PATCH REEF ANALYSIS USING LIDAR-DERIVED METRICS AT BISCAYNE NATIONAL PARK, FLORIDA
An independent component analysis was carried out on principal components derived from the patch reef metrics to determine if depth was the single most important factor to influence reef physical variability and habitat complexity. Principal components, although uncorrelated, are only partly independent (Hyvarinen & Oja, 2000). Two distinctly different independent components emerged from the analysis of 7 principal components that described over 95% of data variability. We demonstrate that one independent component can be a function of patch reef rugosity while the other independent component is most likely a function of reef geometry and depth. These two independent components divide the patch reefs population in three depth classes, (1) from 2 to 6m, (2) from 6 to 9.5m, and (3) from 9.5 to 14m, respectively. The deepest class correlates with the tail data not modeled by the log-normal mixture distribution.
Independent component analysis is more sensitive than simple multivariate analysis in assessing data variability. Multivariate analysis confirmed two major different populations, shallow and deeper reefs, with divergent rugosity correlations but similar behavior of other reef metrics such as perimeter, area and volume. Independent component analysis suggests that 3 classes may be more appropriate to describe patch reef variability and habitat complexity in Biscayne National Park.
References cited:
Brock, J.C., Wright, C.W., Clayton, T.D., Nayegandhi, A., 2004, LIDAR optical rugosity of coral reefs in Biscayne National Park, Florida, Coral Reefs 23: 48 59
Brock, J.C., Wright, C.W., Kuffer, I.B., Hernandez, R., Thompson, Ph., 2006, Airborne lidar sensing of massive stony coral colonies on patch reefs in the northern Florida reef tract, Remote Sensisng of Environment 104: 31 42
Hyvarinen, A., Oja, E., 2000, Independent Component Analysis: Algorithms and Applications, Neural Networks 13(4-5):411 430