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Installation

Instructions on the installation and set up of the CDS API can be found here.

API script examples:

EFAS Medium-range climatology

## === retrieve EFAS Medium-Range Climatology === 
import cdsapi


if __name__ == '__main__':

	c = cdsapi.Client()


	VARIABLES = [
			'river_discharge_in_the_last_6_hours', 'snow_depth_water_equivalent',
	]


	YEARS = ['%02d'%(mn) for mn in range(1991,2022)]

	MONTHS = ['january', 'february', 'march', 'april', 'may', 'june', 'july', 'august', 'september', 'october', 'november', 'december']
	DAYS = ['%02d'%(mn) for mn in range(1,32)]


	for variable in VARIABLES:
		for year in YEARS:
			c.retrieve(
				'efas-historical',
				{
					'system_version': 'version_4_0',
					'variable': variable,
					'model_levels': 'surface_level',
					'hyear': '1991',
					'hmonth': MONTHS,
					'hday': DAYS,
					'time': '00:00',
					'format': 'grib',
				},
					f'efas_historical_{variable}_{year}.grib')


EFAS Medium-range forecast

## === retrieve EFAS Medium-Range Forecast === 

import cdsapi
import datetime



def compute_dates_range(start_date,end_date,loop_days=True):


    start_date = datetime.date(*[int(x) for x in start_date.split('-')])
    
    end_date = datetime.date(*[int(x) for x in end_date.split('-')])
    
    ndays =  (end_date - start_date).days + 1
    
    dates = []
    for d in range(ndays):
        dates.append(start_date + datetime.timedelta(d))
    
    if not loop_days:
        dates = [i for i in dates if i.day == 1]
    else:
        pass
    return dates



if __name__ == '__main__':


    # start the client
    c = cdsapi.Client()


    # user inputs
    START_DATE = '2020-10-14' # first date with available data

    END_DATE = '2021-02-28' 

    LEADTIMES =  [str(lt) for lt in range(0,372,6)]


    # loop over dates and save to disk

    dates = compute_dates_range(START_DATE,END_DATE)

    for date in dates:

        year  = date.strftime('%Y')
        month = date.strftime('%m')
        day   = date.strftime('%d')

        print(f"RETRIEVING: {year}-{month}-{day}")

        c.retrieve('efas-forecast',
            {
                'format': 'grib',
                'originating_centre':'ecmwf',
                'product_type':'ensemble_perturbed_forecasts',
                'variable': 'river_discharge_in_the_last_6_hours',
                'model_levels': 'surface_level',
                'year': year,
                'month': month,
                'day': day,
                'leadtime_hour':LEADTIMES,
                'time': '12:00',
            },
            f'efas_forecast_{year}_{month}_{day}.grib')

GloFAS Medium-range climatology

## === retrieve GloFAS Medium-Range Climatology === 

import cdsapi


if __name__ == '__main__':
    c = cdsapi.Client()


    YEARS  = ['%02d'%(mn) for mn in range(1979,2021)]

    MONTHS = ['january', 'february', 'march', 'april', 'may', 'june', 'july', 'august', 'september', 'october', 'november', 'december']
    DAYS   = ['%02d'%(mn) for mn in range(1,32)]


    for year in YEARS:
        c.retrieve(
            'cems-glofas-historical',
            {
                'system_version':'version_2_1',
                'product_type': 'consolidated',
                'hydrological_model': 'htessel_lisflood',
                'variable': 'river_discharge_in_the_last_24_hours',
                'hyear': year,,
                'hmonth': MONTHS,
                'hday': DAYS,,
                'format': 'grib',
            },
            f'glofas_historical_{year}.grib')


GloFAS Medium-range forecast

## === retrieve GloFAS Medium-Range Forecast === 

import cdsapi
import datetime
import warnings



def compute_dates_range(start_date,end_date,loop_days=True):


    start_date = datetime.date(*[int(x) for x in start_date.split('-')])
    
    end_date = datetime.date(*[int(x) for x in end_date.split('-')])
    
    ndays =  (end_date - start_date).days + 1
    
    dates = []
    for d in range(ndays):
        dates.append(start_date + datetime.timedelta(d))
    
    if not loop_days:
        dates = [i for i in dates if i.day == 1]
    else:
        pass
    return dates



if __name__ == '__main__':


    # start the client
    c = cdsapi.Client()


    # user inputs
    START_DATE = '2019-11-05' # first date with available data

    END_DATE = '2021-03-15' 

    LEADTIMES =  [str(lt) for lt in range(24,744,24)]


    # loop over dates and save to disk

    dates = compute_dates_range(START_DATE,END_DATE)

    for date in dates:

        year  = date.strftime('%Y')
        month = date.strftime('%m')
        day   = date.strftime('%d')

        print(f"RETRIEVING: {year}-{month}-{day}")

        c.retrieve(
            'cems-glofas-forecast',
            {
                'format': 'grib',
                'system_version':'operational',
                'hydrological_model': 'htessel_lisflood',
                'product_type':'ensemble_perturbed_forecasts',
                'variable': 'river_discharge_in_the_last_24_hours',
                'year': year,
                'month': month,
                'day': day,
                'leadtime_hour':LEADTIMES
            },
            f'glofas_forecast_{year}_{month}_{day}.grib')

GloFAS Medium-range reforecast (with example area subset)

## === 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:

        month = md[0].lower()
        day = md[1]

        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_reforecast',
				'area': BBOX,# < - subset
                'hyear': YEARS,
                'hmonth': month ,
                'hday': day ,
                'leadtime_hour': LEADTIMES,
            },
            f'glofas_reforecast_{month}_{day}.grib')

GloFAS Medium-range reforecast (download time series)

The script shows how to retrieve the control reforecasts product from year 1999 to 2018, relative to the date 2019-01-03, for two station coordinates, one on the river network of the Thames and the other one on the Po river. 

