Skip to content
/ AGILECA Public

Cellular Automaton model for wildfire spread prediction on DGGS data model

License

Notifications You must be signed in to change notification settings

am2222/AGILECA

Repository files navigation

Integrating cellular automata and discrete global grid systems: a case study into wildfire modelling

Author: The Spatial lab

Date: 11/20/2019

Binder

Abstract

With new forms of digital spatial data driving new applications for monitoring and understanding environmental change, there are growing demands on traditional GIS tools for spatial data storage, management and processing. Discrete Global Grid System (DGGS) are methods to tessellate globe into multiresolution grids, which represent a global spatial fabric capable of storing heterogeneous spatial data, and improved performance in data access, retrieval, and analysis. While DGGS-based GIS may hold potential for next-generation big data GIS platforms, few of studies have tried to implement them as a framework for operational spatial analysis. Cellular Automata (CA) is a classic dynamic modeling framework which has been used with traditional raster data model for various environmental modeling such as wildfire modeling, urban expansion modeling and so on. The main objectives of this paper were to (i) investigate the possibility of using DGGS for running dynamic spatial analysis, (ii) evaluate CA as a generic data model for dynamic phenomena modeling within a DGGS data model and (iii) evaluate an in-database approach for CA modelling. To do so, a case study into wildfire spread modelling is developed. Results demonstrate that using a DGGS data model not only provides the ability to integrated different data sources, but also provides a framework to do spatial analysis without using geometry-based analysis. This results in a simplified architecture and common spatial fabric to support development of a wide array of spatial algorithms. While considerable work remains to be done, CA modelling within a DGGS-based GIS is a robust and flexible modelling framework for big-data GIS analysis in an environmental monitoring context.

Key Words: DGGS, Discrete Global Grid System, Cellular Automaton, Wildfire

DOI

One-click execution

This repo can be opened directly in Binder

Click on Binder and wait untill binder loads the docker. Then from menu on top right click on new and select r studio. in the next step from files panel on right side of R studio click and run run-model.Rproj and then run run-model.Rmd.

What does it do

Due to the limitation on uploading data and framework only a portion of data is uploaded on this project. As a result you will not get the similar outputs as described on the paper. The following parts are included in this repository.

  • Sensitivity Analysis for diffrent parameters Sample Output
  • Model output for the first 25 itteration. Sample Output

Data and Software Availability

To run the CA model several software packages were used; R (R Core Team 2019); Dplyr (Wickham et al. 2019) and dggridR (Barnes 2018). Table 1 also shows the different datasets, which were used for wildfire spread modelling. These data were converted into the DGGS data model and stored in the database table structure. A Netezza IBM database engine was used as big geo data storage platform, however any relational database system could be used. Currently, due to security-related issues it is not possible to share any connection to this database application. For this reason, a small portion of the data, which is used to run the model, is stored as CSV data format with a working script, which are accessible in the following GitHub repository: https://github.com/am2222/AGILECA

number Dataset Resolution (spatial/temporal) Retrieved parameters Source/ Licence
1 Nasa Active fire data (VNIIRS) approximate spatial resolution of 350m/ daily Active fire data used for starting fire points https://earthdata.nasa.gov/earth-observation-data/near-real-time/firms/active-fire-data NRT VIIRS 375 m Active Fire product VNP14IMGT. Available on-line [https://earthdata.nasa.gov/firms]. doi: 10.5067/FIRMS/VIIRS/VNP14IMGT.NRT.001. Free to the user community.
2 Copernicus Climate data spatial resolution of these data is 0.1 degree / 1 hour climate data including wind speed and wind direction data https://cds.climate.copernicus.eu/cdsapp#!/dataset/reanalysis-era5-land?tab=overview DOI: 10.24381/cds.e2161bac
3 Canada Dem 0.0002 degree spatial resolution Elevation https://open.canada.ca/data/en/dataset/7f245e4d-76c2-4caa-951a-45d1d2051333 Open Government Licence - Canada
4 National land cover dataset 0.0002 degree spatial resolution Land Cover https://www.nrcan.gc.ca
5 Landsat 8 Data (2016/05/03-2016/05/05-2016/05/12) 30 meters / 16 days True color band composition to extract fire boundary https://www.usgs.gov/landsat Landsat-7 image courtesy of the U.S. Geological Survey

References

This project is licensed under Apache License, Version 2.0, see file LICENSE.

Base Repository

This repositoy is forked from original repository at https://github.com/nuest/sensebox-binder/.

About

Cellular Automaton model for wildfire spread prediction on DGGS data model

Topics

Resources

License

Stars

Watchers

Forks

Packages

No packages published