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Dataset

 

HadISDH blend: gridded global monthly land and ocean surface humidity data version 1.1.1.2020f

Update Frequency: Not Planned
Latest Data Update: 2021-04-26
Status: Superseded
Online Status: ONLINE
Publication State: Published
Publication Date: 2021-04-28
Download Stats: last 12 months
Dataset Size: 9 Files | 155MB

This dataset has been superseded. See Latest Version here
Abstract

This is the HadISDH blend 1.1.1.2020f version of the Met Office Hadley Centre Integrated Surface Dataset of Humidity (HadISDH). HadISDH-blend is a near-global gridded monthly mean surface humidity climate monitoring product. It is created from in situ observations of air temperature and dew point temperature from ships and weather stations. The observations have been quality controlled and homogenised / bias adjusted. Uncertainty estimates for observation issues and gridbox sampling are provided (see data quality statement section below). These data are provided by the Met Office Hadley Centre. This version spans 1/1/1973 to 31/12/2020.

The data are monthly gridded (5 degree by 5 degree) fields. Products are available for temperature and six humidity variables: specific humidity (q), relative humidity (RH), dew point temperature (Td), wet bulb temperature (Tw), vapour pressure (e), dew point depression (DPD).

This version extends the 1.0.0.2019f version to the end of 2020. It combines HadISDH.land.4.3.1.2020f and HadISDH.marine.1.1.0.2020f and therefore their respective update notes. Users are advised to read the update documents in the Docs section for full details.

To keep informed about updates, news and announcements follow the HadOBS team on twitter @metofficeHadOBS.

For more detailed information e.g bug fixes, routine updates and other exploratory analysis, see the HadISDH blog: http://hadisdh.blogspot.co.uk/

References:

When using the dataset in a paper please cite the following papers (see Docs for link
to the publications) and this dataset (using the "citable as" reference):

Willett, K. M., Dunn, R. J. H., Kennedy, J. J. and Berry, D. I., 2020: Development of
the HadISDH marine humidity climate monitoring dataset. Earth System Sciences Data,
12, 2853-2880, https://doi.org/10.5194/essd-12-2853-2020

Freeman, E., Woodruff, S. D., Worley, S. J., Lubker, S. J., Kent, E. C., Angel, W. E.,
Berry, D. I., Brohan, P., Eastman, R., Gates, L., Gloeden, W., Ji, Z., Lawrimore, J.,
Rayner, N. A., Rosenhagen, G. and Smith, S. R., ICOADS Release 3.0: A major update to
the historical marine climate record. International Journal of Climatology.
doi:10.1002/joc.4775.

Willett, K. M., Dunn, R. J. H., Thorne, P. W., Bell, S., de Podesta, M., Parker, D. E.,
Jones, P. D., and Williams Jr., C. N.: HadISDH land surface multi-variable humidity and
temperature record for climate monitoring, Clim. Past, 10, 1983-2006,
doi:10.5194/cp-10-1983-2014, 2014.

Dunn, R. J. H., et al. 2016: Expanding HadISD: quality-controlled, sub-daily station
data from 1931, Geoscientific Instrumentation, Methods and Data Systems, 5, 473-491.

Smith, A., N. Lott, and R. Vose, 2011: The Integrated Surface Database: Recent
Developments and Partnerships. Bulletin of the American Meteorological Society, 92,
704-708, doi:10.1175/2011BAMS3015.1

We strongly recommend that you read these papers before making use of the data, more
detail on the dataset can be found in an earlier publication:

Willett, K. M., Williams Jr., C. N., Dunn, R. J. H., Thorne, P. W., Bell, S., de
Podesta, M., Jones, P. D., and Parker D. E., 2013: HadISDH: An updated land surface
specific humidity product for climate monitoring. Climate of the Past, 9, 657-677,
doi:10.5194/cp-9-657-2013.

