Estimating above-ground carbon biomass in a newly restored coastal plain wetland using remote sensing.

Joseph B Riegel, Emily Bernhardt, Jennifer Swenson
Author Information
  1. Joseph B Riegel: Nicholas School of the Environment, Duke University, Durham, North Carolina, United States of America. ben.riegel@gmail.com

Abstract

Developing accurate but inexpensive methods for estimating above-ground carbon biomass is an important technical challenge that must be overcome before a carbon offset market can be successfully implemented in the United States. Previous studies have shown that LiDAR (light detection and ranging) is well-suited for modeling above-ground biomass in mature forests; however, there has been little previous research on the ability of LiDAR to model above-ground biomass in areas with young, aggrading vegetation. This study compared the abilities of discrete-return LiDAR and high resolution optical imagery to model above-ground carbon biomass at a young restored forested wetland site in eastern North Carolina. We found that the optical imagery model explained more of the observed variation in carbon biomass than the LiDAR model (adj-R(2) values of 0.34 and 0.18 respectively; root mean squared errors of 0.14 Mg C/ha and 0.17 Mg C/ha respectively). Optical imagery was also better able to predict high and low biomass extremes than the LiDAR model. Combining both the optical and LiDAR improved upon the optical model but only marginally (adj-R(2) of 0.37). These results suggest that the ability of discrete-return LiDAR to model above-ground biomass may be rather limited in areas with young, small trees and that high spatial resolution optical imagery may be the better tool in such areas.

References

  1. Science. 1975 Jul 25;189(4199):271-5 [PMID: 17813702]
  2. Environ Sci Technol. 2009 Feb 1;43(3):557-60 [PMID: 19244982]
  3. Ecol Appl. 2012 Jan;22(1):264-80 [PMID: 22471089]

MeSH Term

Biomass
Carbon
North Carolina
Remote Sensing Technology
Telemetry
United States
Wetlands

Chemicals

Carbon

Word Cloud

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