent on individual time-series programs, and often vary within a single time series program from cruise-to-cruise.
Instruments are listed in the section below, with detailed metadata available at ODIS (https://oceaninfohub.org/odis/).
Additional details may be found by viewing the related datasets and publications sections below.
Time-Series Programs
Listed according to ocean/sea location, details include time series program; PIs; start/end dates (of dataset); measurement frequency; location; depth
Pacific
ALOHA: Angelicque White; 1988-2019; monthly; 22.8°N 158.0°W, Subtropical eastern North Pacific (4750m)
K2: Masahide Wakita; 1999-2020; 1-3 cruises yr-1; 47.0°N 160.0°E, Subarctic western North Pacific (6000m)
KNOT: Masahide Wakita; 1997-2020; 1-3 cruises yr-1; 44.0°N 155.0°E, Subarctic western North Pacific (6000m)
Munida: Kim Currie; 1998-2019; 6 cruises yr-1; 45.8°S 171.5°E, Southwest Pacific (1000m)
Atlantic
CVOO: Björn Fiedler; 2006-2019; 1-3 cruises yr-1; 17.6°N 24.3°W, Eastern tropical North Atlantic (3600m)
GIFT: Emma Huertas; 2005-2015; seasonal; 35.9°N 6.0°W / 35.9°N 5.7°W / 36.0°N 5.3°W, Strait of Gibraltar (315– 842m)
RADCOR: Marta Álvarez; 2013 - 2020; monthly; 43.4°N 8.4°E, Eastern Atlantic along NW Galician coast (15-80 m)
Nordic Seas
Irminger Sea time-series: Sólveig Rósa; seasonal; 1983 - 2019; 64.3°N 28.0°W, Irminger Sea (1000m)
Iceland Sea time-series: Sólveig Rósa; seasonal; 1983 - 2019; 68.0°N 12.7°W, Iceland Sea (1850m)
OWSM: Ingunn Skjelvan; 2001 - 2021; 4-12 cruises yr-1; 66.0°N 2.0°E, Norwegian Sea (2100m)
Marginal Seas
CARIACO: Frank Muller-Karger; 1995 - 2017; monthly; 10.5°N 64.7°W, Cariaco Basin of the Caribbean Sea (1300m)
DYFAMED: Laurent Coppola; 1991 - 2017; monthly; 42.3°N 7.5°E, Mediterranean/Ligurian Sea (2400m)
-----------------------------------
Glossary
The data from the 12 participating time-series programs were retrieved from data centers or directly obtained from the responsible principal investigator. In the latter case, merging, formatting, additional quality-control (QC), and archiving of existing data were carried out. Only bottle data for BGC EOVs (Biogeochemical Essential Ocean Variables) that had been measured by at least two of the participating programs were included in the pilot project, along with accompanying ancillary pressure, salinity, and temperature data. The product was created by standardizing data format, units, header names, primary QC flags, times, locations, and fill values and subsequently merging the individual datasets of each time-series program into one file. Only data that received a WOCE quality flag 2 were included in the product. Existing data were altered as little as possible without interpolation or calculation of “missing” variables. Similarly, original station-, cast- and bottle numbers were kept or created artificially if non-existent to ensure consistency. The headers, units, and flags of the individual time-series datasets were standardized to conform with the WOCE exchange bottle data format (Swift and Diggs, 2008).
