A package for retrieving data concerning forests on the European continent.
Project description
forest_puller
version 1.1.2
forest_puller
is a python package for retrieving data concerning forests on the European continent. This includes forest growth rates, amount of forested areas and forest inventory (standing stock).
There are several public data sources that are accessible online to retrive this type of information. This package will automate the process of scrapping these website and parsing the resulting excel files.
Once forest_puller
is installed you can easily access forest data through standard pandas data frames.
Scope
Currently forest_puller
provides data for the following 26 member states:
- Austria, Belgium, Bulgaria, Croatia, Czech Republic, Denmark, Estonia, Finland, France, Germany, Greece, Hungary, Ireland, Italy, Latvia, Lithuania, Luxembourg, Netherlands, Poland, Portugal, Romania, Slovakia, Slovenia, Spain, Sweden, United Kingdom
Installing
forest_puller
is a python package and hence is compatible with all operating systems: Linux, macOS and Windows. Once python 3 is installed on your computer, if it is not already, simply type the following on your terminal:
$ pip3 install --user forest_puller
Or if you want to install it for all users of the system:
$ sudo pip3 install forest_puller
Usage
For instance to retrieve the net carbon dioxide emission of Austria in 2017 that were due to coniferous forest land from the IPCC official data source, you can do the following:
# Import #
from forest_puller.ipcc.country import countries
# Get the country #
austria = countries['AT']
# Get the 2017 indexed dataframe #
at_2017 = austria.years[2017].indexed
# Print some data #
print(at_2017.loc['remaining_forest', 'Coniferous']['net_co2'])
904282.4970403439
To see what information is available you can of course display the column titles and row indexes of that data frame:
print(at_2017.columns)
# Index(['area', 'area_mineral', 'area_organic', 'biomass_gains_ratio',
# 'biomass_losses_ratio', 'biomass_net_change_ratio', 'net_dead_ratio',
# 'net_litter_ratio', 'net_mineral_soil_ratio', 'net_organic_soil_ratio',
# 'biomass_gains', 'biomass_losses', 'biomass_net_change', 'net_dead',
# 'net_litter', 'net_mineral_soils', 'net_organic_soils', 'net_co2'],
# dtype='object', name='category')
print(at_2017.index)
# MultiIndex(levels=[['cropland_to_forest', 'grassland_to_forest',
# 'land_to_forest', 'other_land_to_forest', 'remaining_forest',
# 'settlements_to_forest', 'total_forest', 'wetlands_to_forest'],
# ['', 'Coniferous', 'Deciduous', 'Forest not in yield', 'Total']])
To examine what countries and what years are available:
print(list(c.iso2_code for c in countries.values()))
# ['AT', 'BE', 'BG', 'HR', 'CZ', 'DK', 'EE', 'FI', 'FR', 'DE', 'GR',
# 'HU', 'IE', 'IT', 'LV', 'LT', 'LU', 'NL', 'PL', 'PT', 'RO', 'SK', 'SI',
# 'ES', 'SE', 'GB', 'ZZ']
print(list(y for y in austria.years))
# [1990, 1991, 1992, 1993, 1994, 1995, 1996, 1997, 1998, 1999, 2000,
# 2001, 2002, 2003, 2004, 2005, 2006, 2007, 2008, 2009, 2010, 2011, 2012,
# 2013, 2014, 2015, 2016, 2017]
To get a large data frame with all years and all countries inside:
from forest_puller.ipcc.concat import df
print(df)
Cache
When you import forest_puller
, we will check the $FOREST_PULLER_CACHE
environment variable to see where to download and store the cached data. If this variable is not set, we will default to the platform's temporary directory and clone a repository there.
Data sources
IPCC
To access the same forest data directly from the IPCC without forest_puller
you would have to first select your country from the CRF country table in a browser at this address.
Then you would have to manually download the zip file for that specific country through another page.
Next, you would have to uncompress the zip file and locate the xls file that concerns the year you are interested in.
Finally you would have to scroll to the right sheet in your spreadsheet software and find the pertinent cell.
This operation would have to be repeated for every country, and every year you are interested in.
With forest_puller
you can easily display any information you want for all countries at the same time:
from forest_puller.ipcc.country import countries
category, key = ['total_forest', 'biomass_net_change']
biomass_net_change = {
k: c.last_year.indexed.loc[category, ''][key]
for k,c in countries.items()
}
import pprint
pprint.pprint(biomass_net_change)
{'AT': 1367857.0940855271,
'BE': 374245.08695361385,
'BG': 2192942.031982918,
'CZ': 387870.89395249996,
'DE': 12317598.87352293,
'DK': -216454.31026543948,
'EE': 320710.2459538891,
'ES': 8917649.261547482,
'FI': 6603815.0,
'FR': 15051831.9827214,
'GB': 2892518.0859005335,
'GR': 583205.0978272819,
'HR': 1477791.7578513895,
'HU': 1259385.5890665338,
'IE': 1069648.7636722159,
'IT': 5752883.095908434,
'LT': 2146933.309581986,
'LU': 101929.37461705346,
'LV': 1244965.2120000012,
'NL': 499021.93968,
'PL': 9353198.2907701,
'PT': 1536917.4736652463,
'RO': 5561343.4405591395,
'SE': 10185839.738999998,
'SI': 35391.09710503432,
'SK': 1184611.3471376207}
Forest Europe (SOEF)
This data is provided by the Ministerial Conference on the Protection of Forests in Europe and is accessible at: https://dbsoef.foresteurope.org/
Three tables are provided for every country:
- Table 1.1a: Forest area
- Table 1.3a1: Age class distribution (area of even-aged stands)
- Table 3.1: Increment and fellings
It is accessed in a similar way to other data sources:
from forest_puller.soef.country import countries
country = countries['AT']
print(country.forest_area.indexed)
print(country.age_dist.indexed)
print(country.fellings.indexed)
There is also a large data frame containing all countries concatenate together:
from forest_puller.soef.concat import tables
print(tables['forest_area'])
print(tables['age_dist'])
print(tables['fellings'])
Faostat
Will be added soon.
Diabolo
Will be added soon.
Project details
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