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Canopy and surface fuel estimations using RPAS and ground-based point clouds Arkin, Jeremy; Coops, Nicholas C.; Daniels, Lori D.; Plowright, Andrew
Abstract
Forest management activities intended to reduce wildfire risk rely on accurate characterizations of the amount and arrangement of canopy and surface fuels. Metrics that describe these fuels are typically estimated with various systems that transform plot-level field data into metrics that can be used within fire behaviour models. Remote sensing data has long been used to estimate these metrics across large spatial scales, but more advanced, high density point clouds have the potential to estimate these metrics with higher accuracy. This study collected LiDAR and DAP point clouds from a remotely piloted aerial system (RPAS), as well as mobile laser scanning (MLS) point clouds from a mobile ground-based system, and compared their ability to estimate fuel metrics. This involved the extraction of predictor variables from each point cloud, of which small subsets were used to estimate various fuel metrics. These included six overstory canopy metrics (stand height, canopy cover, tree density, canopy fuel load, canopy bulk density, canopy base height), three DBH-related metrics (stand density index, basal area, quadratic mean diameter), and three surface fuel metrics (total woody debris, coarse woody debris, and fine woody debris). Overall, canopy metrics were estimated most accurately by the RPAS LiDAR models, although none of the point clouds were able to accurately estimate DBH-related metrics. For the other six canopy metrics, RPAS LiDAR models had an average R2 value of 0.70; DAP – 0.63; and MLS – 0.63. Coarse woody debris (> 7 cm) and total woody debris loads were estimated most accurately by the MLS models (average R2 values – 0.70), followed by the RPAS LiDAR – 0.38, and DAP – 0.13. None of these models were able to accurately estimate fine woody debris loads (≤ 7 cm in diameter), with the three types of point clouds having a maximum R2 value of 0.08. Overall, this research shows the relative ability of three types of high density point clouds to estimate metrics relevant for fire behaviour modeling.
Item Metadata
Title |
Canopy and surface fuel estimations using RPAS and ground-based point clouds
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Creator | |
Contributor | |
Date Issued |
2023-04-27
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Description |
Forest management activities intended to reduce wildfire risk rely on accurate characterizations of the amount and arrangement of canopy and surface fuels. Metrics that describe these fuels are typically estimated with various systems that transform plot-level field data into metrics that can be used within fire behaviour models. Remote sensing data has long been used to estimate these metrics across large spatial scales, but more advanced, high density point clouds have the potential to estimate these metrics with higher accuracy. This study collected LiDAR and DAP point clouds from a remotely piloted aerial system (RPAS), as well as mobile laser scanning (MLS) point clouds from a mobile ground-based system, and compared their ability to estimate fuel metrics. This involved the extraction of predictor variables from each point cloud, of which small subsets were used to estimate various fuel metrics. These included six overstory canopy metrics (stand height, canopy cover, tree density, canopy fuel load, canopy bulk density, canopy base height), three DBH-related metrics (stand density index, basal area, quadratic mean diameter), and three surface fuel metrics (total woody debris, coarse woody debris, and fine woody debris). Overall, canopy metrics were estimated most accurately by the RPAS LiDAR models, although none of the point clouds were able to accurately estimate DBH-related metrics. For the other six canopy metrics, RPAS LiDAR models had an average R2 value of 0.70; DAP – 0.63; and MLS – 0.63. Coarse woody debris (> 7 cm) and total woody debris loads were estimated most accurately by the MLS models (average R2 values – 0.70), followed by the RPAS LiDAR – 0.38, and DAP – 0.13. None of these models were able to accurately estimate fine woody debris loads (≤ 7 cm in diameter), with the three types of point clouds having a maximum R2 value of 0.08. Overall, this research shows the relative ability of three types of high density point clouds to estimate metrics relevant for fire behaviour modeling.
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Genre | |
Type | |
Language |
eng
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Date Available |
2024-09-06
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Provider |
Vancouver : University of British Columbia Library
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Rights |
Attribution-NonCommercial-NoDerivatives 4.0 International
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DOI |
10.14288/1.0445336
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URI | |
Affiliation | |
Citation |
Jeremy Arkin, Nicholas C Coops, Lori D Daniels, Andrew Plowright, Canopy and surface fuel estimations using RPAS and ground-based point clouds, Forestry: An International Journal of Forest Research, 2023
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Publisher DOI |
10.1093/forestry/cpad020
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Peer Review Status |
Reviewed
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Scholarly Level |
Faculty; Researcher
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Aggregated Source Repository |
DSpace
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Rights
Attribution-NonCommercial-NoDerivatives 4.0 International