The standardization process entailed unit conversions, most frequently from micromoles per liter (µmol L-1; nutrients and dissolved organic carbon (DOC)) or from micrograms per kilogram (µg kg-1; particulate matter) to micromoles per kilogram of seawater (µmol kg-1). The default procedure to convert from volumetric to gravimetric units was to use seawater density at in-situ salinity, reported laboratory temperature (otherwise assuming 20°C as laboratory conditions), and pressure of 1 atm (following recommendations from Liqing et al., 2022). For some time-series datasets, the combined concentration of nitrate and nitrite was reported. If explicit nitrite concentrations were provided, these were subtracted to obtain the nitrate values. If not, the combined concentration was renamed to nitrate assuming that the relative nitrite amount is negligible. For the HOT program specifically, low-level, high-sensitivity measurements of macronutrients (phosphate and nitrate) were available but not included in the pilot product. Particulate organic matter was derived by subtracting the particulate inorganic matter from the total particulate matter, if available. For particulate carbon (PC) and particulate nitrogen (PN), the factors 1/12.01 and 1/14.01 (inverse standard atomic masses) were used, respectively, for the unit conversion to micromoles per kilogram. If neither temperature nor pressure was provided, all corresponding data entries were excluded from the product. The potential density anomaly is the only calculated variable. Missing and excluded values were set to -999.
The information on the applied methods of each time-series program, was evaluated against, ideally, published Best Practices (BPs), and otherwise known standard operating procedures (SOPs). “SOP Flags” were assigned accordingly to each cruise of a time-series program (Lange et al., 2023). Precision (duplicate measurements) and accuracy (deviation from reference material) estimates, as provided by each time-series program’s primary quality-assurance procedure, were assigned to the bottle data. The temporal resolution of these estimates varies from estimates given for each cruise, i.e. on a cruise-to-cruise basis, to estimates given for longer time periods (covering multiple cruises) without recorded changes in applied methodology.
When additional quality control was necessary, various methods, packages, and tools were used: CANYON-B is a Bayesian neural network mapping that accurately reproduces GLODAPv2 bottle data and the biogeochemical relations contained therein (Bittig et al., 2018); AtlantOS Ocean Data QC software is an interactive tool for quality control of hydrographic cruise data (Velo et al., 2021); the work of Tanhua et al. (2010) provided rigorous quality control procedures to assure the highest possible quality and consistency. The QC was used to identify outliers and obvious errors, as well as to quantify systematic differences in reported values using crossover analysis (Lauvset & Tanhua, 2015).
Problems, Issues, Notes:
1st QC flags W bottle flags
2 = No problems noted
9 = encompasses WOCE flags 3, 4, 5, 7, 8, and 9 (samples not drawn, questionable or bad data)
"SOP flags" (Standard Operating Procedures)
1 = Methods meet required and desired Standard Operating Procedures
2 = Methods meet required Standard Operating Procedures
3 = Methods do not meet Standard Operating Procedures
