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- Area cropping
- Time series extraction
There are different ways two scenarios to perform those operations:
- From Remotely - Using the CDS API (less data is downloaded)
- Locally (full control on the process)
Table of Contents |
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GloFAS
CDS API
Time series extraction:
- to perform the operation remotely on the CDS compute nodes and retrieve only the reduced data.
- Locally - Using the CDS API to retrieve the entire data and perform the operation locally.
Table of Contents |
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Settings for
For the exercise on extracting time series on the local machine, we are going to use the latitude and longitude coordinates from a tiny subset of the GRDC dataset.
Copy the content of the box below into an empty file named "GRDC.csv", the file should reside in your working folder.
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grdc_no,wmo_reg,sub_reg,river,station,country,lat,long,area,altitude
6118010,6,18,CLAIE,SAINT-JEAN-BREVELAY,FR,47.824831,-2.703308,137.0,99.98
6118015,6,18,YVEL,LOYAT (PONT D129),FR,47.993815,-2.368849,315.0,88.26
6118020,6,18,"ARON, RUISSEAU D'",GRAND-FOUGERAY (LA BERNADAISE),FR,47.71222,-1.690835,118.0,68.0
6118025,6,18,"CANUT, RUISSEAU DE",SAINT-JUST (LA RIVIERE COLOMBEL),FR,47.775309,-1.979609,37.0,80.22
6118030,6,18,AFF,PAIMPONT (PONT DU SECRET),FR,47.981631,-2.143762,30.2,119.01
6118050,6,18,COET-ORGAN,QUISTINIC (KERDEC),FR,47.904164,-3.201265,47.7,94.42
6118060,6,18,EVEL,GUENIN,FR,47.899928,-2.975167,316.0,95.16
6118070,6,18,STER-GOZ,BANNALEC (PONT MEYA),FR,47.906833,-3.752172,69.7,85.08
6118080,6,18,MOROS,CONCARNEAU (PONT D22),FR,47.882934,-3.875375,20 |
Retrieve the following datasets:
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import cdsapi
c = cdsapi.Client()
c.retrieve(
'cems-glofas-historical',
{
' | ||||||
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import cdsapi from datetime import datetime, timedelta def get_monthsdays(start =[2019,1,1],end=[2019,12,31]): # reforecast time index start, end = datetime(*start),datetime(*end) days = [start + timedelta(days=i) for i in range((end - start).days + 1)] monthday = [d.strftime("%B-%d").split("-") for d in days if d.weekday() in [0,3] ] return monthday if __name__ == '__main__': c = cdsapi.Client() # station coordinates (lat,lon) COORDS = { "Thames":[51.35,-0.45] } # select date index corresponding to the event MONTHSDAYS = get_monthsdays(start =[2019,7,11],end=[2019,7,11]) YEAR = '2007' LEADTIMES = ['%d'%(l) for l in range(24,1128,24)] # loop over date index (just 1 in this case) for md in MONTHSDAYS: month = md[0].lower() day = md[1] # loop over station coordinates for station in COORDS: station_point_coord = COORDS[station]*2 # coordinates input for the area keyword c.retrieve( 'cems-glofas-reforecast', { 'system_version': 'version_2_2', 'variable': 'river_discharge_in_the_last_24_hours', 'format': 'grib', 'hydrological_model': 'htessel_lisflood', 'product_type': ['control_reforecastintermediate','ensemble_perturbed_reforecasts'], 'area':station_point_coord, 'hyear': YEAR, 'hyear': '2021', 'hmonth': month 'january', 'hday': day , 'leadtime_hour': LEADTIMES, }, f'glofas_reforecast_{station}_{month}_{day}.grib') |
Area cropping:
