Skip to main content

A package to access meteorological data from Environment Canada

Project description

Environment Canada (env_canada)

PyPI version Snyk rating

This package provides access to various data sources published by Environment and Climate Change Canada.

Weather Observations and Forecasts

ECWeather provides current conditions and forecasts. It automatically determines which weather station to use based on latitude/longitude provided. It is also possible to specify a specific station code of the form AB/s0000123 based on those listed in this CSV file. For example:

import asyncio

from env_canada import ECWeather

ec_en = ECWeather(coordinates=(50, -100))
ec_fr = ECWeather(station_id='ON/s0000430', language='french')

asyncio.run(ec_en.update())

# current conditions
ec_en.conditions

# daily forecasts
ec_en.daily_forecasts

# hourly forecasts
ec_en.hourly_forecasts

# alerts
ec_en.alerts

Weather Radar

ECRadar provides Environment Canada meteorological radar imagery.

import asyncio

from env_canada import ECRadar

radar_coords = ECRadar(coordinates=(50, -100))

# Conditions Available
animated_gif = asyncio.run(radar_coords.get_loop())
latest_png = asyncio.run(radar_coords.get_latest_frame())

Air Quality Health Index (AQHI)

ECAirQuality provides Environment Canada air quality data.

import asyncio

from env_canada import ECAirQuality

aqhi_coords = ECAirQuality(coordinates=(50, -100))

asyncio.run(aqhi_coords.update())

# Data available
aqhi_coords.current
aqhi_coords.forecasts

Water Level and Flow

ECHydro provides Environment Canada hydrometric data.

import asyncio

from env_canada import ECHydro

hydro_coords = ECHydro(coordinates=(50, -100))

asyncio.run(hydro_coords.update())

# Data available
hydro_coords.measurements

Historical Weather Data

ECHistorical provides historical daily weather data. The ECHistorical object is instantiated with a station ID, year, language, format (one of xml or csv) and granularity (hourly, daily data). Once updated asynchronously, historical weather data is contained with the station_data property. If xml is requested, station_data will appear in a dictionary form. If csv is requested, station_data will contain a CSV-readable buffer. For example:

import asyncio

from env_canada import ECHistorical, get_historical_stations

# search for stations, response contains station_ids
coordinates = [53.916944, -122.749444] # [lat, long]

# coordinates: [lat, long]
# radius: km
# limit: response limit, value one of [10, 25, 50, 100]
# The result contains station names and ID values.
stations = asyncio.run(get_historical_stations(coordinates, radius=200, limit=100))

ec_en_xml = ECHistorical(station_id=31688, year=2020, language="english", format="xml")
ec_fr_xml = ECHistorical(station_id=31688, year=2020, language="french", format="xml")
ec_en_csv = ECHistorical(station_id=31688, year=2020, language="english", format="csv")
ec_fr_csv = ECHistorical(station_id=31688, year=2020, language="french", format="csv")

# timeframe argument can be passed to change the granularity
# timeframe=1 hourly (need to create of for every month in that case, use ECHistoricalRange to handle it automatically)
# timeframe=2 daily (default)
ec_en_xml = ECHistorical(station_id=31688, year=2020, month=1, language="english", format="xml", timeframe=1)
ec_en_csv = ECHistorical(station_id=31688, year=2020, month=1, language="english", format="csv", timeframe=1)

asyncio.run(ec_en_xml.update())
asyncio.run(ec_en_csv.update())

# metadata describing the station
ec_en_xml.metadata

# historical weather data, in dictionary form
ec_en_xml.station_data

# csv-generated responses return csv-like station data
import pandas as pd
df = pd.read_csv(ec_en_csv.station_data)

ECHistoricalRange provides historical weather data within a specific range and handles the update by itself.

The ECHistoricalRange object is instantiated with at least a station ID and a daterange. One could add language, and granularity (hourly, daily (default)).

