1 / 22

SCGIS Hands-on Workshop: Introduction to GIS for Habitat Analysis and Home Range Estimation

SCGIS Hands-on Workshop: Introduction to GIS for Habitat Analysis and Home Range Estimation. Sadie Ryan, UC Berkeley. What is GIS?. Geographic Information System – object often uses software Geographic Information Science – discipline Blueprint of a house – simplest GIS

tex
Download Presentation

SCGIS Hands-on Workshop: Introduction to GIS for Habitat Analysis and Home Range Estimation

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. SCGIS Hands-on Workshop: Introduction to GIS for Habitat Analysis and Home Range Estimation Sadie Ryan, UC Berkeley

  2. What is GIS? • Geographic Information System – object • often uses software • Geographic Information Science – discipline • Blueprint of a house – simplest GIS • Important qualities: • Overlay operations • Map equations in layers • Spatial relationships • point to point • Ancillary data • data associated with locations • Points vs. Grids

  3. Jargon • Geospatial/Georeferenced – spatial data that has been located in reference to a standard coordinate system for the Earth (e.g. longitude, latitude) • Projection – system for transforming a known location on the non-flat earth to a flat plane – this is extremely important for manipulation of areas – a circle drawn on a lat/long earth is not a circle, unless you make it infinitely small at the equator.

  4. How do we collect spatial data? • Radio collars

  5. How do we collect spatial data? • Direct observation and paper maps • Museum records of collection locations

  6. How do we collect spatial data? • GPS • Collars/patches that upload • Handheld records of indicators • – scat, tracks • Remotely sensed data • Satellite imagery • Vegetation, landcover, climate • Aerial photgraphy • Radar etc.

  7. How do we use spatial data? • Home ranges • Habitat selection • Biogeography questions

  8. Home range methods • Traditional: Minimum Convex Polygon (MCP) • Join the outermost points together • Useful for delineating overall area used – useful for conservation and reserve design with sparse data • You can use just 95% of points to define error, but no clear selection method for it • Assumes animals are using the whole area equally

  9. Home range methods • Kernel methods • Smoothing of points, predicts likelihood of occurrence, even beyond points • Shows areas of higher and lower densities – useful to define key areas like feeding grounds • Similar assumption of whole area use; no holes • Alarming property of increasing as you add data • Harmonic Mean • Accents areas of higher density • Similar to Kernel methods • Local convex hull method – LoCoH • More data needs newer methods (GPS data is huge) • Good for ID of non-use areas • Allows for physical barriers to movement Adaptive Kernel Harmonic mean

  10. 1 Buffalo Herd, 4085 locations in 2000

  11. 1 Buffalo Herd, 4085 locations in 2000 MCP Minimum Convex Polygon

  12. 1 Buffalo Herd, 4085 locations in 2000 Kernel Method 95% 50% Default Smoothing H

  13. 1 Buffalo Herd, 4085 locations in 2000 k-NNCH Nearest Neighbor Convex Hull (Getz & Wilmers, 2004) k=5 neighbors shown

  14. 1 Buffalo Herd, 4085 locations in 2000 k-NNCH Nearest Neighbor Convex Hull (Getz & Wilmers, 2004) k=20 neighbors shown

  15. Habitat Selection methods • Points on a map • Points are then associated with location-specific data • e.g. vegetation type, distance from water, slope, elevation, aspect, soil type etc. • Many different statistical analyses of results • Demo of simple proportional occurrence • Buffalo and vegetation type, distance to water

  16. Study Site

  17. Study Site Kruger National Park Klaserie Private Nature Reserve 1993-2000 3 herds

  18. Selected type 2 and 5, and not 3 and 8 • A. nigrescens and Grewia sp.: open woodland • Mixed Acacia sp.: shrubveld • Mixed woodland • C. apiculatum, S. birrea: open woodland; • C. apiculatum, S. caffra, Grewia sp.: short woodland • C. apiculatum, C. mollis, Grewia sp.: closed short woodland • C. apiculatum, C. mopane: woodland • C. mopane: woodland and shrubveld Habitat Selection: Vegetation Type

  19. Hawth’s tools is a free extension: www.spatialecology.com

More Related