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## === retrieve GloFAS Medium-Range Reforecast === ## === subset India, Pakistan, Nepal and Bangladesh region === import cdsapi from datetime import datetime, timedelta def get_monthsdays(): start, end = datetime(2019, 1, 1), datetime(2019, 12, 31) days = [start + timedelta(days=i) for i in range((end - start).days + 1)] monthday = [d.strftime("%B-%d").split("-") for d in days if d.weekday() in [0,3] ] return monthday MONTHSDAYS = get_monthsdays() if __name__ == '__main__': c = cdsapi.Client() # user inputs BBOX = [40.05 ,59.95, 4.95, 95.05] # North West South East YEARS = ['%d'%(y) for y in range(1999,2019)] LEADTIMES = ['%d'%(l) for l in range(24,1128,24)] # submit request for md in MONTHSDAYS: [ '01', '02', '03', '04', '05', '06', '07', '08', '09', '10', '11', '12', '13', '14', '15', '16', '17', '18', '19', '20', '21', '22', '23', '24', '25', '26', '27', '28', '29', '30', '31', month = md[0].lower()], day = md[1] 'system_version': 'version_3_1', c.retrieve( }, 'cems-glofas-reforecast', glofas_historical.grib') |
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import cdsapi c = cdsapi.Client() c.retrieve( 'efas-reforecast', { 'format': 'grib', 'systemproduct_versiontype': 'versionensemble_2perturbed_2reforecasts', 'variable': 'river_discharge_in_the_last_246_hours', 'model_levels': 'surface_level', 'formathyear': 'grib2007', 'hmonth': 'march', 'hydrological_modelhday': 'htessel_lisflood',[ 'product_type': 'control_reforecast', 'area': BBOX,# < - subset'04', '07', ], 'hyearleadtime_hour': YEARS,[ 'hmonth': month , 'hday': day , '0', '12', '18', 'leadtime_hour': LEADTIMES6', ], }, f'glofasefas_reforecast_{month}_{day}.grib') |
GloFAS
CDS API
Time series extraction:
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## === retrieve GloFAS Seasonal Forecast === ## === subset South America/Amazon region === import cdsapi if __name__ == '__main__': c = cdsapi.Client() YEARS = ['%d'%(y) for y in range(2020,2022)] MONTHS = ['%02d'%(m) for m in range(1,13)] LEADTIMES = ['%d'%(l) for l in range(24,2976,24)] for year in YEARS: for month in MONTHS: c.retrieve( 'cems-glofas-seasonal', { import cdsapi from datetime import datetime, timedelta def get_monthsdays(start =[2019,1,1],end=[2019,12,31]): # reforecast time index start, end = datetime(*start),datetime(*end) days = [start + timedelta(days=i) for i in range((end - start).days + 1)] monthday = [d.strftime("%B-%d").split("-") for d in days if d.weekday() in [0,3] ] return monthday if __name__ == '__main__': c = cdsapi.Client() # station coordinates (lat,lon) COORDS = { "Thames":[51.35,-0.45] } # select date index corresponding to the event MONTHSDAYS = get_monthsdays(start =[2019,7,11],end=[2019,7,11]) YEAR = '2007' LEADTIMES = ['%d'%(l) for l in range(24,1128,24)] # loop over date index (just 1 in this case) for md in MONTHSDAYS: month = md[0].lower() day = md[1] # loop over station coordinates for station in COORDS: station_point_coord = COORDS[station]*2 # coordinates input for the area keyword c.retrieve( 'cems-glofas-reforecast', { 'system_version': 'version_2_2', 'variable': 'river_discharge_in_the_last_24_hours', 'format': 'grib', 'year'hydrological_model': year'htessel_lisflood', 'month': '12' if year == '2020' else month, 'product_type': ['control_reforecast','ensemble_perturbed_reforecasts'], 'area':station_point_coord, 'hyear': YEAR, 'hmonth': month , 'hday': day , 'leadtime_hour': LEADTIMES, 'area': [ 10.95, -90.95, -30.95, -29.95 ] }, }, f'glofas_seasonalreforecast_{yearstation}_{month}_{day}.grib') |
Area cropping:
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## === retrieve GloFAS SeasonalMedium-Range Reforecast === ## === subset South America/AmazonIndia, Pakistan, Nepal and Bangladesh region === import cdsapi if __name__ == '__main__':from datetime import datetime, timedelta c = cdsapi.Clientdef get_monthsdays(): YEARSstart, end = ['%d'%(y) for y in range(1981,2021)] datetime(2019, 1, 1), datetime(2019, 12, 31) MONTHSdays = ['january', 'february', 'march', 'april', 'may', 'june', 'july', 'august', 'september', 'october', 'november', 'december'] LEADTIMES = ['%d'%(l) for l in range(24,2976,24)] for year in YEARS: for month in MONTHS: c.retrieve( 