Detecting unburned areas within wildfire perimeters using Landsat and ancillary data across the northwestern United States

Wildfires shape the distribution and structure of vegetation across the inland northwestern United States. However, fire activity is expected to increase given the current rate of climate change, with uncertain outcomes. A fire impact that has not been widely addressed is the development of unburned...

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Veröffentlicht in:Remote sensing of environment 2016-12, Vol.186, p.275-285
Hauptverfasser: Meddens, Arjan J.H., Kolden, Crystal A., Lutz, James A.
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Lutz, James A.
description Wildfires shape the distribution and structure of vegetation across the inland northwestern United States. However, fire activity is expected to increase given the current rate of climate change, with uncertain outcomes. A fire impact that has not been widely addressed is the development of unburned islands; areas within the fire perimeter that do not burn. These areas function as critical ecological refugia for biota during or following wildfires, but they have been largely ignored in methodological studies of remote sensing assessing fire severity under the assumption that they will be detected by algorithms for delineating fire perimeters. Our objective was to develop a model for classifying unburned areas within wildfire perimeters using moderate resolution satellite (i.e., Landsat) and ancillary data. We performed field observations at locations that were unburned or lightly burned within the perimeters of 12 wildfires that burned in 2012 and 2014, and augmented this with field data previously acquired on another seven wildfires across the study region. We used randomForest and classification trees to separate burned from unburned locations with high overall classification accuracy (91.7% and 89.2%, for randomForest and classification tree methods respectively). Classification accuracy was significantly higher than the semi-automated classification products from the Monitoring Trends in Burn Severity (MTBS) program. After application of the most parsimonious and accurate classification tree model, we found that the average unburned proportion of the fires was 20% with high variability between fires (standard deviation: 16.4%). The total area of unburned islands in non-forested areas was significantly higher than the total unburned area in forested areas. Accurate detection and delineation of unburned areas is increasingly critical, as some of these unburned areas contain habitat (i.e., wildfire refugia) that are crucial for maintaining biodiversity and functioning of ecosystems, particularly given observed and projected anthropogenic climate change. •Unburned areas can contain important habitat, yet have received little attention.•Field data were used to classify these areas using Landsat and ancillary data.•We found high classification accuracy using classification trees and randomForest.•Average unburned area proportion across the 19 fires was 20%.•Using multi-year post-fire Landsat scenes produced the most accurate models.
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subjects Accuracy
Algorithms
Anthropogenic climate changes
Anthropogenic factors
Biodiversity
Biota
Classification
Climate change
Combustion
Data acquisition
Data processing
Ecosystems
Fire refugia
Fire severity
Fires
Forest & brush fires
Human influences
Islands
Landsat
Landsat satellites
Refugia
Remote sensing
Trees
Unburned areas
Unburned islands
Vegetation
Wildfire
Wildfires
title Detecting unburned areas within wildfire perimeters using Landsat and ancillary data across the northwestern United States
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