- Imported data from source file "spots.csv" into the BCO-DMO data system; kept missing data identifier of -999
- Ensured parameter/field/column names conformed with BCO-DMO naming conventions
- Rounded values to precision indicated by the PI
- Created glossary of metadata terms
- Converted Supplemental 'Product Variables' file to CSV and added NERC term URL links
File |
---|
Synthesis Product for Ocean Time Series (SPOTS) filename: spots.csv (Comma Separated Values (.csv), 52.67 MB) MD5:9588652d4298713f145c84ec7a5d8e67 Primary data file for dataset ID 896862, version 2 |
File |
---|
Synthesis_timeline_granular_metadata.pdf (Portable Document Format (.pdf), 328.77 KB) MD5:85bb9470a2016845b81fcef376cf4a2b Figure of timeline showing the importance of granular level metadata for time series |
Table1_ProductVariables_v2.csv (Comma Separated Values (.csv), 7.64 KB) MD5:9f649b8cc90a33b0198623a83accefa9 Table 1: Synthesis product variables with term matches to ontologies |
Parameter | Description | Units |
TimeSeriesSite | Time-Series Site unique identifier | unitless |
CRUISE | Cruise identifier | unitless |
STNNBR | Station number | unitless |
CASTNO | Cast number | unitless |
BTLNBR | Bottle number | unitless |
DATE | Date in yyyymmdd | unitless |
TIME | Time (UTC) in hhmm | unitless |
LATITUDE | Latitude | decimal degrees |
LONGITUDE | Longitude | decimal degrees |
CTDPRS | Depth of sample in decibar from CTD pressure measurement | decibar (dbar) |
SIGMA0 | Sigma theta potential density anomaly referenced to 0 dbar | kilogram per cubic meter (kg/m3) |
CTDTMP | Temperature of sample (ITS-90) from CTD | degrees Celsius (ITS-90) |
CTDSAL | Sensor Salinity: Salinity (PSS-78) from CTD sensor | Practical Salinity Units (PSU) |
CTDSAL_FLAG_W | Sensor Salinity: WOCE bottle quality flag | unitless |
CTDOXY | Sensor Oxygen: Oxygen from CTD sensor | micromole per kilogram (umol/kg) |
CTDOXY_FLAG_W | Sensor Oxygen: WOCE bottle quality flag | unitless |
SALNTY | Bottle Salinity (PSS-78) | Practical Salinity Units (PSU) |
SALNTY_FLAG_W | Bottle Salinity: WOCE bottle quality flag | unitless |
SALNTY_SOPf | Bottle Salinity: Method flag | unitless |
SALNTY_P | Bottle Salinity: Precision | Practical Salinity Units (PSU) |
SALNTY_A | Bottle Salinity: Accuracy | Practical Salinity Units (PSU) |
OXYGEN | Bottle Oxygen | micromole per kilogram (umol/kg) |
OXYGEN_FLAG_W | Bottle Oxygen: WOCE bottle quality flag | unitless |
OXYGEN_SOPf | Bottle Oxygen: Method flag | unitless |
OXYGEN_P | Bottle Oxygen: Precision | micromole per kilogram (umol/kg) |
OXYGEN_A | Bottle Oxygen: Accuracy | micromole per kilogram (umol/kg) |
NITRAT | Nitrate (or nitrate + nitrite) | micromole per kilogram (umol/kg) |
NITRAT_FLAG_W | Nitrate: WOCE bottle quality flag | unitless |
NITRAT_SOPf | Nitrate: Method flag | unitless |
NITRAT_P | Nitrate: Precision | micromole per kilogram (umol/kg) |
NITRAT_A | Nitrate: Accuracy | micromole per kilogram (umol/kg) |
NITRIT | Nitrite | micromole per kilogram (umol/kg) |
NITRIT_FLAG_W | Nitrite: WOCE bottle quality flag | unitless |
NITRIT_SOPf | Nitrite: Method flag | unitless |
NITRIT_P | Nitrite: Precision | micromole per kilogram (umol/kg) |
NITRIT_A | Nitrite: Accuracy | micromole per kilogram (umol/kg) |
PHSPHT | Phosphate | micromole per kilogram (umol/kg) |
PHSPHT_FLAG_W | Phosphate: WOCE bottle quality flag | unitless |
PHSPHT_SOPf | Phosphate: Method flag | unitless |
PHSPHT_P | Phosphate: Precision | micromole per kilogram (umol/kg) |