'cems-glofas-seasonal-reforecast', { 'system_version': 'version_2_2', start + timedelta(days=i) for i in range((end - start).days + 1)] monthday = [d.strftime("%B-%d").split("-") for d in days if d.weekday() in [0,3] ] return monthday MONTHSDAYS = get_monthsdays() if __name__ == '__main__': c = cdsapi.Client() # user inputs BBOX = [40.05 ,59.95, 4.95, 95.05] # North West South East YEARS = ['%d'%(y) for y in range(1999,2019)] LEADTIMES = ['%d'%(l) for l in range(24,1128,24)] # submit request for md in MONTHSDAYS: month = md[0].lower() day = md[1] 'variable':'river_discharge_in_the_last_24_hours',c.retrieve( 'cems-glofas-reforecast', 'format':'grib', { 'hydrologicalsystem_modelversion': 'htesselversion_2_lisflood2', 'hyearvariable': year'river_discharge_in_the_last_24_hours', 'hmonthformat': month'grib', 'leadtimehydrological_hourmodel': LEADTIMES'htessel_lisflood', 'product_type': 'control_reforecast', 'area': [ 10.95BBOX,# -90.95,< -30.95, -29.95 ] subset 'hyear': }YEARS, f'glofas_seasonal_reforecast_{year}_{month}.grib') |
Local machine
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import cdsapi c = cdsapi.Client() c.retrieve( 'hmonth': month , 'cems-glofas-historical'hday': day , { 'variable': 'river_discharge_in_the_last_24_hours', 'format': 'grib'leadtime_hour': LEADTIMES, 'hydrological_model': 'lisflood', 'product_type': 'intermediate'}, 'hyear': '2021', f'glofas_reforecast_{month}_{day}.grib') |
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## === retrieve GloFAS Seasonal Forecast === ## === subset South America/Amazon region === import cdsapi if __name__ == '__main__': c = cdsapi.Client() YEARS = ['%d'%(y) for y in range(2020,2022)] MONTHS = ['%02d'%(m) for m in range(1,13)] LEADTIMES = ['%d'%(l) for l in range(24,2976,24)] for year in YEARS: for month in MONTHS: 'hmonth': 'january', 'hday': [ '01', '02', '03', '04', '05', '06', '07', '08', '09', '10', '11', '12', '13', '14', '15', '16', '17', '18', c.retrieve( '19', '20', '21 'cems-glofas-seasonal', '22', '23', '24', { '25', '26variable',: '27river_discharge_in_the_last_24_hours', '28format',: '29grib', '30', '31year': year, ], 'system_versionmonth': 'version_3_1', }12' if year == '2020' else month, 'glofas_historical.grib') |
Time series extraction:
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import xarray as xr
import pandas as pd
parameter = "dis24"
ds = xr.open_dataset("glofas_historical.grib", engine="cfgrib",backend_kwargs={'time_dims':['time']})
df = pd.read_csv("GRDC.csv")
total = len(df)
rows = []
count = 0
for lon, lat, id in zip(df.long, df.lat, df.grdc_no):
extracted = ds.sel(longitude=lon, latitude=lat, method="nearest")[parameter]
df_temp = extracted.drop_vars(["surface"]).to_dataframe().reset_index()
df_temp["grdc"] = str(id)
df_temp = df_temp.set_index(["grdc", "time"])
rows.append(df_temp)
count += 1
print(f"progress: {count/total*100} %")
out = pd.concat(rows)
out.to_csv("extracted.csv", index="grdc") |
Area cropping:
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import xarray as xr
# Rhine's basin bounding box
bbox = [50.972204, 46.296530, 5.450796, 11.871059] # N,S,W,E
ds = xr.open_dataset("glofas_historical.grib", engine="cfgrib")
ds_cropped = ds.sel(
longitude=slice(bbox[2], bbox[3]), latitude=slice(bbox[0], bbox[1])
)
ds_cropped.to_netcdf("glofas_historical_cropped.nc") |
EFAS
Warning | ||
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When transforming from lat/lon (source coordinates) to projected LAEA (target coordinates), you need to consider that the number of decimal places of the source coordinates affects the target coordinates precision: An interval of 0.001 degrees corresponds to about 100 metres in LAEA. An interval of 0.00001 degrees corresponds to about 1 metre in LAEA. |
CDS API
to update once cropping works....