Citable as:  Willett, K.M.; Dunn, R.J.H.; Kennedy, J.J.; Berry, D.I.; Thorne, P.W.; Bell, S.; de Podesta, M.; Parker, D.E.; Jones, P.D.; Williams Jr., C.N. (2021): HadISDH blend: gridded global monthly land and ocean surface humidity data version 1.1.1.2020f. Centre for Environmental Data Analysis, date of citation. https://catalogue.ceda.ac.uk/uuid/8e90b16ddd2a484897ab9737c46d6204/
Abbreviation: Not defined
Keywords: HadISDH, blend, humidity, surface, marine, gridded, station, specific humidity, temperature, dew point temperature, wet bulb temperature, dew point temperature, vapour pressure, in-situ

Details

Previous Info:
No news update for this record
Previously used record identifiers:
No related previous identifiers.
Access rules:
Public data: access to these data is available to both registered and non-registered users.
Use of these data is covered by the following licence(s):
http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/
When using these data you must cite them correctly using the citation given on the CEDA Data Catalogue record.
Data lineage:

HadISDH.blend is a global land (~2 m) and ocean (~10 m) surface humidity dataset and is produced by the Met Office Hadley Centre in collaboration with CRU, Maynooth University, NPL, NOAA-NCEI and NOC. It is based on the sub-daily station observations from HadISD (originally from ISD) and ship observations from ICOADS. It is passed to the Centre for Environmental Data Analysis (CEDA) for archiving and distribution. Gridboxes containing both land and marine data are combined using a weighted average with a minimum and maximum weighting of 25% and 75% respectively.

Data Quality:
Uncertainty estimates are provided as part of the dataset both at the station and gridbox level, this includes information covering station uncertainty (climatological, homogenisation and measurement uncertainty), gridbox spatial and temporal sampling uncertainty and combined station and sampling uncertainty. See dataset associated documentation for full details.
File Format:
The data are NetCDF formatted.

Process overview

This dataset was generated by the computation detailed below.
Title

HadISDH.blend: gridded global land (~2 m) and ocean (~10 m) surface humidity dataset produced by the Met Office Hadley Centre

Abstract

HadISDH.blend combines HadISDH.marine and HadISDH.land at the 5 degree by 5 degree gridbox monthly mean level. Gridboxes containing both land and marine data are combined using a weighted average with a minimum and maximum weighting of 25% and 75% respectively. HadISDH.marine utilises simultaneous sub-daily temperature and dew point temperature data from ICOADS ship data. All humidity variables are calculated at hourly resolution.

Quality control, buddy checking and bias adjustment is applied at hourly resolution to adjust all observations to an observing height of 10 m, accounting for changing ship heights over time, and to adjust all non-ventilated instruments to mitigate the moist bias. Gridded monthly means, monthly mean anomalies and 1981 to 2010 climatologies are created.

See Docs 'HadISDH.marine process diagram'. Observation measurement, climatological, whole number presence and bias adjustment uncertainties are estimated for each observation and then gridded. 5° by 5° gridboxes are centred on -177.5°W and -87.5°S to 177.5°E and 87.5°N. Given the uneven distribution of observations over time and space, sampling uncertainty is estimated for each gridbox month.

For greater detail please see: Willett, K. M., Dunn, R. J. H., Kennedy, J. J. and Berry, D. I.: Development of the HadISDH marine humidity climate monitoring dataset. Earth System Sciences Data, in review, doi:XX.XXXX/essd-XX-XXXX-2020, 2020.

Docs contains links to this publication.

HadISDH.land utilises simultaneous subdaily temperature and dew point temperature data from over 3000 quality controlled HadISD stations that have sufficiently long records. All humidity variables are calculated at hourly resolution and monthly means are created. Monthly means are homogenised to detect and adjust for features within the data that do not appear to be of climate origin. While unlikely to be perfect, this process does help remove large errors from the data an improve robustness of long-term climate monitoring. The NCEI's Pairwise Homogenisation Algorithm has been used directly on DPD and T. An indirect PHA method (ID PHA) is used whereby changepoints detected in DPD and T are used to make adjustments to q, e, Tw and RH. Changepoints from DPD are also applied to T. Td is derived from homogenised T and DPD.

