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Readers for the data from the International Soil Moisture Database

Project description

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Readers for the data from the International Soil Moisture Database (ISMN).

Documentation

The full documentation is available at https://ismn.readthedocs.io and includes a tutorial on reading ISMN data in python after downloading it from https://ismn.earth

The following tutorials are available in docs/examples:

1) ISMN reader basic functionality

2) Adding custom metadata readers

Citation

https://zenodo.org/badge/DOI/10.5281/zenodo.855308.svg

If you use the software in a publication then please cite it using the Zenodo DOI. Be aware that this badge links to the latest package version.

Please select your specific version at https://doi.org/10.5281/zenodo.855308 to get the DOI of that version. You should normally always use the DOI for the specific version of your record in citations. This is to ensure that other researchers can access the exact research artefact you used for reproducibility.

You can find additional information regarding DOI versioning at http://help.zenodo.org/#versioning

Installation

This package should be installable through pip:

pip install ismn

Optional dependencies

The cartopy and matplotlib packages are only needed when creating data visualisations. They can be installed separately with:

conda install -c conda-forge matplotlib
conda install -c conda-forge cartopy

Example installation script

The following script will install miniconda and setup the environment on a UNIX like system. Miniconda will be installed into $HOME/miniconda.

wget https://repo.continuum.io/miniconda/Miniconda-latest-Linux-x86_64.sh -O miniconda.sh
bash miniconda.sh -b -p $HOME/miniconda
export PATH="$HOME/miniconda/bin:$PATH"
git clone git@github.com:TUW-GEO/ismn.git ismn
cd ismn
conda env create -f environment.yml
source activate ismn

This script adds $HOME/miniconda/bin temporarily to the PATH to do this permanently add export PATH="$HOME/miniconda/bin:$PATH" to your .bashrc or .zshrc

The second to last line in the example activates the ismn environment.

After that you should be able to run:

pytest

to run the test suite.

Description

ISMN data can be downloaded for free after creating an account on the ISMN Website

ISMN data can be downloaded in two different formats:

  • Variables stored in separate files (CEOP formatted)

    this format is supported 100% and should work with all examples

  • Variables stored in separate files (Header+values)

    this format is supported 100% and should work with all examples

If you downloaded ISMN data in one of the supported formats in the past it can be that station names are not recognized correctly because they contained the ‘_’ character which is supposed to be the separator. If you experience problems because of this please download new data from the ISMN since this issue should be fixed.

Landcover Classification

The ISMN data comes with information about landcover classification from the ESA CCI land cover project (years 2000, 2005 and 2010) as well as from in-situ measurements. To use ESA CCI land cover variables for filtering the data in the get_dataset_ids function, set the keyword parameters (landcover_2000, landcover_2005 or landcover_2010) to the corresponding integer values (e.g. 10) in the list below. To get a list of possible values for filtering by in-situ values (keyword parameter: “landcover_insitu”), call the get_landcover_types method of your ISMN_Interface object and set landcover=’landcover_insitu’.

  • 10: Cropland, rainfed

  • 11: Cropland, rainfed / Herbaceous cover

  • 12: Cropland, rainfed / Tree or shrub cover,

  • 20: Cropland, irrigated or post-flooding,

  • 30: Mosaic cropland (>50%) / natural vegetation (tree, shrub, herbaceous,

  • 40: Mosaic natural vegetation (tree, shrub, herbaceous cover) (>50%) / cropland (<50%),

  • 50: Tree cover, broadleaved, evergreen, Closed to open (>15%),

  • 60: Tree cover, broadleaved, deciduous, Closed to open (>15%),

  • 61: Tree cover, broadleaved, deciduous, Closed (>40%),

  • 62: Tree cover, broadleaved, deciduous, Open (15-40%),

  • 70: Tree cover, needleleaved, evergreen, closed to open (>15%),

  • 71: Tree cover, needleleaved, evergreen, closed (>40%),

  • 72: Tree cover, needleleaved, evergreen, open (15-40%),

  • 80: Tree cover, needleleaved, deciduous, closed to open (>15%),

  • 81: Tree cover, needleleaved, deciduous, closed (>40%),

  • 82: Tree cover, needleleaved, deciduous, open (15-40%),

  • 90: Tree cover, mixed leaf type (broadleaved and needleleaved),

  • 100: Mosaic tree and shrub (>50%) / herbaceous cover (<50%),

  • 110: Mosaic herbaceous cover (>50%) / tree and shrub (<50%),

  • 120: Shrubland,

  • 121: Shrubland / Evergreen Shrubland,

  • 122: Shrubland / Deciduous Shrubland,

  • 130: Grassland,

  • 140: Lichens and mosses,

  • 150: Sparse vegetation (tree, shrub, herbaceous cover) (<15%),

  • 152: Sparse vegetation (tree, shrub, herbaceous cover) (<15%) / Sparse shrub (<15%),

