The GSOD or Global Surface Summary of the Day (GSOD) data provided by the US National Centers for Environmental Information (NCEI) are a valuable source of weather data with global coverage. However, the data files are cumbersome and difficult to work with. GSODR aims to make it easy to find, transfer and format the data you need for use in analysis and provides four main functions for facilitating this:
get_GSOD()
- the main function that will query and transfer files from the FTP server, reformat them and return a data.frame in R or save a file to diskreformat_GSOD()
- the workhorse, this function takes individual station files on the local disk and reformats them returning a data.frame in Rnearest_stations()
- this function returns a data frame containing a list of stations and their metadata that fall within the given radius of a point specified by the userget_station_list()
- this function retrieves the most up-to-date list of stations and corresponding metadataWhen reformatting data either with get_GSOD()
or reformat_GSOD()
, all units are converted to International System of Units (SI), e.g., inches to millimetres and Fahrenheit to Celsius. File output can be saved as a Comma Separated Value (CSV) file or in a spatial GeoPackage (GPKG) file, implemented by most major GIS software, summarising each year by station, which also includes vapour pressure and relative humidity elements calculated from existing data in GSOD.
For more information see the description of the data provided by NCEI, http://www7.ncdc.noaa.gov/CDO/GSOD_DESC.txt.
The GSOD data are comprised of a global set of data from weather stations. To visualise where these stations are located we can fetch the station metadata and plot it in a map. The resulting map shows only stations with valid geo-locations after filtering.
library(GSODR)
GSOD_stations <- get_station_list()
Using ggplot2 and the ggalt package it is possible to plot the station locations using alpha transparency to see the densest part of the network and use the Robinson projection for the map.
“{r library(ggplot2) library(ggalt)
ggplot(GSOD_stations, aes(x = LON, y = LAT)) + geom_point(alpha = 0.1) + coord_proj(”+proj=robin +lon_0=0 +x_0=0 +y_0=0 +ellps=WGS84 +datum=WGS84 +units=m +no_defs") + theme_bw()

## Find Stations in Australia
_GSODR_ provides lists of weather station locations and elevation values. Using [_dplyr_](https://CRAN.R-project.org/package=dplyr), we can find all the stations in Australia.
```r
library(dplyr)
station_locations <- left_join(GSOD_stations, GSODR::country_list,
by = c("CTRY" = "FIPS"))
# create data.frame for Australia only
Oz <- filter(station_locations, COUNTRY_NAME == "AUSTRALIA")
head(Oz)
#> USAF WBAN STN_NAME CTRY STATE CALL LAT LON
#> 1 695023 99999 HORN ISLAND (HID) AS <NA> KQXC -10.583 142.300
#> 2 749430 99999 AIDELAIDE RIVER SE AS <NA> <NA> -13.300 131.133
#> 3 749432 99999 BATCHELOR FIELD AUSTRALIA AS <NA> <NA> -13.049 131.066
#> 4 749438 99999 IRON RANGE AUSTRALIA AS <NA> <NA> -12.700 143.300
#> 5 749439 99999 MAREEBA AS/HOEVETT FIELD AS <NA> <NA> -17.050 145.400
#> 6 749440 99999 REID EAST AS <NA> <NA> -19.767 146.850
#> ELEV_M BEGIN END STNID ELEV_M_SRTM_90m COUNTRY_NAME iso2c
#> 1 NA 19420804 20030816 695023-99999 24 AUSTRALIA AU
#> 2 131 19430228 19440821 749430-99999 96 AUSTRALIA AU
#> 3 107 19421231 19430610 749432-99999 83 AUSTRALIA AU
#> 4 18 19420917 19440930 749438-99999 63 AUSTRALIA AU
#> 5 443 19420630 19440630 749439-99999 449 AUSTRALIA AU
#> 6 122 19421012 19430405 749440-99999 75 AUSTRALIA AU
#> iso3c
#> 1 AUS
#> 2 AUS
#> 3 AUS
#> 4 AUS
#> 5 AUS
#> 6 AUS
filter(Oz, STN_NAME == "TOOWOOMBA")
#> USAF WBAN STN_NAME CTRY STATE CALL LAT LON ELEV_M BEGIN
#> 1 945510 99999 TOOWOOMBA AS <NA> <NA> -27.583 151.933 676 19561231
#> END STNID ELEV_M_SRTM_90m COUNTRY_NAME iso2c iso3c
#> 1 20120503 945510-99999 670 AUSTRALIA AU AUS
Now that we've seen where the reporting stations are located, we can download weather data from the station Toowoomba, Queensland, Australia for 2010 by using the STNID in the station
parameter of get_GSOD()
.
