Using Pre-Fire High Point Cloud Density LiDAR Data to Predict Fire Severity in Central Portugal

The wall-to-wall prediction of fuel structural characteristics conducive to high fire severity is essential to provide integrated insights for implementing pre-fire management strategies designed to mitigate the most harmful ecological effects of fire in fire-prone plant communities. Here, we evalua...

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Main Authors: José Manuel Fernández-Guisuraga, Paulo M. Fernandes
Format: Article
Language:English
Published: MDPI AG 2023-01-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/15/3/768
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author José Manuel Fernández-Guisuraga
Paulo M. Fernandes
author_facet José Manuel Fernández-Guisuraga
Paulo M. Fernandes
author_sort José Manuel Fernández-Guisuraga
collection DOAJ
description The wall-to-wall prediction of fuel structural characteristics conducive to high fire severity is essential to provide integrated insights for implementing pre-fire management strategies designed to mitigate the most harmful ecological effects of fire in fire-prone plant communities. Here, we evaluate the potential of high point cloud density LiDAR data from the Portuguese áGiLTerFoRus project to characterize pre-fire surface and canopy fuel structure and predict wildfire severity. The study area corresponds to a pilot LiDAR flight area of around 21,000 ha in central Portugal intersected by a mixed-severity wildfire that occurred one month after the LiDAR survey. Fire severity was assessed through the differenced Normalized Burn Ratio (dNBR) index computed from pre- and post-fire Sentinel-2A Level 2A scenes. In addition to continuous data, fire severity was also categorized (low or high) using appropriate dNBR thresholds for the plant communities in the study area. We computed several metrics related to the pre-fire distribution of surface and canopy fuels strata with a point cloud mean density of 10.9 m<sup>−2</sup>. The Random Forest (RF) algorithm was used to evaluate the capacity of the set of pre-fire LiDAR metrics to predict continuous and categorized fire severity. The accuracy of RF regression and classification model for continuous and categorized fire severity data, respectively, was remarkably high (<i>pseudo-R</i><sup>2</sup> = 0.57 and overall accuracy = 81%) considering that we only focused on variables related to fuel structure and loading. The pre-fire fuel metrics with the highest contribution to RF models were proxies for horizontal fuel continuity (fractional cover metric) and the distribution of fuel loads and canopy openness up to a 10 m height (density metrics), indicating increased fire severity with higher surface fuel load and higher horizontal and vertical fuel continuity. Results evidence that the technical specifications of LiDAR acquisitions framed within the áGiLTerFoRus project enable accurate fire severity predictions through point cloud data with high density.
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spelling doaj.art-8a9c10b8d2bd4921b87dbf044c5a3f1a2023-11-16T17:53:58ZengMDPI AGRemote Sensing2072-42922023-01-0115376810.3390/rs15030768Using Pre-Fire High Point Cloud Density LiDAR Data to Predict Fire Severity in Central PortugalJosé Manuel Fernández-Guisuraga0Paulo M. Fernandes1Centro de Investigação e de Tecnologias Agroambientais e Biológicas, Universidade de Trás-os-Montes e Alto Douro, 5000-801 Vila Real, PortugalCentro de Investigação e de Tecnologias Agroambientais e Biológicas, Universidade de Trás-os-Montes e Alto Douro, 5000-801 Vila Real, PortugalThe wall-to-wall prediction of fuel structural characteristics conducive to high fire severity is essential to provide integrated insights for implementing pre-fire management strategies designed to mitigate the most harmful ecological effects of fire in fire-prone plant communities. Here, we evaluate the potential of high point cloud density LiDAR data from the Portuguese áGiLTerFoRus project to characterize pre-fire surface and canopy fuel structure and predict wildfire severity. The study area corresponds to a pilot LiDAR flight area of around 21,000 ha in central Portugal intersected by a mixed-severity wildfire that occurred one month after the LiDAR survey. Fire severity was assessed through the differenced Normalized Burn Ratio (dNBR) index computed from pre- and post-fire Sentinel-2A Level 2A scenes. In addition to continuous data, fire severity was also categorized (low or high) using appropriate dNBR thresholds for the plant communities in the study area. We computed several metrics related to the pre-fire distribution of surface and canopy fuels strata with a point cloud mean density of 10.9 m<sup>−2</sup>. The Random Forest (RF) algorithm was used to evaluate the capacity of the set of pre-fire LiDAR metrics to predict continuous and categorized fire severity. The accuracy of RF regression and classification model for continuous and categorized fire severity data, respectively, was remarkably high (<i>pseudo-R</i><sup>2</sup> = 0.57 and overall accuracy = 81%) considering that we only focused on variables related to fuel structure and loading. The pre-fire fuel metrics with the highest contribution to RF models were proxies for horizontal fuel continuity (fractional cover metric) and the distribution of fuel loads and canopy openness up to a 10 m height (density metrics), indicating increased fire severity with higher surface fuel load and higher horizontal and vertical fuel continuity. Results evidence that the technical specifications of LiDAR acquisitions framed within the áGiLTerFoRus project enable accurate fire severity predictions through point cloud data with high density.https://www.mdpi.com/2072-4292/15/3/768density metricsfractional coverfuel loadlaser scanningwildfire
spellingShingle José Manuel Fernández-Guisuraga
Paulo M. Fernandes
Using Pre-Fire High Point Cloud Density LiDAR Data to Predict Fire Severity in Central Portugal
Remote Sensing
density metrics
fractional cover
fuel load
laser scanning
wildfire
title Using Pre-Fire High Point Cloud Density LiDAR Data to Predict Fire Severity in Central Portugal
title_full Using Pre-Fire High Point Cloud Density LiDAR Data to Predict Fire Severity in Central Portugal
title_fullStr Using Pre-Fire High Point Cloud Density LiDAR Data to Predict Fire Severity in Central Portugal
title_full_unstemmed Using Pre-Fire High Point Cloud Density LiDAR Data to Predict Fire Severity in Central Portugal
title_short Using Pre-Fire High Point Cloud Density LiDAR Data to Predict Fire Severity in Central Portugal
title_sort using pre fire high point cloud density lidar data to predict fire severity in central portugal
topic density metrics
fractional cover
fuel load
laser scanning
wildfire
url https://www.mdpi.com/2072-4292/15/3/768
work_keys_str_mv AT josemanuelfernandezguisuraga usingprefirehighpointclouddensitylidardatatopredictfireseverityincentralportugal
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