  • 153: Sparse vegetation (tree, shrub, herbaceous cover) (<15%) / Sparse herbaceous cover (<15%),

  • 160: Tree cover, flooded, fresh or brakish water,

  • 170: Tree cover, flooded, saline water,

  • 180: Shrub or herbaceous cover, flooded, fresh/saline/brakish water,

  • 190: Urban areas,

  • 200: Bare areas,

  • 201: Consolidated bare areas,

  • 202: Unconsolidated bare areas,

  • 210: Water,

  • 220: Permanent snow and ice,

Climate Classification

The ISMN data comes with information about climate classification from the Koeppen-Geiger Climate Classification (2007) as well as in-situ measurements. To use Koeppen-Geiger variable for filtering the data in the get_dataset_ids function, set the keyword parameter “climate” to the corresponding keys (e.g. ‘Af’) in the list below. To get a list of possible values for filtering by in-situ values (keyword parameter: “climate_insitu”), call the get_climate_types method of your ISMN_Interface object and set climate=’climate_insitu’.

  • Af: Tropical Rainforest

  • Am: Tropical Monsoon

  • As: Tropical Savanna Dry

  • Aw: Tropical Savanna Wet

  • BWk: Arid Desert Cold

  • BWh: Arid Desert Hot

  • BWn: Arid Desert With Frequent Fog

  • BSk: Arid Steppe Cold

  • BSh: Arid Steppe Hot

  • BSn: Arid Steppe With Frequent Fog

  • Csa: Temperate Dry Hot Summer

  • Csb: Temperate Dry Warm Summer

  • Csc: Temperate Dry Cold Summer

  • Cwa: Temperate Dry Winter, Hot Summer

  • Cwb: Temperate Dry Winter, Warm Summer

  • Cwc: Temperate Dry Winter, Cold Summer

  • Cfa: Temperate Without Dry Season, Hot Summer

  • Cfb: Temperate Without Dry Season, Warm Summer

  • Cfc: Temperate Without Dry Season, Cold Summer

  • Dsa: Cold Dry Summer, Hot Summer

  • Dsb: Cold Dry Summer, Warm Summer

  • Dsc: Cold Dry Summer, Cold Summer

  • Dsd: Cold Dry Summer, Very Cold Winter

  • Dwa: Cold Dry Winter, Hot Summer

  • Dwb: Cold Dry Winter, Warm Summer

  • Dwc: Cold Dry Winter, Cold Summer

  • Dwd: Cold Dry Winter, Very Cold Winter

  • Dfa: Cold Dry Without Dry Season, Hot Summer

  • Dfb: Cold Dry Without Dry Season, Warm Summer

  • Dfc: Cold Dry Without Dry Season, Cold Summer

  • Dfd: Cold Dry Without Dry Season, Very Cold Winter

  • ET: Polar Tundra

  • EF: Polar Eternal Winter

  • W: Water

Contribute

We are happy if you want to contribute. Please raise an issue explaining what is missing or if you find a bug. We will also gladly accept pull requests against our master branch for new features or bug fixes.

Development setup

For Development we also recommend a conda environment. You can create one including test dependencies and debugger by running conda env create -f environment.yml. This will create a new ismn environment which you can activate by using conda activate ismn.

Guidelines

If you want to contribute please follow these steps:

  • Fork the ismn repository to your account

  • Clone the repository

  • make a new feature branch from the ismn master branch

  • Add your feature

  • Please include tests for your contributions in one of the test directories. We use pytest so a simple function called test_my_feature is enough

  • submit a pull request to our master branch

Code Formatting

To apply pep8 conform styling to any changed files [we use yapf](https://github.com/google/yapf). The correct settings are already set in setup.cfg. Therefore the following command should be enough:

yapf file.py –in-place

Release new version

To release a new version of this package, make sure all tests are passing on the master branch and the CHANGELOG.rst is up-to-date, with changes for the new version at the top.

Then draft a new release at https://github.com/TUW-GEO/ismn/releases. Create a version tag following the v{MAJOR}.{MINOR}.{PATCH} pattern. This will trigger a new build on GitHub and should push the packages to pypi after all tests have passed.

If this does not work (tests pass but upload fails) you can download the whl and dist packages for each workflow run from https://github.com/TUW-GEO/ismn/actions (Artifacts) and push them manually to https://pypi.org/project/ismn/ (you need to be a package maintainer on pypi for that).

In any case, pip install ismn should download the newest version afterwards.

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