Dataset Identification:
Resource Abstract:
- description: Sage-Grouse habitat areas divided into proposed management categories within Nevada and California project study
boundaries.MANAGEMENT CATEGORY DETERMINATION The process for category determination was directed by the Nevada Sagebrush Ecosystem
Technical team. Sage-grouse habitat was determined from a statewide resource selection function model and first categorized
into 4 classes: high, moderate, low, and non-habitat. The standard deviations (SD) from a normal distribution of RSF values
created from a set of validation points (10% of the entire telemetry dataset) were used to categorize habitat quality classes.
High quality habitat comprised pixels with RSF values < 0.5 SD, Moderate > 0.5 and < 1.0 SD, Low <
1.0 and > 1.5, Non-Habitat > 1.5 SD. Proposed Habitat Management Categories were then defined and calculated
as follows.1) Core habitat: Defined as the intersection between all suitable habitat (high, moderate, and low) and the 85%
Space Use Index (SUI). 2) Priority habitat: Defined as all high quality falling outside the 85% SUI and all non-habitat falling
within the 85% SUI. 3) General habitat: Defined as moderate and low quality habitat falling outside the 85% SUI. 4) Non habitat.
Defined as non-habitat falling outside the 85% SUI. SPACE USE INDEX CALCULATIONLek coordinates and associated trend count
data were obtained from the 2013 Nevada Sage-grouse Lek Database compiled by the Nevada Department of Wildlife (NDOW, S. Espinosa,
9/10/2013). We queried the database for leks with a LEKSTATUS field classified as Active or Pending . Active leks comprised
leks with breeding males observed within the last 5 years. Pending leks comprised leks without consistent breeding activity
during the prior 3 5 surveys or had not been surveyed during the past 5 years; these leks typically trended towards inactive
. A sage-grouse management area (SGMA) was calculated by buffering Population Management Units developed by NDOW by 10km.
This included leks from the Buffalo-Skedaddle PMU that straddles the northeastern California Nevada border, but excluded leks
for the Bi-State Distinct Population Segment. The 5-year average (2009 2013) for the number of males grouse (or unknown gender
if males were not identified) attending each lek was calculated. The final dataset comprised 907 leks. Utilization distributions
describing the probability of lek occurrence were calculated using fixed kernel density estimators (Silverman 1986) with bandwidths
estimated from likelihood based cross-validation (CVh) (Horne and Garton 2006). UDs were weighted by the 5-year average (2009
2013) for the number of males grouse (or unknown gender if males were not identified) attending leks. UDs and bandwidths were
calculated using Geospatial Modelling Environment (Beyer 2012) and the ks package (Duong 2012) in Program R. Grid cell size
was 30m. The resulting raster was clipped by the SGMA polygon, and values were re-scaled between zero and one by dividing
by the maximum pixel value.The non-linear effect of distance to lek on the probability of grouse spatial use was estimated
using the inverse of the utilization distribution curves described by Coates et al. (2013), where essentially the highest
probability of grouse spatial use occurs near leks and then declines precipitously as a non-linear function. Euclidean distance
was first calculated in ArcGIS, reclassified into 30-m distance bins (ranging from 0 30,000m), and bins reclassified according
to the non-linear curve in Coates et al. (2013). The resulting raster was clipped by the SGMA polygon, and re-scaled between
zero and one by dividing by the maximum pixel value.A Spatial Use Index (SUI) was calculated taking the average of the lek
utilization distribution and non-linear distance to lek rasters in ArcGIS, and re-scaled between zero and 1 by dividing by
the maximum pixel value.The volume of the SUI at cumulative 5% increments (isopleths) was extracted in Geospatial Modelling
Environment (Beyer 2012) with the command isopleth . Interior polygons (i.e., donuts > 1.2 km2) representing no probability
of use within a larger polygon of use were erased from each isopleth. The relationship between percent land area within each
isopleth and isopleth volume (VanderWal and Rodgers 2012) indicated statistically concentrated use at the 70% isopleth. The
85% isopleth, which provided greater spatial connectivity and consistency with previously used agency standards (e.g., Doherty
et al. 2010), was ultimately recommended by the Sagebrush Ecosystem Technical Team. The 85% SUI isopleth was clipped by the
SGMA clipped by the Nevada state boundary, which only included habitat within the state of Nevada.Coates, P.S., Casazza, M.L.,
Brussee, B.E., Ricca, M.A., Gustafson, K.B., Overton, C.T., Sanchez-Chopitea, E., Kroger, T., Mauch, K., Niell, L., Howe,
K., Gardner, S., Espinosa, S., and Delehanty, D.J. 2014, Spatially explicit modeling of greater sage-grouse (Centrocercus
urophasianus) habitat in Nevada and northeastern CaliforniaA decision-support tool for management: U.S. Geological Survey
Open-File Report 2014-1163, 83 p., http://dx.doi.org/10.3133/ofr20141163. ISSN 2331-1258 (online)REFERENCES Beyer HL. 2012.
