The product contains the gridded climatologies of monthly total precipitation for Trentino – South Tyrol for the period 1981–2010. The dataset was obtained by interpolating on a 250-m resolution grid the observed monthly climatologies of more than 200 station sites of the regional meteorological network and some extra-regional sites close to the borders. All observation data used for deriving the gridded fields were prior checked for quality and homogeneity and they are stored in the Climate Database:https://edp-portal.eurac.edu/cdb_doc/. The climatologies refer to the averages over a reference 30-year period. Further details can be found in the published paper (Crespi et al., 2021; https://doi.org/10.5194/essd-13-2801-2021). The dataset is also available in PANGAEA repository.
https://doi.pangaea.de/10.1594/PANGAEA.924502
High-resolution daily series (1980 - 2018) and monthly climatologies (1981 - 2010) of mean temperature and precipitation for Trentino - South Tyrol (north-eastern Italian Alps) [dataset]
collection, Temperature, Climatologies, Daily, High-resolution, cct, No platform assigned, Land use, Land cover
CC-BY-4.0
Eurac Research - Institute for Earth Observation |
bartolomeo.ventura@eurac.edu |
Viale Druso, 1 / Drususallee 1, Eurac Research, Bolzano, Autonomous Province of Bolzano, 39100, Italy |
1980-01-01 2010-12-31
WGS-84 (3035:EPSG)
Grid
mapDigital
Imagery base maps earth cover
install.packages("openeo")
library(openeo)
# login ----
host = "https://openeo.eurac.edu"
con = connect(host = host)
login()
# check login ---
con$isConnected()
con$isLoggedIn()
describe_account()
# load collection - save result ----
p = processes()
data = p$load_collection(id = "ST_MONTHLY_GRIDDED_CLIMATOLOGIES_PRECIPITATION",
spatial_extent = list(west = 10.341342,
east = 12.520155,
south = 45.652589,
north = 47.109838),
temporal_extent = list("1980-01-01", "2010-12-31"))
result = p$save_result(data = data, format="netCDF")
# download results ----
# either directly (suitable for smaller requests)
compute_result(result,
format = "netCDF",
output_file = "ST_MONTHLY_GRIDDED_CLIMATOLOGIES_PRECIPITATION.nc",
con = con)
# or start a batch job (suitable for larger requests)
job_id = create_job(graph = result,
title = "ST_MONTHLY_GRIDDED_CLIMATOLOGIES_PRECIPITATION",
description = "ST_MONTHLY_GRIDDED_CLIMATOLOGIES_PRECIPITATION",
format = "netCDF")
start_job(job = job_id)
result_list = list_results(job = job_id)
download_results(job = job_id, folder = ".")
#pip install openeo
import openeo
# login ----
euracHost = "https://openeo.eurac.edu"
conn = openeo.connect(euracHost).authenticate_oidc(client_id="openEO_PKCE")
# load collection - save result ----
data = conn.load_collection("ST_MONTHLY_GRIDDED_CLIMATOLOGIES_PRECIPITATION",spatial_extent={'west':10.341342,'east':12.520155,'south':45.652589,'north':47.109838},temporal_extent=["1980-01-01", "2010-12-31"])
result = data.save_result(format="NetCDF")
# download results ----
# either directly (suitable for smaller requests, closes the connection after 2 minutes)
result.download("ST_MONTHLY_GRIDDED_CLIMATOLOGIES_PRECIPITATION.nc",format="netCDF")
# or start a batch job (suitable for larger requests, e.g. when .download() timeouts)
job = result.create_job(title = "ST_MONTHLY_GRIDDED_CLIMATOLOGIES_PRECIPITATION",description = "ST_MONTHLY_GRIDDED_CLIMATOLOGIES_PRECIPITATION",out_format = "netCDF")
jobId = job.job_id
job.start_job()
jobResults = job.get_results()
jobResults.download_files('.')
Name | Description | Link | Date published | Category |
---|---|---|---|---|
openEO for ADO project | Tutorial and snippets on how to use openEO in the ADO project | Link | Sept. 15, 2021 | OpenEO |
EDP video tutorial | Presentation of edp-platform and tutorial for data analysis and processing | Link | Sept. 15, 2021 | OpenEO |
Official OpenEO documentation and project site | Official Documentation provided in the project web site for a deeper overview and introduction. | Link | June 10, 2021 | OpenEO |
OpenEO doc | Documentation for OpenEO API | Link | June 9, 2021 | OpenEO |
Eurac - OpenEO | openEO endpoint | Link | April 28, 2021 | OpenEO |
MOOC Cubes and Clouds | Free Online Course teaching the concepts of data cubes, cloud platforms and open science in geospatial and EO. | Link | March 8, 2024 | OpenEO, STAC |