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Published byLawrence Greer Modified over 9 years ago
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Why Quantify Landscape Pattern? Comparison (space & time) –Study areas –Landscapes Inference –Agents of pattern formation –Link to ecological processes
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Programs for Quantifying Landscape Pattern FRAGSTATS –http://www.umass.edu/lan deco/research/fragstats/do cuments/Metrics/Metrics %20TOC.htm Patch Analyst –http://flash.lakeheadu.ca/~ rrempel/patch/
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Quantifying Landscape Pattern Just because one can measure it, doesn’t mean one should –Does the metric make sense?...biologically relevant? –Avoid correlated metrics –Cover the bases (comp., config., conn.)
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Landscape Metrics - Considerations Selecting Metrics…… –Subset of metrics needed that: i) explain (capture) variability in pattern ii) minimize redundancy (i.e., correlation among metrics = multicollinearity) –O’Neill et al. (1988) Indices of landscape pattern. Landscape Ecology 1:153-162 i) eastern U.S. landscapes differentiated using –dominance –contagion –fractal dimension
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Landscape Metrics - Considerations Selecting Metrics…… –Use species-based metrics –Use Principal Components Analysis (PCA)? –Use Ecologically Scaled Landscape Indices (ESLI; landscape indices, scale of species, and relationship to process)
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Quantifying Pattern: Corridors Internal: –Width –Contrast –Env. Gradient External: –Length –Curvilinearity –Alignment –Env. Gradient –Connectivity (gaps)
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Quantifying Pattern: Patches Levels: –Patch-level Metrics for indiv. patches –Class-level Metrics for all patches of given type or class –Zonal or Regional Metrics pooled over 1 or more classes within subregion of landscape –Landscape-level Metrics pooled over all patch classes over entire extent
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Quantifying Pattern: Patches Composition: –Variety & abundance of elements Configuration: –Spatial characteristics & dist’n of elements
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Quantifying Pattern: Patches Composition: –Mean (or mode, median, min, max) –Internal heterogeneity (var, range) Spatial Characters: –Area (incl. core areas) –Perimeter –Shape
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Quantifying Pattern: Landscapes (patch based) Composition: –Number of patch type Patch richness –Proportion of each type Proportion of landscape –Diversity Shannon’s Diversity Index Simpson’s Divesity Index –Evenness Shannon’s Evenness Index Simpson’s Index
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Quantifying Pattern: Patches Configuration : –Patch Size & Density Mean patch size Patch density Patch size variation Largest patch index
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Patch-Centric vs. Landscape-Centric Mean – avg patch attribute; for randomly selected patch Area-weighted mean- avg patch attribute; for a cell selected at random
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Patch-Centric vs. Landscape-Centric Consider relevant perspective…landscape more relevant?...use area- weighted Look at patch dist’ns…right- skewed = large differences
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Quantifying Pattern: Patches Configuration : –Shape Complexity Shape Index Fractal Dimension Fractals = measure of shape complexity (also amount of edge) Fractal dimension (d) ranges from 1.0 (simple shapes) to 2.0 (more complex shapes) ln(A)/ln(P), where A = area, P = perimeter
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Quantifying Pattern: Patches Configuration : –Core Area (interior habitat) # core areas Core area density Core area variation Mean core area Core area index
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Quantifying Pattern: Patches, Zonal Configuration : –Isolation / Proximity Proximity index Mean nearest neighbor distance
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Proximity where, within a user-specified search distance: s k = area of patch k within the search buffer n k = nearest-neighbor distance between the focal patch cell and the nearest cell of patch k
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Proximity Index (PXi) = measure of relative isolation of patches; high (absolute) values indicate relative connectedness of patches
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Quantifying Pattern Overlay hexagon grid onto landcover map Compare bobcat habitat attributes to population of hexagon core areas
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Quantifying Pattern Landscape metrics include: Composition (e.g., proportion cover type) Configuration (e.g., patch isolation, shape, adjacency) Connectivity (e.g., landscape permeability)
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Quantifying Pattern & Modeling Calculate and use Penrose distance to measure similarity between more bobcat & non-bobcat hexagons Where: population i represent core areas of radio-collared bobcats population j represents NLP hexagons p is the number of landscape variables evaluated μ is the landscape variable value k is each observation V is variance for each landscape variable after Manly (2005)
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Penrose Model for Michigan Bobcats VariableMean Vector bobcat hexagons NLP hexagons % ag-openland15.832.4 % low forest51.410.4 % up forest17.643.7 % non-for wetland8.62.3 % stream3.40.9 % transportation3.05.2 Low for core27.63.6 Mean A per disjunct core 0.72.6 Dist ag50.044.9 Dist up for55.043.6 CV nonfor wet A208.3120.1
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Quantifying Pattern & Modeling Each hexagon in NLP then receives a Penrose Distance (PD) value Remap NLP using these hexagons Determine mean PD for bobcat-occupied hexagons Preuss 2005
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