PHSPHT_A | Phosphate: Accuracy | micromole per kilogram (umol/kg) |
SILCAT | Silicate | micromole per kilogram (umol/kg) |
SILCAT_FLAG_W | Silicate: WOCE bottle quality flag | unitless |
SILCAT_SOPf | Silicate: Method flag | unitless |
SILCAT_P | Silicate: Precision | micromole per kilogram (umol/kg) |
SILCAT_A | Silicate: Accuracy | micromole per kilogram (umol/kg) |
NH4 | Ammonium | micromole per kilogram (umol/kg) |
NH4_FLAG_W | Ammonium: WOCE bottle quality flag | unitless |
NH4_SOPf | Ammonium: Method flag | unitless |
NH4_P | Ammonium: Precision | micromole per kilogram (umol/kg) |
NH4_A | Ammonium: Accuracy | micromole per kilogram (umol/kg) |
TCARBN | Dissolved Inorganic Carbon | micromole per kilogram (umol/kg) |
TCARBN_FLAG_W | Dissolved Inorganic Carbon: WOCE bottle quality flag | unitless |
TCARBN_SOPf | Dissolved Inorganic Carbon: Method flag | unitless |
TCARBN_P | Dissolved Inorganic Carbon: Precision | micromole per kilogram (umol/kg) |
TCARBN_A | Dissolved Inorganic Carbon: Accuracy | micromole per kilogram (umol/kg) |
ALKALI | Alkalinity | micromole per kilogram (umol/kg) |
ALKALI_FLAG_W | Alkalinity: WOCE bottle quality flag | unitless |
ALKALI_SOPf | Alkalinity: Method flag | unitless |
ALKALI_P | Alkalinity: Precision | micromole per kilogram (umol/kg) |
ALKALI_A | Alkalinity: Accuracy | micromole per kilogram (umol/kg) |
PH_TOT | pH (total scale at 25 degrees Celsius and 0 decibar) | unitless |
PH_TOT_FLAG_W | pH: WOCE bottle quality flag | unitless |
PH_TMP | Temperature of the pH measurements | unitless |
PH_TOT_SOPf | pH: Method flag | unitless |
PH_TOT_P | pH: Precision | unitless |
PH_TOT_A | pH: Accuracy | unitless |
PCO2 | Partial Pressure of CO2 (carbon dioxide) | microatmospheres (uatm) |
PCO2_FLAG_W | Partial Pressure of CO2: WOCE bottle quality flag | unitless |
PCO2_TMP | Partial Pressure of CO2: Temperature | degrees Celsius |
PCO2_SOPf | Partial Pressure of CO2: Method flag | unitless |
PCO2_P | Partial Pressure of CO2: Precision | microatmospheres (uatm) |
PCO2_A | Partial Pressure of CO2: Accuracy | microatmospheres (uatm) |
TPC | Particulate (organic or total) Carbon | micromole per kilogram (umol/kg) |
TPC_FLAG_W | Particulate Carbon: WOCE bottle quality flag | unitless |
TPC_SOPf | Particulate Carbon: Method flag | unitless |
TPC_P | Particulate Carbon: Precision | micromole per kilogram (umol/kg) |
TPC_A | Particulate Carbon: Accuracy | micromole per kilogram (umol/kg) |
TPN | Particulate (organic or total) Nitrogen | micromole per kilogram (umol/kg) |
TPN_FLAG_W | Particulate Nitrogen: WOCE bottle quality flag | unitless |
TPN_SOPf | Particulate Nitrogen: Method flag | unitless |
TPN_P | Particulate Nitrogen: Precision | micromole per kilogram (umol/kg) |
TPN_A | Particulate Nitrogen: Accuracy | micromole per kilogram (umol/kg) |
TPP | Particulate (organic or total) Phosphorus | micromole per kilogram (umol/kg) |
TPP_FLAG_W | Particulate Phosphorus: WOCE bottle quality flag | unitless |
TPP_SOPf | Particulate Phosphorus: Method flag | unitless |
TPP_P | Particulate Phosphorus: Precision | micromole per kilogram (umol/kg) |
TPP_A | Particulate Phosphorus: Accuracy | micromole per kilogram (umol/kg) |
POC | Organic Particulate Carbon | micromole per kilogram (umol/kg) |
POC_FLAG_W | Organic Particulate Carbon: WOCE Bottle Quality Flag | unitless |
POC_SOPf | Organic Particulate Carbon: Method Flag | unitless |