Time series extraction:
Area cropping:
Local machine
'leadtime_hour': LEADTIMES,
'area': [ 10.95, -90.95, -30.95, -29.95 ]
},
f'glofas_seasonal_{year}_{month}.grib') |
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## === retrieve GloFAS Seasonal Reforecast ===
## === subset South America/Amazon region ===
import cdsapi
if __name__ == '__main__':
c = cdsapi.Client()
YEARS = ['%d'%(y) for y in range(1981,2021)]
MONTHS = ['january', 'february', 'march', 'april', 'may', 'june', 'july', 'august', 'september', 'october', 'november', 'december']
LEADTIMES = ['%d'%(l) for l in range(24,2976,24)]
for year in YEARS:
for month in MONTHS:
c.retrieve(
'cems-glofas-seasonal-reforecast',
{
'system_version': 'version_2_2',
'variable':'river_discharge_in_the_last_24_hours',
'format':'grib',
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import cdsapi c = cdsapi.Client() c.retrieve( 'efas-reforecast', { 'formathydrological_model': 'gribhtessel_lisflood', 'product_type': 'ensemble_perturbed_reforecasts', 'hyear': year, 'variablehmonth': 'river_discharge_in_the_last_6_hours'month, 'model_levels 'leadtime_hour': 'surface_level'LEADTIMES, 'hyear': '2007', 'hmontharea': 'march', [ 10.95, -90.95, -30.95, -29.95 ] 'hday': [ '04'}, '07', ], 'leadtime_hour': [ '0', '12', '18', '6', ], }, 'efas_reforecast.grib') |
Time series extraction:
We are going to extract EFAS reforecast's timeseries at locations defined by latitude and longitude coordinates from a tiny subset of the GRDC dataset.
Info | ||
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EFAS's x and y coordinates, when converted from GRIB to NetCDF, are not projected coordinates but matrix indexes (i, j), It is necessary to download the upstream area static file that contains the projected coordinates and replace it in EFAS. |
Copy the content into an empty file named "GRDC.csv", the file should reside in the same folder of the efas_reforecast.grib file and the upstream area.
f'glofas_seasonal_reforecast_{year}_{month}.grib') |
Local machine
Time series extraction:
Code Block | ||||||
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import xarray as xr
import pandas as pd
parameter = "dis24"
ds = xr.open_dataset("glofas_historical.grib", engine="cfgrib",backend_kwargs={'time_dims':['time']})
df = pd.read_csv("GRDC.csv")
total = len(df)
rows = []
count = 0
for lon, lat, id in zip(df.long, df.lat, df.grdc_no):
extracted = ds.sel(longitude=lon, latitude=lat, method="nearest")[parameter]
df_temp = extracted.drop_vars(["surface"]).to_dataframe().reset_index()
df_temp["grdc"] = str(id)
df_temp = df_temp.set_index(["grdc", "time"])
rows.append(df_temp)
count += 1
print(f"progress: {count/total*100} %")
out = pd.concat(rows)
out.to_csv("extracted.csv", index="grdc") |
Area cropping:
Code Block | ||||||
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import xarray as xr
# Rhine's basin bounding box
bbox = [50.972204, 46.296530, 5.450796, 11.871059] # N,S,W,E
ds = xr.open_dataset("glofas_historical.grib", engine="cfgrib")
ds_cropped = ds.sel(
longitude=slice(bbox[2], bbox[3]), latitude=slice(bbox[0], bbox[1])
)
ds_cropped.to_netcdf("glofas_historical_cropped.nc") |
EFAS
Warning | ||
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When transforming from lat/lon (source coordinates) to projected LAEA (target coordinates), you need to consider that the number of decimal places of the source coordinates affects the target coordinates precision: An interval of 0.001 degrees corresponds to about 100 metres in LAEA. An interval of 0.00001 degrees corresponds to about 1 metre in LAEA. |
CDS API
to update once cropping works....