The data can then be used as pandas DataFrame, XML (requires pandas >=1.3.0) and csv

For example :

import pandas as pd
import asyncio
from env_canada import ECHistoricalRange, get_historical_stations
from datetime import datetime

coordinates = ['48.508333', '-68.467667']

stations = pd.DataFrame(asyncio.run(get_historical_stations(coordinates, start_year=2022,
                                                end_year=2022, radius=200, limit=100))).T

ec = ECHistoricalRange(station_id=int(stations.iloc[0,2]), timeframe="daily",
                        daterange=(datetime(2022, 7, 1, 12, 12), datetime(2022, 8, 1, 12, 12)))

ec.get_data()

#yield an XML formated str. 
# For more options, use ec.to_xml(*arg, **kwargs) with pandas options
ec.xml
 
#yield an CSV formated str.
# For more options, use ec.to_csv(*arg, **kwargs) with pandas options
ec.csv

In this example ec.df will be:

Date/Time Longitude (x) Latitude (y) Station Name Climate ID Year Month Day Data Quality Max Temp (°C) Max Temp Flag Min Temp (°C) Min Temp Flag Mean Temp (°C) Mean Temp Flag Heat Deg Days (°C) Heat Deg Days Flag Cool Deg Days (°C) Cool Deg Days Flag Total Rain (mm) Total Rain Flag Total Snow (cm) Total Snow Flag Total Precip (mm) Total Precip Flag Snow on Grnd (cm) Snow on Grnd Flag Dir of Max Gust (10s deg) Dir of Max Gust Flag Spd of Max Gust (km/h) Spd of Max Gust Flag
2022-07-02 -68,47 48,51 POINTE-AU-PERE (INRS) 7056068 2022 7 2 22,8 12,5 17,7 0,3 0 0 26 37
2022-07-03 -68,47 48,51 POINTE-AU-PERE (INRS) 7056068 2022 7 3 21,7 10,1 15,9 2,1 0 0,4 28 50
2022-07-31 -68,47 48,51 POINTE-AU-PERE (INRS) 7056068 2022 7 31 23,5 14,1 18,8 0 0,8 0 23 31
2022-08-01 -68,47 48,51 POINTE-AU-PERE (INRS) 7056068 2022 8 1 23 15 19 0 1 0 21 35

One should note that july 1st is excluded as the time provided contains specific hours, so it yields only data after or at exactly the time provided.

To have all the july 1st data in that case, one can provide a datarange without time: datetime(2022, 7, 7) instead of datetime(2022, 7, 1, 12, 12)

License

The code is available under terms of MIT License

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

env_canada-0.5.33.tar.gz (25.3 kB view details)

Uploaded Source

Built Distribution

env_canada-0.5.33-py3-none-any.whl (25.8 kB view details)

Uploaded Python 3

File details

Details for the file env_canada-0.5.33.tar.gz.

File metadata

  • Download URL: env_canada-0.5.33.tar.gz
  • Upload date:
  • Size: 25.3 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.11.3

File hashes

Hashes for env_canada-0.5.33.tar.gz
Algorithm Hash digest
SHA256 1983217b384dcdb5304c149597ae941954ef2309ac119fce219361485d70c2ae
MD5 23b309d38a3b2956f4b7e8a05ab3192d
BLAKE2b-256 77b1fdc7d3cea380facb5a996ba4561c2a3454fa8f83324d1e81eb4488350111

See more details on using hashes here.

File details

Details for the file env_canada-0.5.33-py3-none-any.whl.

File metadata

  • Download URL: env_canada-0.5.33-py3-none-any.whl
  • Upload date:
  • Size: 25.8 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.11.3

File hashes

Hashes for env_canada-0.5.33-py3-none-any.whl
Algorithm Hash digest
SHA256 d9fce93297a977231b4b30dbdb07b51eb120723210c904e22b9280405c91d706
MD5 8ba6fd7722020feee566e2c4bf473521
BLAKE2b-256 5295e3272bf5a8a974937a9fd48b424b329de8a6461a239d8c8700c28661284a

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page