Geospatial Modelling Environment (Version 0.7.2.0). http://www.spatialecology.com/gmeCoates PS, Casazza ML, Blomberg EJ, Gardner
SC, Espinosa SP, Yee JL, Wiechman L, Halstead BJ. 2013. Evaluating greater sage-grouse seasonal space use relative to leks:
Implications for surface use designations in sagebrush ecosystems. The Journal of Wildlife Management 77: 1598-1609.Doherty
KE, Tack JD, Evans JS, Naugle DE. 2010. Mapping breeding densities of greater sage-grouse: A tool for range-wide conservation
planning. Bureau of Land Management. Report Number: L10PG00911. Accessed at: http://www.conservationgateway.org/ConservationByGeography/NorthAmerica/Pages/sagegrouse.aspx#
Duong T. 2012. ks: Kernel smoothing. R package version 1.8.10. http://CRAN.R-project.org/package=ksHorne JS, Garton EO. 2006.
Likelihood cross-validation versus least squares cross-validation for choosing the smoothing parameter in kernel home-range
analysis. Journal of Wildlife Management 70: 641-648.Silverman BW. 1986. Density estimation for statistics and data analysis.
Chapman & Hall, London, United Kingdom.Vander Wal E, Rodgers AR. 2012. An individual-based quantitative approach for
delineating core areas of animal space use. Ecological Modelling 224: 48-53.NOTE: This file does not include habitat areas
for the Bi-State management area.; abstract: Sage-Grouse habitat areas divided into proposed management categories within
Nevada and California project study boundaries.MANAGEMENT CATEGORY DETERMINATION The process for category determination was
directed by the Nevada Sagebrush Ecosystem Technical team. Sage-grouse habitat was determined from a statewide resource selection
function model and first categorized into 4 classes: high, moderate, low, and non-habitat. The standard deviations (SD) from
a normal distribution of RSF values created from a set of validation points (10% of the entire telemetry dataset) were used
to categorize habitat quality classes. High quality habitat comprised pixels with RSF values < 0.5 SD, Moderate >
0.5 and < 1.0 SD, Low < 1.0 and > 1.5, Non-Habitat > 1.5 SD. Proposed Habitat Management Categories
were then defined and calculated as follows.1) Core habitat: Defined as the intersection between all suitable habitat (high,
moderate, and low) and the 85% Space Use Index (SUI). 2) Priority habitat: Defined as all high quality falling outside the
85% SUI and all non-habitat falling within the 85% SUI. 3) General habitat: Defined as moderate and low quality habitat falling
outside the 85% SUI. 4) Non habitat. Defined as non-habitat falling outside the 85% SUI. SPACE USE INDEX CALCULATIONLek coordinates
and associated trend count data were obtained from the 2013 Nevada Sage-grouse Lek Database compiled by the Nevada Department
of Wildlife (NDOW, S. Espinosa, 9/10/2013). We queried the database for leks with a LEKSTATUS field classified as Active or
Pending . Active leks comprised leks with breeding males observed within the last 5 years. Pending leks comprised leks without
consistent breeding activity during the prior 3 5 surveys or had not been surveyed during the past 5 years; these leks typically
trended towards inactive . A sage-grouse management area (SGMA) was calculated by buffering Population Management Units developed
by NDOW by 10km. This included leks from the Buffalo-Skedaddle PMU that straddles the northeastern California Nevada border,
but excluded leks for the Bi-State Distinct Population Segment. The 5-year average (2009 2013) for the number of males grouse
(or unknown gender if males were not identified) attending each lek was calculated. The final dataset comprised 907 leks.
