Scale dependency of lidar‐derived forest structural diversity

Author:

Atkins Jeff W.1ORCID,Costanza Jennifer2ORCID,Dahlin Kyla M.3ORCID,Dannenberg Matthew P.4ORCID,Elmore Andrew J.56,Fitzpatrick Matthew C.6ORCID,Hakkenberg Christopher R.7ORCID,Hardiman Brady S.89,Kamoske Aaron10,LaRue Elizabeth A.11ORCID,Silva Carlos Alberto12,Stovall Atticus E. L.1314ORCID,Tielens Elske K.15ORCID

Affiliation:

1. Southern Research Station USDA Forest Service New Ellenton South Carolina USA

2. Southern Research Station USDA Forest Service Research Triangle Park North Carolina USA

3. Department of Geography, Environment & Spatial Sciences Michigan State University East Lansing Michigan USA

4. Department of Geographical and Sustainability Sciences University of Iowa Iowa City Iowa USA

5. National Socio‐Environmental Synthesis Center Annapolis Maryland USA

6. Appalachian Laboratory University of Maryland Center for Environmental Science Frostburg Maryland USA

7. School of Informatics, Computing & Cyber Systems Northern Arizona University Flagstaff Arizona USA

8. Department of Forestry and Natural Resources Purdue University West Lafayette Indiana USA

9. Department of Civil and Environmental Engineering Purdue University West Lafayette Indiana USA

10. Ecosystem Management Coordination USDA Forest Service Saint Paul Minnesota USA

11. Department of Biological Sciences The University of Texas at El Paso El Paso Texas USA

12. Forest Biometrics and Remote Sensing Lab, School of Forest, Fisheries, and Geomatics University of Florida Gainesville Florida USA

13. Department of Geographical Sciences University of Maryland College Park Maryland USA

14. NASA Goddard Space Flight Center Greenbelt Maryland USA

15. Corix Plains Institute University of Oklahoma Norman Oklahoma USA

Abstract

Abstract Lidar‐derived forest structural diversity (FSD) metrics—including measures of forest canopy height, vegetation arrangement, canopy cover (CC), structural complexity and leaf area and density—are increasingly used to describe forest structural characteristics and can be used to infer many ecosystem functions. Despite broad adoption, the importance of spatial resolution (grain and extent) over which these structural metrics are calculated remains largely unconsidered. Often researchers will quantify FSD at the spatial grain size of the process of interest without considering the scale dependency or statistical behaviour of the FSD metric employed. We investigated the appropriate scale of inference for eight lidar‐derived spatial metrics—CC, canopy relief ratio, foliar height diversity, leaf area index, mean and median canopy height, mean outer canopy height, and rugosity (RT)‐‐representing five FSD categories—canopy arrangement, CC, canopy height, leaf area and density, and canopy complexity. Optimal scale was determined using the representative elementary area (REA) concept whereby the REA is the smallest grain size representative of the extent. Structural metrics were calculated at increasing canopy spatial grain (from 5 to 1000 m) from aerial lidar data collected at nine different forested ecosystems including sub‐boreal, broadleaf temperate, needleleaf temperate, dry tropical, woodland and savanna systems, all sites are part of the National Ecological Observatory Network within the conterminous United States. To identify the REA of each FSD metric, we used changepoint analysis via segmented or piecewise regression which identifies significant changepoints for both the magnitude and variance of each metric. We find that using a spatial grain size between 25 and 75 m sufficiently captures the REA of CC, canopy arrangement, canopy leaf area and canopy complexity metrics across multiple forest types and a grain size of 30–150 m captures the REA of canopy height metrics. However, differences were evident among forest types with higher REA necessary to characterize CC in evergreen needleleaf forests, and canopy height in deciduous broadleaved forests. These findings indicate the appropriate range of spatial grain sizes from which inferences can be drawn from this set of FSD metrics, informing the use of lidar‐derived structural metrics for research and management applications.

Funder

National Science Foundation of Sri Lanka

Publisher

Wiley

Subject

Ecological Modeling,Ecology, Evolution, Behavior and Systematics

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