See Docs 'HadISDH.land process diagram'. Station measurement, climatological and homogeneity adjustment uncertainties are estimated for each month. Climatological averages are calculated over 1981-2010 and monthly mean climate anomalies obtained. These anomalies (in addition to climatological mean and standard deviation, actual values and uncertainty components) are then averaged over 5° by 5° gridboxes centred on -177.5°W and -87.5°S to 177.5°E and 87.5°N. Given the uneven distribution of stations over time and space, sampling uncertainty is estimated for each gridbox month.

For greater detail please see: Willett, K. M., Dunn, R. J. H., Thorne, P. W., Bell, S., de Podesta, M., Parker, D. E., Jones, P. D., and Williams Jr., C. N.: HadISDH land surface multi-variable humidity and temperature record for climate monitoring, Clim. Past, 10, 1983-2006, doi:10.5194/cp-10-1983-2014, 2014.

Willett, K. M., Williams Jr., C. N., Dunn, R. J. H., Thorne, P. W., Bell, S., de Podesta, M., Jones, P. D., and Parker D. E., 2013: HadISDH: An updated land surface specific humidity product for climate monitoring. Climate of the Past, 9, 657-677, doi:10.5194/cp-9-657-2013.

Docs contains links to both these publications.

Input Description

None

Output Description

None

Software Reference

None

  • units: 1
  • long_name: actual number of observations within gridbox
  • var_id: land_stncount
  • long_name: climatology period boundaries
  • var_id: climbounds
  • units: 1
  • long_name: mean number of observations within gridbox
  • var_id: land_meanstncount
  • units: 1
  • long_name: mean number of pseudo stations within gridbox
  • var_id: marine_meanpseudostncount
  • var_id: month
  • long_name: month of year
  • standard_name: air_temperature
  • units: deg C
  • var_id: tas
  • long_name: near surface (~2/10m) air temperature
  • units: deg C
  • var_id: tasa
  • long_name: near surface (~2/10m) air temperature anomaly
  • units: deg C
  • long_name: near surface (~2/10m) air temperature climatological standard deviations
  • var_id: marine_clmstd
  • units: deg C
  • var_id: clm
  • long_name: near surface (~2/10m) air temperature climatology
  • units: deg C
  • standard_name: dew_point_depression
  • var_id: dpds
  • long_name: near surface (~2/10m) dewpoint depression
  • units: deg C
  • var_id: dpdsa
  • long_name: near surface (~2/10m) dewpoint depression anomaly
  • units: deg C
  • var_id: marine_clmstd
  • long_name: near surface (~2/10m) dewpoint depression climatological standard deviations
  • units: deg C
  • var_id: clm
  • long_name: near surface (~2/10m) dewpoint depression climatology
  • units: deg C
  • standard_name: dew_point_temperature
  • var_id: tds
  • long_name: near surface (~2/10m) dewpoint temperature
  • units: deg C
  • var_id: tdsa
  • long_name: near surface (~2/10m) dewpoint temperature anomaly
  • units: deg C
  • var_id: marine_clmstd
  • long_name: near surface (~2/10m) dewpoint temperature climatological standard deviations
  • units: deg C
  • var_id: clm
  • long_name: near surface (~2/10m) dewpoint temperature climatology
  • units: g/kg
  • standard_name: specific_humidity
  • var_id: huss
  • long_name: near surface (~2/10m) specific humidity
  • units: g/kg
  • var_id: hussa
  • long_name: near surface (~2/10m) specific humidity anomaly
  • units: g/kg
  • var_id: marine_clmstd
  • long_name: near surface (~2/10m) specific humidity climatological standard deviations
  • units: g/kg
  • var_id: clm
  • long_name: near surface (~2/10m) specific humidity climatology
  • units: hPa
  • standard_name: water_vapor_partial_pressure_in_air
  • var_id: vps
  • long_name: near surface (~2/10m) vapor pressure
  • units: hPa