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

# get date index
MONTHSDAYS = get_monthsdays() 

if __name__ == '__main__':
    c = cdsapi.Client()


    # set station coordinates (lat,lon)
    COORDS = {
            "Thames":[51.35,-0.45],
            "Po":[44.85, 11.65]
            }
        
    # select all years
    YEARS  = ['%d'%(y) for y in range(1999,2019)]
    
    # select all leadtime hours
    LEADTIMES = ['%d'%(l) for l in range(24,1128,24)]
    
    # loop over date index
    for md in MONTHSDAYS:

        month = md[0].lower()
        day = md[1]
        
		# loop over 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_reforecast',
                    'area':station_point_coord, 
                    'hyear': YEARS,
                    'hmonth': month ,
                    'hday': day ,
                    'leadtime_hour': LEADTIMES,
                },
                f'glofas_reforecast_{station}_{month}_{day}.grib')

Plot retrieved data:


import xarray as xr
import numpy as np
import matplotlib.pyplot as plt

YEARS = range(1999,2019)

# read dataset
ds = xr.open_dataset("glofas_reforecast_Po_january_03.grib",engine="cfgrib")
da = ds.isel(latitude=0,longitude=0).dis24

# plotting parameters
n = len(YEARS) 
colors = plt.cm.jet(np.linspace(0,1,n))
ls = ["-","--",":"]

# plot
fig,ax = plt.subplots(1,1,figsize=(16,8))

steps = list(range(24,dsa.shape[1]*24+24,24))

for i,year in enumerate(YEARS):
    y = da.sel(time=f"{year}-01-03").values
    ax.plot(steps,y,label=f"{year}-01-03",color=colors[i],ls=ls[i%3])
    plt.legend(bbox_to_anchor=(0.9,-0.1),ncol=7)

ax.set_xlim([0,steps[-1]])
ax.set_xlabel("leadtime hours")
ax.set_ylabel("m**3 s**-1")

plt.title(f"Po river discharge at {float(ds.latitude.values),round(float(ds.longitude.values),2)}")




GloFAS Medium-range reforecast (download time series for an event)

This script shows how to retrieve a point time series reforecast on the river Thames for a single forecast reference time, specifically the 11th of July 2007.

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_reforecast','ensemble_perturbed_reforecasts'],
                    'area':station_point_coord, 
                    'hyear': YEAR,
                    'hmonth': month ,
                    'hday': day ,
                    'leadtime_hour': LEADTIMES,
                },
                f'glofas_reforecast_{station}_{month}_{day}.grib')

In July 2007 a series of flooding events hit the UK, in particular in some areas of the upper Thames catchment up to 120 mm of rain fell between 19th and 20th of July.

Plot retrieved data:

import xarray as xr
import pandas as pd
import matplotlib.pyplot as plt
import matplotlib.dates as mdates
from datetime import datetime,timedelta

forecast_reference_time = datetime(2017,7,11)

# read perturbed ensembles (dataType:pf)
ds = xr.open_dataset("glofas_reforecast_Thames_july_11.grib",engine="cfgrib",backend_kwargs={'filter_by_keys':{'dataType': 'pf'}})
da = ds.isel(latitude=0,longitude=0).dis24

# read control (dataType:cf)
cds = xr.open_dataset("glofas_reforecast_Thames_july_11.grib",engine="cfgrib",backend_kwargs={'filter_by_keys':{'dataType': 'cf'}})
cda = cds.isel(latitude=0,longitude=0).dis24


start = forecast_reference_time
end = start + timedelta(45)
time = pd.date_range(start,end)

# plotting parameters
ls = ["-","--",":"]
locator = mdates.AutoDateLocator(minticks=2, maxticks=46)
formatter = mdates.DateFormatter("%b-%d")

# plot

fig,ax = plt.subplots(1,1,figsize=(16,8))
ax.plot(time,cda.values,label=f"control",color="red")
for i,number in enumerate(range(0,10)):
    y = da.isel(number=number).values
    ax.plot(time,y,label=f"ensemble {number}",color=colors[i],ls=ls[i%3])
    plt.legend(bbox_to_anchor=(1,1),ncol=2)

ax.axvspan(datetime(2017,7,19), datetime(2017,7,21), alpha=0.3, color='blue') # highlight event
ax.set_xlabel("date")
ax.set_ylabel("m**3 s**-1")
ax.xaxis.set_major_locator(locator)
ax.xaxis.set_major_formatter(formatter)
ax.set_xlim([time[0],time[-1]])
plt.annotate("peak\nrainfall\nevent",(datetime(2017,7,19,3),85),rotation=0)
plt.xticks(rotation=70)
plt.title(f"Forecast reference time: 11-07-2007 - Thames river discharge at {float(ds.latitude.values),round(float(ds.longitude.values-360),2)}")



GloFAS Seasonal Forecast (with example area subset)


## === 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',
                {   
                'variable': 'river_discharge_in_the_last_24_hours',
                'format': 'grib',
                'year': year,
                'month': '12' if year == '2020' else month,
                'leadtime_hour': LEADTIMES,
				'area': [ 10.95, -90.95, -30.95, -29.95 ]

                },
                f'glofas_seasonal_{year}_{month}.grib')

GloFAS Seasonal Reforecast (with example area subset)


## === 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',
                    'hydrological_model':'htessel_lisflood',
                    'hyear': year,
                    'hmonth': month,
                    'leadtime_hour': LEADTIMES,
                    'area': [ 10.95, -90.95, -30.95, -29.95 ]
                }, 
                f'glofas_seasonal_reforecast_{year}_{month}.grib')
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