Tbar <- get_GSOD(years = 2010, station = "955510-99999")
#> Downloading the station file(s) now.
#> Finished downloading file. Parsing the station file(s) now.
head(Tbar)
#> USAF WBAN STNID STN_NAME CTRY STATE CALL LAT LON
#>1 955510 99999 955510-99999 TOOWOOMBA AIRPORT AS <NA> <NA> -27.55 151.917
#>2 955510 99999 955510-99999 TOOWOOMBA AIRPORT AS <NA> <NA> -27.55 151.917
#>3 955510 99999 955510-99999 TOOWOOMBA AIRPORT AS <NA> <NA> -27.55 151.917
#>4 955510 99999 955510-99999 TOOWOOMBA AIRPORT AS <NA> <NA> -27.55 151.917
#>5 955510 99999 955510-99999 TOOWOOMBA AIRPORT AS <NA> <NA> -27.55 151.917
#>6 955510 99999 955510-99999 TOOWOOMBA AIRPORT AS <NA> <NA> -27.55 151.917
#> ELEV_M ELEV_M_SRTM_90m BEGIN END YEARMODA YEAR MONTH DAY YDAY TEMP
#>1 642 635 19980301 20161020 20100101 2010 01 01 1 21.2
#>2 642 635 19980301 20161020 20100102 2010 01 02 2 23.2
#>3 642 635 19980301 20161020 20100103 2010 01 03 3 21.4
#>4 642 635 19980301 20161020 20100104 2010 01 04 4 18.9
#>5 642 635 19980301 20161020 20100105 2010 01 05 5 20.5
#>6 642 635 19980301 20161020 20100106 2010 01 06 6 21.9
#> TEMP_CNT DEWP DEWP_CNT SLP SLP_CNT STP STP_CNT VISIB VISIB_CNT WDSP
#>1 8 17.9 8 1013.4 8 942.0 8 NA 0 2.2
#>2 8 19.4 8 1010.5 8 939.3 8 NA 0 1.9
#>3 8 18.9 8 1012.3 8 940.9 8 14.3 6 3.9
#>4 8 16.4 8 1015.7 8 944.1 8 23.3 4 4.5
#>5 8 16.4 8 1015.5 8 944.0 8 NA 0 3.9
#>6 8 18.7 8 1013.7 8 942.3 8 NA 0 3.2
#> WDSP_CNT MXSPD GUST MAX MAX_FLAG MIN MIN_FLAG PRCP PRCP_FLAG SNDP I_FOG
#>1 8 6.7 NA 25.78 17.78 1.5 G NA 0
#>2 8 5.1 NA 26.50 19.11 0.3 G NA 0
#>3 8 10.3 NA 28.72 19.28 * 19.8 G NA 1
#>4 8 10.3 NA 24.11 16.89 * 1.0 G NA 0
#>5 8 10.8 NA 24.61 16.72 0.3 G NA 0
#>6 8 7.7 NA 26.78 17.50 0.0 G NA 1
#> I_RAIN_DRIZZLE I_SNOW_ICE I_HAIL I_THUNDER I_TORNADO_FUNNEL EA ES RH
#>1 0 0 0 0 0 2.1 2.5 84.0
#>2 0 0 0 0 0 2.3 2.8 82.1
#>3 1 0 0 0 0 2.2 2.5 88.0
#>4 0 0 0 0 0 1.9 2.2 86.4
#>5 0 0 0 0 0 1.9 2.4 79.2
#>6 0 0 0 0 0 2.2 2.6 84.6
Using the nearest_stations()
function, you can find stations closest to a given point specified by latitude and longitude in decimal degrees. This can be used to generate a vector to pass along to get_GSOD()
and download the stations of interest.