Time series extraction:
Area cropping:
Local machine
Time series extraction:
We are going to extract EFAS reforecast's timeseries at locations defined by latitude and longitude coordinates from a tiny subset of the GRDC dataset.
Info | ||||
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EFAS's x and y coordinates, when converted from GRIB to NetCDF, are not projected coordinates but matrix indexes (i, j), It is necessary to download the upstream area static file that contains the projected coordinates and replace it in EFAS. | ||||
Code Block | ||||
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grdc_no,wmo_reg,sub_reg,river,station,country,lat,long,area,altitude 6118010,6,18,CLAIE,SAINT-JEAN-BREVELAY,FR,47.824831,-2.703308,137.0,99.98 6118015,6,18,YVEL,LOYAT (PONT D129),FR,47.993815,-2.368849,315.0,88.26 6118020,6,18,"ARON, RUISSEAU D'",GRAND-FOUGERAY (LA BERNADAISE),FR,47.71222,-1.690835,118.0,68.0 6118025,6,18,"CANUT, RUISSEAU DE",SAINT-JUST (LA RIVIERE COLOMBEL),FR,47.775309,-1.979609,37.0,80.22 6118030,6,18,AFF,PAIMPONT (PONT DU SECRET),FR,47.981631,-2.143762,30.2,119.01 6118050,6,18,COET-ORGAN,QUISTINIC (KERDEC),FR,47.904164,-3.201265,47.7,94.42 6118060,6,18,EVEL,GUENIN,FR,47.899928,-2.975167,316.0,95.16 6118070,6,18,STER-GOZ,BANNALEC (PONT MEYA),FR,47.906833,-3.752172,69.7,85.08 6118080,6,18,MOROS,CONCARNEAU (PONT D22),FR,47.882934,-3.875375,20 |
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import xarray as xr import pandas as pd from pyproj import Transformer,CRS parameter = "dis06" ds = xr.open_dataset("efas_reforecast.grib", engine="cfgrib") df = pd.read_csv("GRDC.csv") uparea = xr.open_dataset("ec_uparea4.0.nc") # the upstream area # replace x, y ds["x"] = uparea["x"] ds["y"] = uparea["y"] # define reprojection parameters laea_proj = CRS.from_proj4("+proj=laea +lat_0=52 +lon_0=10 +x_0=4321000 +y_0=3210000 +ellps=GRS80 +units=m +no_defs") transformer = Transformer.from_crs('epsg:4326', laea_proj, always_xy=True) total = len(df) rows = [] count = 0 for lon, lat, id in zip(df.long, df.lat, df.grdc_no): x1, y1 = transformer.transform(lon, lat) extracted = ds.sel(x=x1, y=y1, number = 1, method="nearest")[parameter] df_temp = extracted.drop_vars(["surface", "number"]).to_dataframe().reset_index() df_temp["grdc"] = str(id) df_temp = df_temp.drop("step", axis=1) df_temp = df_temp.set_index(["grdc","time"]) rows.append(df_temp) count += 1 print(f"progress: {count/total*100} %") out = pd.concat(rows) out.to_csv("extracted.csv", index="grdc") |
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