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Scale • What’s the big deal? • Seminal pubs – Allen & Starr (1982) – Hierarchy: perspectives for ecological complexity – Delcourt et al. (1983) – Quaternary Science Review 1:153-175 – O’Neill et al. (1986) – A hierarchical concept of ecosystems Long Ecological Scaling: Scale & Pattern Speciation Extinction Short Temporal Scale Species Migrations Secondary Succession Windthrow Fire Treefalls Recruitment Fine Spatial Scale Coarse • Acts in the “ecological theatre (Hutchinson 1965) are played out across various scales of space & time • To understand these dramas, one must select the appropriate scale Ecological Scaling: Scale & Pattern • Different patterns emerge, depending on the scale of investigation Regional Scale (thousands of ha) American Redstart American Redstart Local Scale (4 ha plots) Least Flycatcher Least Flycatcher Ecological Scaling: Components of Scale • Grain: minimum resolution of the data – Cell size (raster data) – Min. polygon size (vector data) • Extent: scope or domain of the data – Size of landscape or study area Ecological Scale • Scale characterized by: – grain: smallest spatial resolution of data e.g., grid cell size, pixel size, quadrat size (resolution) Fine Coarse Ecological Scale • Scale characterized by: – extent: size of overall study area (scope or domain of the data) Small Large Ecological Scaling: Components of Scale • Minimum Patch Size: min. size considered > resolution of data (defined by grain) Ecological Scaling: Definitions • Ecological scale & cartographic scale are exactly opposite – Ecological scale = size (extent) of landscape – Cartographic scale = ratio of map to real distance Scale in Ecology & Geography • ecological vs. cartographic scale Small (Fine) Large (Broad) Ecology Geography Fine resolution Small Extent Coarse resolution Large extent Coarse resolution Large Extent Fine resolution Small extent Scale in Ecology & Geography • ecological vs. cartographic scale – e.g., map scale 1:200,000 vs. 1:24,000 fine vs. coarse large vs. small extent 1:24,000 1:200,000 Ecological Scaling: Components of Scale • From an organismcentered perspective, grain and extent may be defined as the degree of acuity of a stationary organism with respect to shortand long-range perceptual ability What ecological concept is important here? Ecological Scaling: Components of Scale • Grain = finest component of environment that can be differentiated up close • Extent = range at which a relevant object can be distinguished from a fixed vantage point Extent Grain Fine Scale Coarse Ecological Scaling: Components of Scale • From an anthropocentric perspective, grain and extent may be defined on the basis of management objectives • Grain = finest unit of mgt (e.g., stand) • Extent = total area under management (e.g., forest) Ecological Scaling: Components of Scale • In practice, grain and extent often dictated by scale of available spatial data (e.g., imagery), logistics, or technical capabilities Ecological Scaling: Components of Scale • Critical that grain and extent be defined for a study and represent ecological phenomenon or organism studied. • Otherwise, patterns detected have little meaning and/or conclusions could be wrong Scale: Jargon • scale vs. level of organization Individual Space - Time Population Space - Time Community Space - Time Ecological Scaling: Implications of Scale • As one changes scale, statistical relationships may change: – Magnitude or sign of correlations – Importance of variables – Variance relationships Implications of Changes in Scale • Processes and/or patterns may change • Hierarchy theory = structural understanding of scale-dependent phenomena Example Abundance of forest insects sampled at different distance intervals in leaf litter, Implications of Changes in Scale Insects sampled at 10-m intervals for 100 m 45 40 35 30 25 Predator Prey 20 15 10 5 0 P r to da e r Pr ey What’s the pattern? Implications of Changes in Scale Insects sampled at 2000-m intervals for 20,000 m 45 40 35 30 25 Predator Prey ey Pr Pr ed at or 20 15 10 5 0 What’s the pattern? Identifying the “Right” Scale(s) • • • • No clear algorithm for defining Autocorrelation & Independence Life history correlates Dependent on objectives and organisms • Multiscale analysis! • e.g., Australian leadbeater’s possum Large Scale: Scale: old proportion & connectivity Local growth with den cavitiesof old growth forest Multiscale Analysis • Species-specific perception of landscape features : scale-dependent – e.g., mesopredators in Indiana • Modeling species distributions in fragmented landscapes Matrix Patches Corridors Underlying Mechanisms Use of Spatial Elements Body Size Niche Breadth Distribution Patterns Body Size • Mobility • Predation Risk • Landscape Perception Niche Breadth • Food Habits • Habitat Use Body Size & Niche Breadth Species Coyote Mean Mass (kg) 12.78 Food Habits 11/15 Habitat Use 11/12 Raccoon 5.94 11/15 7/12 Longtailed Weasel 0.15 4/15 8/12 PREDICTIONS • Species should view the landscape at different spatial scales. Presence of larger species predicted by element and landscape attributes, whereas smaller species correlated with site characteristics. Variables Local Habitat: • Ground Cover • Canopy Cover • Vertical Structure (4 levels from 0-3 m) Variables Element-level: • Area, Fractal Dimension, Distance Nearest Edge Landscape-level (1-km & 3-km buffers): • NN Distance, Proportion Area, Shannon Diversity Index Coyote Logistic Model 3-km2 Landscape: Landscape-Element Model wi = 0.77; Relative Likelihood = 3.5 • • • • Lower proportion of forest Absence of forest patches & corridors Closer proximity to edge Greater fractal dimension Raccoon Logistic Model 3-km2 Landscape: Full Model wi >0.999; Relative Likelihood = 999 • Lower proportion herb corridors & greater proportion of wooded corridors • Greater proportion of forest and forest patches in closer proximity • Greater fractal dimension • Greater canopy closure & greater vertical structure Long-tailed Weasel Logistic Model 3-km2 Landscape: Full Model wi >0.999; Relative Likelihood = 999 • • • • • Greater proportion herb & wooded corridor Presence of forest patches & corridors Closer proximity to edge Presence of small & medium prey Increased ground cover Swihart et al. 2003. Diversity and Distributions 9:1-8. Hierarchy Theory • Lower levels provide mechanistic explanations • Higher levels provide constraints Scale & Hierarchy Theory • Hierarchical structure of systems = helps us explain phenomena –Why? : next lower level –So What? : next higher level • minimum 3 hierarchical levels needed Constraints (significance) Level of Focus (level of interest) Components (explanation) Community Population Individual Constraints Why are long-tailed weasel populations declining in fragmented landscapes? Components Community Population Individual Constraints Why are long-tailed weasel populations declining in fragmented landscapes? Small body size mobility Community Population Individual Predators Competitors Prey dist’n Why are long-tailed weasel populations declining in fragmented landscapes? Components Ecological Scaling: Components of Scale • Grain and extent are correlated • Information content often correlated with grain • Grain and extent set lower and upper limits of resolution in the data, respectively 1st order – innate? 2nd order –decisions 3rd &4th order –decisions Scale Dependence of Habitat Selection 1st Order 2nd Order 3rd Order 4th Order Macrohabitat vs. Microhabitat