How to Download Ocean Data from HYCOM via HTTP in Julia
Overview
On HiCom, manually clicking to download and organize data is not easy. This introduces a method to retrieve data by supplying a URL that specifies the selection criteria.
Code
HTTP.jl 1
for y = 2019:2024
url = replace("https://ncss.hycom.org/thredds/ncss/GLBy0.08/expt_93.0/ts3z/$y?var=water_temp
&north=36.88
&west=129.52
&east=130.24
&south=36.32
&disableProjSubset=on
&horizStride=1
&time_start=$y-01-01T00%3A00%3A00Z
&time_end=$y-12-31T21%3A00%3A00Z
&timeStride=1
&vertCoord=0
&accept=netcdf4", '\n' => "", " " => "")
@time response = HTTP.get(url)
open("data_$y.nc4", "w") do f
write(f, response.body)
end
end
For example, the above code fetches sea surface temperature (SST, Sea Surface Temperature) at three-hour intervals for experiment number 93 of GLBy0.08, over the period 2019–2024, within the latitude range 36.32–36.88 and longitude range 129.52–130.24.
NCDatasets.jl 2
data_ = []
for y = 2019:2024
ds = NCDataset("data_$y.nc4")
push!(data_, DataFrame([ds["time"][:] reshape(ds["water_temp"][:, :, 1, :], 150, :)'], ["t"; repeat("i" .* string.(1:10), outer = 15) .* repeat("j" .* string.(1:15), inner = 10)]))
close(ds)
end
The downloaded file is a *.nc4 file, i.e., NetCDF-4 (Network Common Data Form version 4). Although it is widely used for handling high-dimensional data, in this guide we create a DataFrame using DataFrames.jl.
Saving
_data_ = vcat(data_...)
_data_.t = Date.(_data_.t)
_data_ = combine(groupby(_data_, :t), names(_data_, Not(:t)) .=> mean .=> names(_data_, Not(:t)))
CSV.write("data_GLBy0.08_expt_93.0.csv", _data_)
tnsr = reshape(Matrix(_data_[:, 2:end])', 10, 15, :)
@save "data_tnsr.jld2" tnsr
# @load "data_tnsr.jld2"; tnsr
You can save tensors as-is using JLD2.jl, or save them in an easy-to-write format using CSV.jl.
Full code
using HTTP, NCDatasets, DataFrames, Dates, CSV, JLD2, StatsBase
for y = 2019:2024
url = replace("https://ncss.hycom.org/thredds/ncss/GLBy0.08/expt_93.0/ts3z/$y?var=water_temp
&north=36.88
&west=129.52
&east=130.24
&south=36.32
&disableProjSubset=on
&horizStride=1
&time_start=$y-01-01T00%3A00%3A00Z
&time_end=$y-12-31T21%3A00%3A00Z
&timeStride=1
&vertCoord=0
&accept=netcdf4", '\n' => "", " " => "")
@time response = HTTP.get(url)
open("data_$y.nc4", "w") do f
write(f, response.body)
end
end
# ds = NCDataset("data_$y.nc4")
# # ds.attrib
# # keys(ds)
# # ds["water_temp"][:, :, 1, :]
# CSV.write("lon.csv", DataFrame(i = 1:10, x = round.(ds["lon"][:], digits = 2)))
# CSV.write("lat.csv", DataFrame(j = 1:15, y = round.(ds["lat"][:], digits = 2)))
# close(ds)
data_ = []
for y = 2019:2024
ds = NCDataset("data_$y.nc4")
push!(data_, DataFrame([ds["time"][:] reshape(ds["water_temp"][:, :, 1, :], 150, :)'], ["t"; repeat("i" .* string.(1:10), outer = 15) .* repeat("j" .* string.(1:15), inner = 10)]))
close(ds)
end
_data_ = vcat(data_...)
_data_.t = Date.(_data_.t)
_data_ = combine(groupby(_data_, :t), names(_data_, Not(:t)) .=> mean .=> names(_data_, Not(:t)))
CSV.write("data_GLBy0.08_expt_93.0.csv", _data_)
tnsr = reshape(Matrix(_data_[:, 2:end])', 10, 15, :)
@save "data_tnsr.jld2" tnsr
# @load "data_tnsr.jld2"; tnsr
Niño 3.4
The following code retrieves the average sea surface temperature for the Niño 3.4 region3, defined as latitude 5°S–5°N and longitude 170°W–120°W.
using HTTP, NCDatasets, DataFrames, Dates, CSV, JLD2, StatsBase, ProgressMeter
using Base.Threads
@showprogress @threads for day in Date(2019, 1, 1):Date(2024, 9, 5)
try
str_day = string(day)
("data_$str_day.nc4" |> isfile) && continue
url = replace("https://ncss.hycom.org/thredds/ncss/GLBy0.08/expt_93.0/ts3z/$(Year(day).value)?var=water_temp
&north=5
&west=120
&east=170
&south=-5
&disableProjSubset=on
&horizStride=1
&time_start=$(day)T00%3A00%3A00Z
&time_end=$(day)T21%3A00%3A00Z
&timeStride=1
&vertCoord=0
&accept=netcdf4", '\n' => "", " " => "")
# @time response = HTTP.get(url)
response = HTTP.get(url)
open("data_$str_day.nc4", "w") do f
write(f, response.body)
end
catch e
@warn e
end
end
nc4_ = filter(endswith(".nc4"), readdir())
@time data_ = CSV.read("data_form.csv", DataFrame)
@showprogress for k in eachindex(nc4_)
NCDataset(nc4_[k]) do ds
df = DataFrame([ds["time"][:] reshape(ds["water_temp"][:, :, 1, :], 251*626, :)'], ["t"; repeat("i" .* string.(1:626), outer = 251) .* repeat("j" .* string.(1:251), inner = 626)])
df.t = Date.(df.t)
data_[k, :] = combine(groupby(df, :t), names(df, Not(:t)) .=> mean .=> names(df, Not(:t)))[1, :]
end
end
CSV.write("data_GLBy0.08_expt_93.0.csv", data_)
tnsr = reshape(Matrix(data_[:, 2:end])', 626, 251, :)
@save "data_tnsr.jld2" tnsr
