210 likes | 231 Views
BEHAVIORAL CHARACTERISTICS OF LANDSCAPE STRUCTURE METRICS IN NEUTRAL LANDSCAPES. FRAGSTATS Workshop 18, July 2003 IALE World Congress Darwin, Australia. Increasing area (P). 95%. Step 1: Generate binary neutral landscapes using the computer program RULE ( Gardner 1999 ).
E N D
BEHAVIORAL CHARACTERISTICS OF LANDSCAPE STRUCTURE METRICS IN NEUTRAL LANDSCAPES FRAGSTATS Workshop18, July 2003IALE World Congress Darwin, Australia
Increasing area (P) 95% Step 1: Generate binary neutral landscapes using the computer program RULE (Gardner 1999). Increasing aggregation (H) 0 1 5% 256 x 256 cell grids Factorial Design H (n = 21) x P (n = 19) 100 replicates of each of 399 H x P combinations
Step 2: Calculate 55 applicable class-level metrics on all 39,900 neutral landscapes using FRAGSTATS. FRAGSTATS Specifications: • 30 m cell size • 90 m edge depth • 500 m search radius • 8 cell neighbor rule • No border • No background • Boundary not included as edge
Conceptual Metric Classification Isolation/ Proximity Proximity Index* Similarity Index* Euclidean Nearest Neighbor* Shape Perimeter Area Fractal Perimeter Area Ratio* Shape Index* Fractal Dimension Index* Core Area Total Core Area Core Percent of Landscape # Disjunct Core Areas Disjunct Core Area Density Core Area Disjunct Core Area* Core Area Index* Area/Edge/ Density Class Area Percent of Landscape Patch Density Edge Density Landscape Shape Index Largest Patch Index Normalized Shape Index Patch Area* Radius of Gyration* Contagion/ Interspersion Percent Like Adjacencies Clumpiness Index Aggregation Index Intersperson and Juxtapostion Index Landscape Division Splitting Index Effective Mesh Size Contrast Contrast Weighted Edge Density Total Edge Contrast Index Edge Contrast* Connectivity Patch Cohesion Index
Conceptual Metric Classification Isolation/ Proximity PROX* SIMI* ENN* Shape PAFRAC PARA* SHAPE* FRAC* Core Area TCA CPLAND NDCA DCAD CORE* DCORE* CAI* Area/Edge/ Density CA PLAND PD ED LSI LPI nLSI AREA* GYRATE* Contagion/ Interspersion PLADJ CLUMPY AI IJI DIVISION SPLIT MESH Contrast CWED TECI ECON* Connectivity COHESION
Metric Behavior H P
Step 4: Plot the range of the H x P space that real landscapes occupy • Calculate metrics in landscapes from three geographically distinct regions in the United States: • Idaho (221 landscapes, 5 classes) • Western Massachusetts (155 landscapes, 7 classes) • Colorado (152 landscapes, 4 classes) • Superimpose values from real landscapes onto values from neutral landscapes.
Metric Behavior H P
Step 5: Evaluate patterns of class-level metric behavior in using mean metric values for 48 metrics. • Use cluster analysis to classify metrics based on behavior along P and H gradients. • Graphically compare behavior of metrics.
Primarily a Function of P LPI AREA_AM AREA_SD GYRATE_AM GYRATE_SD CORE_AM CORE_SD TCA DCORE_AM DCORE_SD PROX_MN PROX_CV PROX_SD DIVISION MESH H P
Primarily a Function of H:Strongly Related to H PAFRAC nLSI PARA_SD FRAC_CV FRAC_SD CAI_SD CLUMPY
Related to Interaction of P and H Parabolic Response Along P LSI PD GYRATE_CV FRAC_AM SHAPE_AM SHAPE_CV SHAPE_SD PROX_AM DCORE_CV DCAD ED
FRAC_AM DCAD SHAPE_SD
Related to Interaction of P and H GYRATE_MN PARA_AM CORE_MN DCORE_MN CAI_AM CAI_MN SPLIT PLADJ AI COHESION ENN_AM ENN_MN ENN_CV ENN_SD AREA_MN
ENN_AM GYRATE_MN PARA_AM COHESION
P = 5% P = 50% P = 95% H = 0 P = 5% P = 50% P = 95% H = 1 Differential Metric Sensitivity AREA_MN AREA_AM
Main Points **Limitations** • Results are based on • binary neutral landscapes. • at one scale. • only one configuration gradient (H). Varying shape, inter-patch distance, etc. would yield different behavior. • Identified 7 behavioral groups with varying relationships with P and H. • Conceptual similarity ≠ behavioral similarity. • Many metrics have non-linear behavior and lack of sensitivity in at least part of the H x P space. • Problematic conditions do not always exist in real landscapes. • Very few metrics measure configuration independent of area – most confound P & H.