There are missing stations in this query. Not all that are listed and queried actually have files on the server.
tbar_stations <- nearest_stations(LAT = -27.5598, LON = 151.9507, distance = 50)
tbar_stations <- tbar_stations$STNID
get_GSOD(years = 2010, station = tbar_stations, dsn = "~/",
filename = "Toowoomba_50km_2010")
If you wished to drop the stations, 949999-00170 and 949999-00183 from the query, you could do this.
remove <- c("949999-00170", "949999-00183")
tbar_stations <- tbar_stations[!tbar_stations %in% remove]
get_GSOD(years = 2010, station = tbar_stations, dsn = "~/",
filename = "Toowoomba_50km")
Using the first data downloaded for a single station, 955510-99999, plot the temperature for 2010 using read_csv()
from Hadley's readr
package.
library(lubridate)
library(readr)
library(tidyr)
# Import the data for Toowoomba previously downloaded and cleaned
tbar <- read_csv("~/Toowoomba_Airport-2010.csv")
#> Parsed with column specification:
#> cols(
#> .default = col_double(),
#> USAF = col_integer(),
#> WBAN = col_integer(),
#> STNID = col_character(),
#> STN_NAME = col_character(),
#> CTRY = col_character(),
#> STATE = col_character(),
#> CALL = col_character(),
#> YEARMODA = col_integer(),
#> YEAR = col_integer(),
#> MONTH = col_character(),
#> DAY = col_character(),
#> TEMP_CNT = col_integer(),
#> DEWP_CNT = col_integer(),
#> SLP_CNT = col_integer(),
#> STP_CNT = col_integer(),
#> VISIB_CNT = col_integer(),
#> WDSP_CNT = col_integer(),
#> MAX_FLAG = col_character(),
#> MIN_FLAG = col_character(),
#> PRCP_FLAG = col_character()
#> # ... with 6 more columns
#> )
#> See spec(...) for full column specifications.
# Create a dataframe of just the date and temperature values that we want to
# plot
tbar_temps <- tbar[, c(14, 19, 33, 35)]
# Gather the data from wide to long
tbar_temps <- gather(tbar_temps, Measurement, gather_cols = TEMP:MIN)
ggplot(data = tbar_temps, aes(x = ymd(YEARMODA), y = value,
colour = Measurement)) +
geom_line() +
scale_color_brewer(type = "qual", na.value = "black") +
scale_y_continuous(name = "Temperature") +
scale_x_date(name = "Date") +
theme_bw()
Because the stations provide geospatial location information, it is possible to create a spatial file. GeoPackage files are a open, standards-based, platform-independent, portable, self-describing compact
format for transferring geospatial information, which handle vector files much like shapefiles do, but eliminate many of the issues that shapefiles have with field names and the number of files. The get_GSOD()
function can create a GeoPackage file, which can be used with a GIS for further analysis and mapping with other spatial objects.
After getting weather stations for Australia and creating a GeoPackage file, rgdal can import the data into R and raster provides a function, getData()
, to download an outline of Australia useful for plotting the station locations in this country.
get_GSOD(years = 2015, country = "Australia", dsn = "~/", filename = "AUS",
CSV = FALSE, GPKG = TRUE)
#> trying URL 'ftp://ftp.ncdc.noaa.gov/pub/data/gsod/2015/gsod_2015.tar'
#> Content type 'unknown' length 106352640 bytes (101.4 MB)
#> ==================================================
#> downloaded 101.4 MB
#> Finished downloading file.
#> Parsing the indivdual station files now.
#> Finished parsing files. Writing files to disk now.
Importing the GeoPackage file can be a bit tricky. The dsn will be the full path along with the file name. The layer to be specified is “GSOD”, this is specified in the get_GSOD()
function and will not change. The file name, specified in
the dsn will, but the layer name will not.
library(rgdal)
#> Loading required package: sp
#> rgdal: version: 1.1-10, (SVN revision 622)
#> Geospatial Data Abstraction Library extensions to R successfully loaded
#> Loaded GDAL runtime: GDAL 1.11.5, released 2016/07/01
#> Path to GDAL shared files: /usr/local/Cellar/gdal/1.11.5_1/share/gdal
#> Loaded PROJ.4 runtime: Rel. 4.9.3, 15 August 2016, [PJ_VERSION: 493]
#> Path to PROJ.4 shared files: (autodetected)
#> Linking to sp version: 1.2-3
AUS_stations <- readOGR(dsn = path.expand("~/AUS-2015.gpkg"), layer = "GSOD")
#> OGR data source with driver: GPKG
#> Source: "/Users/asparks/AUS-2015.gpkg", layer: "GSOD"
#> with 165168 features
#> It has 46 fields
class(AUS_stations)
#> [1] "SpatialPointsDataFrame"
#> attr(,"package")
#> [1] "sp"
Since GeoPackage files are formatted as SQLite databases you can use the existing R tools for SQLite files (J. Stachelek 2016). One easy way is using dplyr, which we've already used to filter the stations.
