Skip to main content

Python toolbox enabling an open source gSSURGO workflow

Project description

gssurgo

PyPiVersion Project Status: Active - The project has reached a stable, usable state and is being actively developed. PYPI Downloads Build Status Code DOI

The gssurgo python package enables open source workflows with the gSSURGO dataset. It provides:

  • A shell script extract_gssurgo_tif for generating stand-alone gSSURGO grids. These raster grids are distributed within file geodatabase archives and can only be extracted using ArcGIS, the fileGDB driver, or (in the case of extract_gssurgo_tif) the arcpy python package.

  • Python functions for converting Geodatabase files to geopackage format.

  • Python functions for returning the results of specific SQL queries of gSSURGO data.

  • Python functions for referencing query results to corresponding (raster) grid cells.

Prereqs

  • The intial tif (grid) extraction step requies the arcpy python module. This step assumes that a python executable linked to arcpy can be found at C:\Python27\ArcGIS10.3\python.exe. Edit bin/extract_gssurgo_tif to enable alternate locations.

  • Remaining operations require the dependencies listed in environment.yml and requirements.txt. If using Anaconda, make sure you have the 64bit version. You can install an Anaconda virtual environment with:

conda env create -n gssurgo -f environment.yml
source activate gssurgo

Installation

# local install
# pip install -e  . 

# development install 
pip install git+git://github.com/jsta/gssurgo.git

# development upgrade
# pip install --upgrade git+git://github.com/jsta/gssurgo.git

Usage

A demonstration workflow using the gssurgo python package can be found at: https://github.com/jsta/gssurgo_data

1. Extract tif and build gpkgs

extract_gssurgo_tif 'path/to/gSSURGO_STATE.gdb/MapunitRaster_10m' 'path/to/STATE.tif'
import gssurgo
gssurgo.build_gpkg("path/to/gSSURGO_STATE.gdb", "path/to/gSSURGO_STATE.gpkg")

2. Generate an Area of Interest (AOI)

gssurgo.aoi(in_raster_path = "tifs", out_raster = "path/to/aoi.tif", xmax = -88.34945, xmin = -88.35470, ymin = 38.70095, ymax = 38.70498)

3. Pull specific variable and merge with corresponding tif

gssurgo.query_gpkg(src_tif = "tests/aoi.tif", gpkg_path = "path/to/gkpgs/", sql_query = 'SELECT mukey, nonirryield_r FROM mucropyld WHERE (cropname = "Corn")', out_raster = "tests/aoi_results.tif")

gssurgo.query_gpkg(src_tif = "tests/aoi.tif", gpkg_path = "path/to/gpkgs/", sql_query = 'SELECT mukey, nonirryield_r FROM mucropyld WHERE (cropname = "Corn")', out_raster = "tests/aoi_results.tif")

The sql_query parameter must give a two column result of mukey and some_variable where no mukey entries are duplicated.

4. Visualize output

gssurgo.viz_numeric_output("path/to/aoi_results.tif", "path/to/aoi_results.png")

Project details


Download files

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

Source Distribution

gssurgo-1.0.1.tar.gz (3.3 MB view hashes)

Uploaded Source

Built Distribution

gssurgo-1.0.1-py3-none-any.whl (3.3 MB view hashes)

Uploaded Python 3

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