Utilization distributions describing the probability of lek occurrence were calculated using fixed kernel density estimators
(Silverman 1986) with bandwidths estimated from likelihood based cross-validation (CVh) (Horne and Garton 2006). UDs were
weighted by the 5-year average (2009 2013) for the number of males grouse (or unknown gender if males were not identified)
attending leks. UDs and bandwidths were calculated using Geospatial Modelling Environment (Beyer 2012) and the ks package
(Duong 2012) in Program R. Grid cell size was 30m. The resulting raster was clipped by the SGMA polygon, and values were re-scaled
between zero and one by dividing by the maximum pixel value.The non-linear effect of distance to lek on the probability of
grouse spatial use was estimated using the inverse of the utilization distribution curves described by Coates et al. (2013),
where essentially the highest probability of grouse spatial use occurs near leks and then declines precipitously as a non-linear
function. Euclidean distance was first calculated in ArcGIS, reclassified into 30-m distance bins (ranging from 0 30,000m),
and bins reclassified according to the non-linear curve in Coates et al. (2013). The resulting raster was clipped by the SGMA
polygon, and re-scaled between zero and one by dividing by the maximum pixel value.A Spatial Use Index (SUI) was calculated
taking the average of the lek utilization distribution and non-linear distance to lek rasters in ArcGIS, and re-scaled between
zero and 1 by dividing by the maximum pixel value.The volume of the SUI at cumulative 5% increments (isopleths) was extracted
in Geospatial Modelling Environment (Beyer 2012) with the command isopleth . Interior polygons (i.e., donuts > 1.2
km2) representing no probability of use within a larger polygon of use were erased from each isopleth. The relationship between
percent land area within each isopleth and isopleth volume (VanderWal and Rodgers 2012) indicated statistically concentrated
use at the 70% isopleth. The 85% isopleth, which provided greater spatial connectivity and consistency with previously used
agency standards (e.g., Doherty et al. 2010), was ultimately recommended by the Sagebrush Ecosystem Technical Team. The 85%
SUI isopleth was clipped by the SGMA clipped by the Nevada state boundary, which only included habitat within the state of
Nevada.Coates, P.S., Casazza, M.L., Brussee, B.E., Ricca, M.A., Gustafson, K.B., Overton, C.T., Sanchez-Chopitea, E., Kroger,
T., Mauch, K., Niell, L., Howe, K., Gardner, S., Espinosa, S., and Delehanty, D.J. 2014, Spatially explicit modeling of greater
sage-grouse (Centrocercus urophasianus) habitat in Nevada and northeastern CaliforniaA decision-support tool for management:
U.S. Geological Survey Open-File Report 2014-1163, 83 p., http://dx.doi.org/10.3133/ofr20141163. ISSN 2331-1258 (online)REFERENCES
Beyer HL. 2012. Geospatial Modelling Environment (Version 0.7.2.0). http://www.spatialecology.com/gmeCoates PS, Casazza ML,
Blomberg EJ, Gardner SC, Espinosa SP, Yee JL, Wiechman L, Halstead BJ. 2013. Evaluating greater sage-grouse seasonal space
use relative to leks: Implications for surface use designations in sagebrush ecosystems. The Journal of Wildlife Management
77: 1598-1609.Doherty KE, Tack JD, Evans JS, Naugle DE. 2010. Mapping breeding densities of greater sage-grouse: A tool for
range-wide conservation planning. Bureau of Land Management. Report Number: L10PG00911. Accessed at: http://www.conservationgateway.org/ConservationByGeography/NorthAmerica/Pages/sagegrouse.aspx#
Duong T. 2012. ks: Kernel smoothing. R package version 1.8.10. http://CRAN.R-project.org/package=ksHorne JS, Garton EO. 2006.
Likelihood cross-validation versus least squares cross-validation for choosing the smoothing parameter in kernel home-range
analysis. Journal of Wildlife Management 70: 641-648.Silverman BW. 1986. Density estimation for statistics and data analysis.
Chapman & Hall, London, United Kingdom.Vander Wal E, Rodgers AR. 2012. An individual-based quantitative approach for
delineating core areas of animal space use. Ecological Modelling 224: 48-53.NOTE: This file does not include habitat areas
for the Bi-State management area.
Citation
- Title Management Categories for Greater Sage-grouse in Nevada and California (August 2014).
-
- creation Date
2018-05-21T09:38:07.923641
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- URL: http://dx.doi.org/10.5066/F75D8PW8
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Metadata data stamp:
2018-08-06T20:52:41Z
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- notes: This metadata record was generated by an xslt transformation from a dc metadata record; Transform by Stephen M. Richard, based
on a transform by Damian Ulbricht. Run on 2018-08-06T20:52:41Z
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urn:dciso:metadataabout:65b430d1-82d0-48ab-89e3-d0ebeb556335
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