This option is much faster to load since it does not load the geometry.
AUS_sqlite <- tbl(src_sqlite(path.expand("~/AUS-2015.gpkg")), "GSOD")
class(AUS_sqlite)
#> [1] "tbl_sqlite" "tbl_sql" "tbl_lazy" "tbl"
print(AUS_sqlite, n = 5)
#> Source: query [?? x 48]
#> Database: sqlite 3.8.6 [/Users/asparks/AUS-2015.gpkg]
#>
#> fid geom USAF WBAN STNID STN_NAME CTRY STATE
#> <int> <list> <chr> <chr> <chr> <chr> <chr> <chr>
#> 1 1 <raw [29]> 941030 99999 941030-99999 BROWSE ISLAND AWS AS -9999
#> 2 2 <raw [29]> 941030 99999 941030-99999 BROWSE ISLAND AWS AS -9999
#> 3 3 <raw [29]> 941030 99999 941030-99999 BROWSE ISLAND AWS AS -9999
#> 4 4 <raw [29]> 941030 99999 941030-99999 BROWSE ISLAND AWS AS -9999
#> 5 5 <raw [29]> 941030 99999 941030-99999 BROWSE ISLAND AWS AS -9999
#> # ... with more rows, and 40 more variables: CALL <chr>, ELEV_M <dbl>,
#> # ELEV_M_SRTM_90m <dbl>, BEGIN <dbl>, END <dbl>, YEARMODA <chr>,
#> # YEAR <chr>, MONTH <chr>, DAY <chr>, YDAY <dbl>, TEMP <dbl>,
#> # TEMP_CNT <int>, DEWP <dbl>, DEWP_CNT <int>, SLP <dbl>, SLP_CNT <int>,
#> # STP <dbl>, STP_CNT <int>, VISIB <dbl>, VISIB_CNT <int>, WDSP <dbl>,
#> # WDSP_CNT <int>, MXSPD <dbl>, GUST <dbl>, MAX <dbl>, MAX_FLAG <chr>,
#> # MIN <dbl>, MIN_FLAG <chr>, PRCP <dbl>, PRCP_FLAG <chr>, SNDP <dbl>,
#> # I_FOG <int>, I_RAIN_DRIZZLE <int>, I_SNOW_ICE <int>, I_HAIL <int>,
#> # I_THUNDER <int>, I_TORNADO_FUNNEL <int>, EA <dbl>, ES <dbl>, RH <dbl>
You may have already downloaded GSOD data or may just wish to use an FTP client to download the files from the server to you local disk and not use the capabilities of get_GSOD()
. In that case the reformat_GSOD()
function is useful.
There are two ways, you can either provide reformat_GSOD()
with a list of specified station files or you can supply it with a directory containing all of the “WBAN-WMO-YYYY.op.gz” station files that you wish to reformat.
y <- c("~/GSOD/gsod_1960/200490-99999-1960.op.gz",
"~/GSOD/gsod_1961/200490-99999-1961.op.gz")
x <- reformat_GSOD(file_list = y)
x <- reformat_GSOD(dsn = "~/GSOD/gsod_1960")
Additional climate data, GSODRdata, formatted for use with GSOD data provided by GSODR are available as an R package installable through GitHub due to the package size, 5.1Mb, being too large for CRAN.
#install.packages("devtools")
devtools::install_github("adamhsparks/GSODRdata")
library("GSODRdata")
90 metre (90m) hole-filled SRTM digital elevation (Jarvis et al. 2008) was used to identify and correct/remove elevation errors in data for station locations between -60˚ and 60˚ latitude. This applies to cases here where elevation was missing in the reported values as well. In case the station reported an elevation and the DEM does not, the station reported is taken. For stations beyond -60˚ and 60˚ latitude, the values are station reported values in every instance. See https://github.com/ropensci/GSODR/blob/devel/data-raw/fetch_isd-history.md for more detail on the correction methods.
Users of these data should take into account the following (from the NCEI website):
“The following data and products may have conditions placed on their international commercial use. They can be used within the U.S. or for non-commercial international activities without restriction. The non-U.S. data cannot be redistributed for commercial purposes. Re-distribution of these data by others must provide this same notification.” WMO Resolution 40. NOAA Policy
Stachelek, J. (2016) Using the Geopackage Format with R. URL: https://jsta.github.io/2016/07/14/geopackage-r.html