Advantages of Geographically Weighted Regression for Modeling Substrate in Streams Ken Sheehan West...

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Transcript of Advantages of Geographically Weighted Regression for Modeling Substrate in Streams Ken Sheehan West...

Advantages of Geographically Weighted Regression for Modeling

Substrate in Streams

Ken Sheehan

West Virginia University

Dept. of Wildlife & Fisheries

June 9th, 2010

Establishment of Need

• Habitat Study and Assessment– Integral to (overall) stream health– Management (present and future)– Fish and aquatic organism health– Needs improvement

• Non-spatial analysis typically used

• Assessment is an Expensive Endeavor

Spatial Data and Streams

Commonly Collected Variables – Substrate– Flow– Depth

• Spatial autocorrelation (Legendre 1993)• Red herring (Diniz 2003)• Or effective new tool ?

• Let’s use it to our advantage…

• Geographically Weighted Regression

Flow DirectionSubstrate

DepthFlow

Traditional Linear Regression…

Fitting a line to a stream variable data set– Assumes homoskedacity

• Static (flat variance)

– Great for predicting relationships– Heavily used, perhaps most dominant type

of statistical analysis in environmental and other fields

• Classic examination of observed versus expected

• Independent variables to predict dependent variables

Geographically Weighted Regression

• Fotheringham and Brunsden (1998)

• Modification of linear regression formula to include spatial attributes of data.

Standard regression formula

GWR regression formula

Depth +

= Substrate?Flow +

`Study Sites

• Research on Grayling and Wapiti Creeks, Greater Yellowstone ecosystem (Montana)

• Elk River and Aaron’s Creek, WV

Flow DirectionSubstrate

DepthFlow

* Each dot represents an x,y coordinate with depth, flow, and substrate values

33 m

eter

s8,580 x,y coordinates

Results

Site R-Squared Adjusted R-Squared AIC Model

Little Wapiti 0.69 0.69 10637.48 3

0.55 0.55 11980.46 2

0.52 0.52 12214.06 1

Grayling 0.63 0.63 12924.04 1

0.63 0.63 12925.88 3

0.49 0.49 17901.21 2

1

Location

Adjusted

R-squared R-squared AIC Value Model

Search

Radius

Kernal

Type Bandwidth Method

Little Wapiti 0.93 0.98 5742.72 1 8 neighbor Adaptive Bandwidth Parameter

0.92 0.98 6005.73 2 8 neighbor Adaptive Bandwidth Parameter

0.94 0.99 6982.44 3 8 neighbor Adaptive Bandwidth Parameter

0.82 0.82 8637.95 3 default (30) Fixed AICc

0.80 0.81 8947.01 1 default (30) Fixed AICc

0.75 0.76 9756.02 2 default (30) Fixed AICc

Grayling 0.83 0.95 3226.54 3 8 neighbor Adaptive Bandwidth Parameter

0.85 0.94 4789.01 1 8 neighbor Adaptive Bandwidth Parameter

0.78 0.9 6668.95 2 8 neighbor Adaptive Bandwidth Parameter

0.85 0.86 8444.63 1 default (30) Fixed AICc

0.84 0.84 8879.35 3 default (30) Fixed AICc

0.8 0.81 9948.32 2 default (30) Fixed AICc

1

Visual Comparison

Actual

Predicted

Conclusions

• Geographically Weighted Regression models stream substrate more effectively– Supported by AIC,

adjusted R2, percent match, and visual comparison

• Better assessment of streams

• Management

• Guides future study and

• Economically efficient

Acknowledgements

• Dr.’s Stuart Welsh, Mike Strager, Steve Kite, Kyle Hartman

• WVDNR

• West Virginia University

• West Virginia Cooperative Fish and Wildlife Research Unit (USGS)