POC_P | Organic Particulate Carbon: Precision | micromole per kilogram (umol/kg) |
POC_A | Organic Particulate Carbon: Accuracy | micromole per kilogram (umol/kg) |
PON | Organic Particulate Nitrogen | micromole per kilogram (umol/kg) |
PON_FLAG_W | Organic Particulate Nitrogen: WOCE bottle quality flag | unitless |
PON_SOPf | Organic Particulate Nitrogen: Method flag | unitless |
PON_P | Organic Particulate Nitrogen: Precision | micromole per kilogram (umol/kg) |
PON_A | Organic Particulate Nitrogen: Accuracy | micromole per kilogram (umol/kg) |
POP | Organic Particulate Phosphorus | micromole per kilogram (umol/kg) |
POP_FLAG_W | Organic Particulate Phosphorus: WOCE bottle quality flag | unitless |
POP_SOPf | Organic Particulate Phosphorus: Method flag | unitless |
POP_P | Organic Particulate Phosphorus: Precision | micromole per kilogram (umol/kg) |
POP_A | Organic Particulate Phosphorus: Accuracy | micromole per kilogram (umol/kg) |
DOC | Dissolved Organic Carbon | micromole per kilogram (umol/kg) |
DOC_FLAG_W | Dissolved Organic Carbon: WOCE bottle quality flag | unitless |
DOC_SOPf | Dissolved Organic Carbon: Method flag | unitless |
DOC_P | Dissolved Organic Carbon: Precision | micromole per kilogram (umol/kg) |
DOC_A | Dissolved Organic Carbon: Accuracy | micromole per kilogram (umol/kg) |
DOI | DOI (digital object identifier) for the source of the data values | unitless |
Dataset-specific Instrument Name | Titration instruments |
Generic Instrument Name | Automatic titrator |
Dataset-specific Description | Metrohm OMNIS Titrator used by HOT & RADCOR for Oxygen measurements
Tritrino Winkler used by DYFAMED for Oxygen measurements
Metrohm Titrando Dual Titrator used by HOT for Oxygen measurements
Dosimat 665 used by HOT for Oxygen measurements
VINDTA (3S) used by CVOO and OWSM for Total Alkalinity measurements
Metrohm 794 used by GIFT for Total Alkalinity measurements |
Generic Instrument Description | Instruments that incrementally add quantified aliquots of a reagent to a sample until the end-point of a chemical reaction is reached. |
Dataset-specific Instrument Name | Sea Bird Temperature Sensors |
Generic Instrument Name | CTD Sea-Bird |
Dataset-specific Description | Seabird SBE 3P used by HOT & CVOO
Seabird SBE 19P used by Munida
Seabird SBE 25 used by Munida
Seabird SBE 3 used by CARIACO
Seabird 911+ used by K2 & KNOT
Seabird 35 used by RADCOR
Seabird 38 used by Munida
Seabird 45 used by Munida
Seabird 21 used by Munida
Seabird 19 used by Munida |
Generic Instrument Description | Conductivity, Temperature, Depth (CTD) sensor package from SeaBird Electronics, no specific unit identified. This instrument designation is used when specific make and model are not known. See also other SeaBird instruments listed under CTD. More information from Sea-Bird Electronics. |
Dataset-specific Instrument Name | Elemental analyzer |
Generic Instrument Name | Elemental Analyzer |
Dataset-specific Description | Orion EA 940 Analyzer used by HOT & DYFAMED for Total Alkalinity measurements
Perkin Elmer 2400 Elemental Analyzer used by CARIACO for PIC and PON measurements
Exeter Analytical CE-440 CHN used by HOT for POC and PON measurements |
Generic Instrument Description | Instruments that quantify carbon, nitrogen and sometimes other elements by combusting the sample at very high temperature and assaying the resulting gaseous oxides. Usually used for samples including organic material. |
