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U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS- derived variables to characterize urbanization in the National Water- Quality Assessment Program 2006 National Monitoring Conference, San Jose, CA, May 2006 James Falcone jfalcone@usgs. gov

U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

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Page 1: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

U.S. Department of the InteriorU.S. Geological Survey

The use of remotely sensed and GIS-derived variables to characterize urbanization in the National Water-Quality Assessment Program

2006 National Monitoring Conference, San Jose, CA, May 2006

James [email protected]

Page 2: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Presentation Objective

Overview of some data sources, tips, and techniques used in NAWQA urban studies

Perspective generally at the national/regional level

Page 3: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Urbanization

Trend in last decades towards landscape fragmentation (‘sprawl’)

The “Mixing Bowl”, Washington, D.C. Beltway

Continually increasing stressor

Fragmentation argues for understanding spatial pattern as well as intensity

Page 4: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Spatial pattern

A B

C

% impervious surface

low high

Page 5: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

How to measure ‘urbanization’?

We have tried to use traditional methods: Basin or riparian-scale statistics

And ‘value-added’ methods: Landscape pattern metrics Proximity-based metrics Data-source merges Multimetric indexes

Page 6: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Major Sources of Urban Ancillary Data for Ecological Studies

Land cover/imperviousness Roads/transportation Census-derived EPA-regulated sites

e.g. NPDES

Page 7: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Update on NLCD01

USGS National Land Cover Data (NLCD) for ’00-01 time frame Completed zones as of April 18, ‘06 (below) Includes sub-pixel imperviousness and forest canopy layers, in

addition to traditional categorical land cover data Urban classes differ from NLCD92 (“land cover”, not “land use”)

www.mrlc.gov

Page 8: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

NOAA 1-km Imperviousness

NOAA has mapped impervious surface for entire US at 1-km resolution

http://dmsp.ngdc.noaa.gov/html/download_isa2000_2001.html

Page 9: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

0.3-m orthoimagery – USGS 133 cities

http://seamless.usgs.gov

Page 10: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Roads

CENSUS TIGER 2000 roads Entire US; free; consistent Positional accuracy not great But representational accuracy

reasonable Better accuracy roads available

for localized areas

Reston, VA

TIGER 1990 roads not easily available and inconsistent with 2000

Page 11: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Census-derived data

Vast panoply of urban statistics from Census for various geographies (county, tract, block group).

Many Census statistics under-examined e.g. percent homes > 50 years old % homes with incomplete plumbing, etc.

Page 12: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

“Value-added” metrics/techniques: Example 1

merging residential classes from GIRAS

GIRAS

NLCD92-”enhanced”

NAWQA “enhanced” land cover – “improving” NLCD92 by merging with high-confidence classes from other data sources (Hitt, Nakagaki, Price)

Page 13: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Example 2: Distance-weighting by proximity to sampling site or stream

Wolf Creek, Ohio 14% urban “standard” 43% urban “distance-weighted”

Lamington River, NJ14% urban “standard” 12% urban “distance-weighted”

Page 14: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Urban Index (entire session on this method Tuesday PM)

Used by NAWQA Effects of Urbanization on Stream Ecosystems (EUSE) Program (and others)

Combining multiple urban variables in a single “urban intensity” metric

Most consistent correlation to population density across geographic settings: Road density % urban land cover Housing unit density

Page 15: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Vexing Issues Often Overlooked or Under-considered

Scale – what is the appropriate scale of ancillary data for your project? Is a 1-km pixel “too coarse” for a 5-km2 basin?

Accuracy – what is “good enough” accuracy? Should you use land cover classes that are only 60% accurate? How about 40%?

Currency – how old is “too old”? Loudoun County, VA exploded in population by 100% between 1990 and 2000 – should you use 1990 land cover to evaluate stream sampling done in 2004?

Page 16: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Summary

Both “traditional” and “non-traditional” metrics may add explanatory information

Roads powerful driver in process and generally consistent over broad areas

Some data/metrics may be better representations of “process” vs “structure”

Important considerations of scale, accuracy, and currency should drive data collection.

Acquiring consistent geospatial time-series data a significant issue

Page 17: U.S. Department of the Interior U.S. Geological Survey The use of remotely sensed and GIS-derived variables to characterize urbanization in the National

Portland by night