Sep 13, 2017 at 9:19 p.m.
Resource type: Composite Resource
Administrative Units for three African countries with WPDx data coverage from http://www.gadm.org
Sep 13, 2017 at 4:06 p.m.
Resource type: Collection Resource
Geospatial tools and visualization is needed to develop a data and model integration pipeline for assessing landslide hazards. This project is one component of multi-hazard (earthquake, flood, tsunami) assessment in watersheds spanning mountain peaks to coastal shores. A common challenge in interpreting and validating distributed models is in comparing these data to direct observations on the ground. Modeling data of landslides for regional planning intentionally cover large regions and many landslides, incorporating different temporal and spatial sampling frequency and stochastic processes than observations derived from landslide inventories developed in the field. This kind of analysis requires geospatial tools to enable visualization, assessment of spatial statistics and extrapolation of spatial data linked to hierarchical relationships, such as downstream hydrologic impacts.
Landslide geohazards can be identified through numerous methods, which are generally grouped into quantitative (e.g., Hammond et al. 1992; Wu and Sidle 1995) and qualitative (e.g., Gupta and Joshi 1990; Carrara et al. 1991; Lee et al. 2007) approaches. Mechanistic process-based models based on limited equilibrium analysis can quantify the roles of topography, soils, vegetation, and hydrology (when coupled with a hydrologic model) in landsliding in quantitative forms (Montgomery and Dietrich 1994; Miller 1995; Pack et al. 1998). Processed-based models are good for predicting the initiation of landslides even where landslide inventories are lacking, but missed predictions likely stem from parameter uncertainty and unrepresented processes in model structure implicitly captured in qualitative approaches. A common qualitative approach develops landslide susceptibility based on experts rating multiple landscape attributes. These approaches provide general indices rather than quantified probabilities of relative landslide susceptibility applicable to the study location and cannot represent causal factors or triggering conditions that change in time (van Western et al. 2006). Both approaches rarely provide a probabilistic hazard in space and time, requisite for landslide risk assessments beneficial for planning and decision making (Smith 2013).
This project will start the groundwork to integrate numerical modeling developed by University of Washington with qualitative assessments of landslide susceptibility performed by Washington Department of Natural Resources.
Oct 18, 2016 at 7:19 p.m.
Resource type: Collection Resource
Geohackweek is a 5-day workshop (November 14-18, 2016) held at the University of Washington eScience Institute. Participants came to the program with experience with Python programming and analysis of geospatial data (e.g. remote sensing analysis, vector mapping, environmental modeling, etc,) and learn more about open source technologies used to analyze geospatial datasets. The Freshwaterhack includes a subset of the geohack projects that are related to hydrology, hydrologic modeling, and water resources in order to support open source tool development and data sharing and catalyze water research that can be translated to national and global scales. The Freshwaterhack is facilitated by a collaborative network of Freshwater Science and Engineering coordinated by the Mountain to Sea Strategic Research Initiative, supported by UW College of Engineering, UW College of the Environment, and UW Tacoma.
Visit the Github respoitory at https://github.com/geohackweek/geohackweek.github.io for more information.
|Type||Title||First Author||Date Created||Last Modified||Subject||Authors||Permission Level||Labels||Favorite||Last modified||Sharing Status||Date Created|
|Composite Resource||Haackwell Groundwater Geohackweek Project 2017||Jimmy Phuong||13 Sep, 2017 6:50 p.m.||21 Nov, 2017 3:51 a.m.||1511236314||1505328610||259|
|Collection Resource||Freshwaterhack Project: Data integration for multi-hazard risk assessment||RECEP CAKIR||26 Oct, 2016 11:21 p.m.||13 Sep, 2017 4:04 p.m.||1505318676||1477524085||259|
|Collection Resource||Freshwaterhack of UW Geohackweek||Christina Bandaragoda||18 Oct, 2016 7:14 p.m.||23 Nov, 2016 9:55 p.m.||1479938134||1476818073||259|