Dataset-specific Instrument Name | DIC instrument |
Generic Instrument Name | Inorganic Carbon Analyzer |
Dataset-specific Description | Marianda Company VINDTA 3D system used by RADCOR and OWSM
UIC, Inc. inorganic carbon analyzer used by K2 and KNOT
SOMMA system coupled to coulometer used by HOT and CVOO
Coulometrics CM-5010 used by Irminger & Iceland Seas TS
Coulometrics Model CM-5011 used by Irminger & Iceland Seas TS
SOMMA system at NIWA (New Zealand) used by Munida |
Generic Instrument Description | Instruments measuring carbonate in sediments and inorganic carbon (including DIC) in the water column. |
Dataset-specific Instrument Name | Niskin bottle |
Generic Instrument Name | Niskin bottle |
Generic Instrument Description | A Niskin bottle (a next generation water sampler based on the Nansen bottle) is a cylindrical, non-metallic water collection device with stoppers at both ends. The bottles can be attached individually on a hydrowire or deployed in 12, 24, or 36 bottle Rosette systems mounted on a frame and combined with a CTD. Niskin bottles are used to collect discrete water samples for a range of measurements including pigments, nutrients, plankton, etc. |
Dataset-specific Instrument Name | Nutrient Analyzers |
Generic Instrument Name | Nutrient Autoanalyzer |
Dataset-specific Description | Technicon Autoanalyzer II used by CARIACO, HOT, Irminger Sea TS, and Iceland Sea TS
Luebbe Autoanalyzer III used by HOT and RADCOR
SEAL Analytical QuAAtro Autoanalyser used by CVOO, K2, KNOT, and RADCOR
Seal Analytical AutoAnalyser 3HR used by DYFAMED
Seal Analytical AutoAnalyser AA used by HOT
Continuous Flow analyser (not further specified) used by CVOO
Skalar San Plus System used by CVOO and OWSM
BL TEC K.K.used by K2, KNOT
Alpkem RFA 300 used by HOT and OWSM
Chemlab three channel autoanalyzer used by Irminger Sea and Iceland Sea TS.
SkalarSan ++215 used by GIFT
Manual analysis performed by CARIACO |
Generic Instrument Description | Nutrient Autoanalyzer is a generic term used when specific type, make and model were not specified. In general, a Nutrient Autoanalyzer is an automated flow-thru system for doing nutrient analysis (nitrate, ammonium, orthophosphate, and silicate) on seawater samples. |
Dataset-specific Instrument Name | Dissolved Oxygen Sensor |
Generic Instrument Name | Oxygen Sensor |
Dataset-specific Description | Seabird SBE43 used for CVOO & DYFAMED
Seabird SBE 13 used for HOT
RINKOIII used for DYFAMED |
Generic Instrument Description | An electronic device that measures the proportion of oxygen (O2) in the gas or liquid being analyzed |
Dataset-specific Instrument Name | Salinity Sensor |
Generic Instrument Name | Salinity Sensor |
Dataset-specific Description | Seabird SBE 4 used by HOT, CARIACO, CVOO & DYFAMED
Seabird SBE 21 used by Munida
Seabird SBE 35 used by RADCOR
Seabird SBE 19P used by Munida
Seabird SBE 16 used by Munida
Seabird SBE 2 used by CVOO |
Generic Instrument Description | Category of instrument that simultaneously measures electrical conductivity and temperature in the water column to provide temperature and salinity data. |
Dataset-specific Instrument Name | Salinometer |
Generic Instrument Name | Salinometer |
Dataset-specific Description | AGE model 2100 Minisal salinometer used by HOT
Guildline Portasal 8410 salinometer used by CARIACO
Guildline 8400 bench salinometer used by HOT, CVOO, K2, KNOT, Irminger & Iceland Sea TS.
