Spectral analysis of charcoal on soils: implicationsfor wildland fire severity mapping methods
Alistair M. S. Smith A C , Jan U. H. Eitel A and Andrew T. Hudak BA Experimental Biophysics Measurements Laboratory, College of Natural Resources, University of Idaho, Moscow, ID 83844-1133, USA.
B USDA Forest Service, Rocky Mountain Research Station, 1221 South Main Street,Moscow, ID 83844, USA.
C Corresponding author. Email: alistair@uidaho.edu
International Journal of Wildland Fire 19(7) 976-983 https://doi.org/10.1071/WF09057
Submitted: 2 June 2009 Accepted: 1 May 2010 Published: 5 November 2010
Abstract
Recent studies in the Western United States have supported climate scenarios that predict a higher occurrence of large and severe wildfires. Knowledge of the severity is important to infer long-term biogeochemical, ecological, and societal impacts, but understanding the sensitivity of any severity mapping method to variations in soil type and increasing charcoal (char) cover is essential before widespread adoption. Through repeated spectral analysis of increasing charcoal quantities on six representative soils, we found that addition of charcoal to each soil resulted in linear spectral mixing. We found that performance of the Normalised Burn Ratio was highly sensitive to soil type, whereas the Normalised Difference Vegetation Index was relatively insensitive. Our conclusions have potential implications for national programs that seek to monitor long-term trends in wildfire severity and underscore the need to collect accurate soils information when evaluating large-scale wildland fires.
Additional keywords: ash, char, combustion residue, remote sensing.
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