  • var_id: vpsa
  • long_name: near surface (~2/10m) vapor pressure anomaly
  • units: hPa
  • var_id: marine_clmstd
  • long_name: near surface (~2/10m) vapor pressure climatological standard deviations
  • units: hPa
  • var_id: clm
  • long_name: near surface (~2/10m) vapor pressure climatology
  • units: deg C
  • standard_name: wet_bulb_temperature
  • var_id: tws
  • long_name: near surface (~2/10m) wetbulb temperature
  • units: deg C
  • var_id: twsa
  • long_name: near surface (~2/10m) wetbulb temperature anomaly
  • units: deg C
  • var_id: marine_clmstd
  • long_name: near surface (~2/10m) wetbulb temperature climatological standard deviations
  • units: deg C
  • var_id: clm
  • long_name: near surface (~2/10m) wetbulb temperature climatology
  • units: deg C
  • long_name: near surface (~2m) air temperature standard deviation
  • var_id: land_std
  • units: deg C
  • long_name: near surface (~2m) dewpoint depression standard deviation
  • var_id: land_std
  • units: deg C
  • long_name: near surface (~2m) dewpoint temperature standard deviation
  • var_id: land_std
  • units: g/kg
  • long_name: near surface (~2m) specific humidity standard deviation
  • var_id: land_std
  • units: hPa
  • long_name: near surface (~2m) vapor pressure standard deviation
  • var_id: land_std
  • units: deg C
  • long_name: near surface (~2m) wetbulb temperature standard deviation
  • var_id: land_std
  • units: 1
  • long_name: number of 1by1 daily grids within gridbox
  • var_id: marine_gridcount
  • units: 1
  • long_name: number of 1by1 daily grids within gridbox climatological standard deviations
  • var_id: marine_clmstdgridcount
  • units: 1
  • long_name: number of 1by1 daily grids within gridbox climatology
  • var_id: marine_clmgridcount
  • units: 1
  • long_name: number of observations within gridbox
  • var_id: marine_obscount
  • units: 1
  • long_name: number of observations within gridbox climatological standard deviations
  • var_id: marine_clmstdobscount
  • units: 1
  • long_name: number of observations within gridbox climatology
  • var_id: marine_clmobscount
  • units: 1
  • long_name: number of pseudo stations within gridbox
  • var_id: marine_pseudostncount
  • units: hPa
  • long_name: uncorrelated 2 sigma combined observation uncertainty for actual values
  • var_id: abs_obsunc
  • units: hPa
  • long_name: uncorrelated 2 sigma combined observations uncertainty for anomaly values
  • var_id: anoms_obsunc
  • units: hPa
  • long_name: uncorrelated 2 sigma sampling uncertainty for gridbox actual values
  • var_id: abs_sampunc
  • units: hPa
  • long_name: uncorrelated 2 sigma sampling uncertainty for gridbox anomaly values
  • var_id: anoms_sampunc
  • units: hPa
  • long_name: uncorrelated combined 2 sigma uncertainty for gridbox actual values
  • var_id: abs_stdunc
  • units: hPa
  • long_name: uncorrelated combined 2 sigma uncertainty for gridbox anomalu values
  • var_id: anoms_stdunc

Co-ordinate Variables

  • units: degrees_north
  • standard_name: latitude
  • var_id: latitude
  • long_name: gridbox centre latitude
  • units: degrees_east
  • standard_name: longitude
  • var_id: longitude
  • long_name: gridbox centre longitude
  • standard_name: latitude
  • var_id: bounds_lat
  • long_name: latitude gridbox boundaries
  • standard_name: longitude
  • var_id: bounds_lon
  • long_name: longitude gridbox boundaries
  • long_name: time
  • standard_name: time
  • var_id: time
  • units: days
  • standard_name: time
  • long_name: time period boundaries
  • var_id: bounds_time
Coverage
Temporal Range
Start time:
1973-01-01T00:00:00
End time:
2020-12-31T23:59:59
Geographic Extent

 
90.0000°
 
-180.0000°
 
180.0000°
 
-90.0000°