OPTIMARE Precision salinometer OPS-20 used by CVOO
PorterSal salinomters used by OWSM |
Generic Instrument Description | A salinometer is a device designed to measure the salinity, or dissolved salt content, of a solution. |
Dataset-specific Instrument Name | Spectrophotometer |
Generic Instrument Name | Spectrophotometer |
Dataset-specific Description | seapHox Ocean pH sensor (Satlantic/Sea-Bird Scientific) used by DYFAMED
Ocean Optics S1000 used by CARIACO
Spectrophotometer (not further specified) used by HOT, DYFAMED, RADCOR
Combination electrode (not further specified) used by HOT
Shimadzu UV-2401PC used by GIFT |
Generic Instrument Description | An instrument used to measure the relative absorption of electromagnetic radiation of different wavelengths in the near infra-red, visible and ultraviolet wavebands by samples. |
Dataset-specific Instrument Name | Total Organic Carbon Analyzer |
Generic Instrument Name | Total Organic Carbon Analyzer |
Dataset-specific Description | Shimadzu TOC-V used by HOT for DOC measurements
Shimadzu TOC-L used by CARIACO for DOC measurements |
Generic Instrument Description | A unit that accurately determines the carbon concentrations of organic compounds typically by detecting and measuring its combustion product (CO2). See description document at: http://bcodata.whoi.edu/LaurentianGreatLakes_Chemistry/bs116.pdf |
NSF Award Abstract:
This project will support coordination efforts that bring together participants in large- and small group formats to foster the necessary dialog to develop Findable, Accessible, Interoperable, and Reusable (FAIR) data solutions and practices. The project will include a Consensus Building Workshop and METS Data Working Group to develop reference implementations of a data model for adoption by the METS community; formation of regional METS user networks and a Broadening Users Workshop to identify the needs of a broader range of data end users and associated data interfaces and tools to meet those needs; and a Data Hackathon to build capacity to ingest, analyze, and integrate METS data with other disciplinary and cross-disciplinary data to accelerate scientific discovery.
This project will develop community consensus for a FAIR METS data model. The METS RCN will leverage the wealth of oceanographic coordination and community building experience and staff capacity of the Ocean Carbon and Biogeochemistry (OCB) Project Office and the infrastructure, expertise, and extensive METS data handling experience of the Biological and Chemical Oceanography Data Management Office (BCO-DMO), along with an RCN Steering Committee that comprises expertise in the fields of oceanography, data science, earth system models, statistics, and data synthesis.
This award reflects NSF's statutory mission and has been deemed worthy of support through evaluation using the Foundation's intellectual merit and broader impacts review criteria.
Project description
An integrated observation system for sustainable ocean management
Our oceans are a vital source of wealth, but ocean monitoring systems are inadequate and lower management capacity. Scientists agree that oceans need an observation system coordinated at an international level. The EU-funded EuroSea project aims to coordinate a wide range of European actors towards integrating national systems for an international observation system. The project will advance a system that will collect ocean information data important for blue growth and sustainable ocean management. It will advance technology readiness levels (TRLs) of crucial components required for ocean observation systems and improve international coordination of ocean monitoring to ensure ocean health and optimal resource utilisation.
Objective
Although the Ocean is a fundamental part of the global system providing a wealth of resources, there are fundamental gaps in ocean observing and forecasting systems, limiting the capacity in Europe to sustainably manage the ocean and its resources. Ocean observing is “big science” and cannot be solved by individual nations; it is necessary to ensure high-level integration for coordinated observations of the ocean that can be sustained in the long term. EuroSea brings together key European actors of ocean observation and forecasting with key end users of ocean observations, responding to the Future of the Seas and Oceans Flagship Initiative. Our vision is a truly interdisciplinary ocean observing system that delivers the essential ocean information needed for the wellbeing, blue growth and sustainable management of the ocean. EuroSea will strengthen the European and Global Ocean Observing System (EOOS and GOOS) and support its partners. EuroSea will increase the technology readiness levels (TRL) of critical components of ocean observations systems and tools, and in particular the TRL of the integrated ocean observing system. EuroSea will improve: European and international coordination; design of the observing system adapted to European needs; in situ observing networks; data delivery; integration of remote and in-situ data; and forecasting capability. EuroSea will work towards integrating individual observing elements to an integrated observing system, and will connect end-users with the operators of the observing system and information providers. EuroSea will demonstrate the utility of the European Ocean Observing System through three demonstration activities focused on operational services, ocean health and climate, where a dialogue between actors in the ocean observing system will guide the development of the services, including market replication and innovation supporting the development of the blue economy.
Project DOI: 10.3030/862626
Funding Source | Award |
---|---|
National Science Foundation (NSF) | |
European Commission Horizon 2020 Framework Programme (H2020 - 2014-2020) |