
Last chance! 50% off unlimited learning
Sale ends in
isd(usaf, wban, year, path = "~/.rnoaa/isd", overwrite = TRUE, cleanup = TRUE, ...)
rbind.isd(...)
~/.rnoaa/isd
. Required.TRUE
TRUE
, remove compressed .gz
file at end of
function execution. Processing data takes up a lot of time, so we cache a cleaned version
of the data. Cleaning up will save you on disk space. Default: TRUE
GET
path
parameter. If not found, the data is requested form NOAA's FTP server. The first time
a dataset is pulled down we must a) download the data, b) process the data, and c) save
a compressed .rds file to disk. The next time the same data is requested, we only have
to read back in the .rds file, and is quite fast. The benfit of writing to .rds files
is that data is compressed, taking up less space on your disk, and data is read back in
quickly, without changing any data classes in your data, whereas we'd have to jump
through hoops to do that with reading in csv. The processing can take quite a long time
since the data is quite messy and takes a bunch of regex to split apart text strings.
We hope to speed this process up in the future. See examples below for different behavior.
isd_stations
## Not run:
# # Get station table
# stations <- isd_stations()
# head(stations)
#
# ## plot stations
# ### remove incomplete cases, those at 0,0
# df <- stations[complete.cases(stations$lat, stations$lon), ]
# df <- df[df$lat != 0, ]
# ### make plot
# library("leaflet")
# leaflet(data = df) %>%
# addTiles() %>%
# addCircles()
#
# # Get data
# (res <- isd(usaf="011490", wban="99999", year=1986))
# (res <- isd(usaf="011690", wban="99999", year=1993))
# (res <- isd(usaf="172007", wban="99999", year=2015))
# (res <- isd(usaf="702700", wban="00489", year=2015))
# (res <- isd(usaf="109711", wban=99999, year=1970))
#
# # The first time a dataset is requested takes longer
# system.time( isd(usaf="782680", wban="99999", year=2011) )
# system.time( isd(usaf="782680", wban="99999", year=2011) )
#
# # Optionally pass in curl options
# res <- isd(usaf="011490", wban="99999", year=1986, config = verbose())
#
# # Plot data
# ## get data for multiple stations
# res1 <- isd(usaf="011690", wban="99999", year=1993)
# res2 <- isd(usaf="172007", wban="99999", year=2015)
# res3 <- isd(usaf="702700", wban="00489", year=2015)
# res4 <- isd(usaf="109711", wban=99999, year=1970)
# ## combine data
# ### uses rbind.isd (all inputs of which must be of class isd)
# res_all <- rbind(res1, res2, res3, res4)
# # add date time
# library("lubridate")
# res_all$date_time <- ymd_hm(
# sprintf("%s %s", as.character(res_all$date), res_all$time)
# )
# ## remove 999's
# library("dplyr")
# res_all <- res_all %>% filter(temperature < 900)
# ## plot
# library("ggplot2")
# ggplot(res_all, aes(date_time, temperature)) +
# geom_line() +
# facet_wrap(~usaf_station, scales = "free_x")
# ## End(Not run)
Run the code above in your browser using DataLab