Showing posts with label LPB. Show all posts
Showing posts with label LPB. Show all posts

Thursday, September 12, 2013

Critical Planning and Analysis using GIS for WiSAR


By Don Ferguson 
dferguson@mix.wvu.edu

Wilderness search and rescue is understood to be an inherently spatial problem which is relative to both the subject and searcher.  From the standpoint of the subject, many decisions that are made before and after becoming lost or injured are influenced by the terrain and the environment.  These decisions may be either conscious (active) or sub-conscious (passive), and in many ways are driven by both time and space.  In WiSAR related to lost persons, it is the decisions that were made by the subject that resulted in them becoming lost.  Studies on lost person behavior have allowed searchers to categorize individuals that exhibit similar behaviors when they become lost.  These categorical behaviors are observed by plotting Initial Planning Points (Point Last Seen or Last Known Point) and Find locations then extracting information about the terrain and observing trends in the data.  When combined with a critical analysis on the influence of terrain and environment (T & E) on a specific individual, geospatial trends in lost person behavior provide valuable information that could reduce the time taken to locate a lost subject.

Integrated Geospatial Tools for Search and Rescue (IGT4SAR) is a dynamic tool developed to take advantage of using Geographic Information Systems to model lost person behavior and provide a critical analysis on the influence of T & E.  The primary advantage of a GIS is that it allows a user to interact with spatial data and even create new data from existing information, for example estimating cellular coverage across the search area using a digital elevation model and cell tower attributes.  No more is a search analyst limited to extracting information from a printed, topographical map that is most likely outdated.

WiSAR operations that involve a lost subject are plagued with uncertainty.  Where did the subject leave the trail, or is the object found by a search team an actual clue related to the lost subject?  In order to deal with the cognitive complexity of all this uncertainty search analysts often resort to developing scenarios, or hypotheses, to describe what is believed to have happened to the lost subject.  These scenarios provide justification for applying resources to specific geographical locations.  This is critical as lost person searches often cover large geographical areas and have few resources with which to search.  Thus a method is required to assist in prioritizing the search area otherwise the search effort is limited to merely purposeful wandering which is typically less effective than targeted searching.  Among other functions, GIS allows analysts a way to “play-out” various scenarios to determine what is possible and likely. 

Several Lost Person Behavioral models are built directly into IGT4SAR, for example using data provided in Robert Koester’s text on Lost Person Behavior, concentric rings are automatically drawn around the IPP based on subject category that represent the recorded distances to find locations of similar individuals.  Similarly, a Track Offset Model provides a visual representation of how far from a linear feature such as a trail or road in which the subject was found.  The Find Locations tool provides a means of re-classifying spatial data such as roads, trails and hydrology vector data along with a land cover surface raster to display the typical types of features where similar subject were found.

Expanding on the concept of reclassifying raster data, a similar approach is used to create a Least Cost Path Surface that represent the potential subject mobility, or distance travelled, over a period of time.  This model takes terrain features such as slope, access to travel aides (roads, trails, etc) and barriers (bodies of water) along with land cover to estimate how far a subject could have traveled over a given period of time.  Analysis of historical data from Yosemite National Park suggested subjects (predominately hiker category) did not travel more than 1.5 hours walking distance from the IPP.  Know this information could drastically reduce your search area. See Jared Doke's MS Thesis for more on this study. 

Combining these estimates together with specific information you know about the subject and the local T & E, an analyst can “play-out” various scenarios to see what makes sense and assist is assigning a probability of most likely occurrence to the various regions.   This ultimately leads to a Probability Density plot of the search area.   While assigning numerical values in the form of Probability to various regions of the search area may be slightly misleading as it gives the impression that a rigorous quanitfied analysis has been done as opposed to the qualified (Bayesian) analysis, the numerical values allow for easier tracking of progress within the search area in the form of Probability of Detection and Probability of Success.  While to some this may sound complex, GIS is well equipped for handling these types of analysis and these concepts are built into the functionality of IGT4SAR.

To learn more about Integrated Geospatial Tools for Search and Rescue (IGT4SAR) and for using GIS for critical analysis and planning of lost person incidents subscribe to the YouTube videos at:



If you have development skills or are a GIS Specialist and would like to test these tools please see the GitHub Repo: https://github.com/dferguso/MapSAR_Ex

Tuesday, June 18, 2013

Collecting and Analyzing Missing Person Data for Alzheimer Patients in British Columbia

As part of my project for my GIS Certificate at the University of the Fraser Valley, I was required to complete a project of my choosing. As a SAR Manager for Ridge it only seemed natural to work on something that hopefully would be of some use and interest to the SAR community.

With Robert Koester’s book Lost Person Behavior and the ISRID database as a starting point, I looked at the information available from the local SAR teams in my area (southwestern British Columbia).

One team in particular, Surrey Search and Rescue, performs a large number of searches for missing Dementia subjects. Between Surrey SAR, Coquitlam SAR, and Ridge Meadows SAR I was able to gather the results of 51 searches spanning the years 2001 to 2012.

Using ESRI’s ArcMap 10.1 (see www.mapsar.net for more info), I plotted the PLS and Found locations of these subjects and from that, calculated their mean distance travelled as well as the over-all mean direction of travel. This data is based on searches that occur in the urban setting of a Westcoast Canadian city. Given more time and resources, a study of several diverse Canadian cities may yield results that differ from or are similar to the outcome of this project.

These types of searches are perhaps the most frustrating for a SAR team. With more studies like this and a well-populated database such as the ISRID database, SAR Managers may have one more tool to assist them in bringing about a successful conclusion to a difficult task.

I would like to acknowledge the guidance from my professor, Dr. Scott Shupe for making most of this course understandable and enjoyable.

- Rick Laing
rmsarmanager@gmail.com

Stay tuned for a similar study from Yosemite National Park!



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