Estimating Floodplain Vegetative Roughness Using Drone-Based Laser Scanning and Structure from Motion Photogrammetry

Vegetation heights derived from drone laser scanning (DLS), and structure from motion (SfM) photogrammetry at the Virginia Tech StREAM Lab were utilized to determine hydraulic roughness (Manning’s roughness coefficients). We determined hydraulic roughness at three spatial scales: reach, patch, and p...

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Main Authors: Elizabeth M. Prior, Charles A. Aquilina, Jonathan A. Czuba, Thomas J. Pingel, W. Cully Hession
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/13/2616
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spelling doaj-abf0611f99224d66abfd545fbe73af2c2021-07-15T15:44:40ZengMDPI AGRemote Sensing2072-42922021-07-01132616261610.3390/rs13132616Estimating Floodplain Vegetative Roughness Using Drone-Based Laser Scanning and Structure from Motion PhotogrammetryElizabeth M. Prior0Charles A. Aquilina1Jonathan A. Czuba2Thomas J. Pingel3W. Cully Hession4Department of Biological Systems Engineering, Virginia Tech, Blacksburg, VA 24061, USADepartment of Biological Systems Engineering, Virginia Tech, Blacksburg, VA 24061, USADepartment of Biological Systems Engineering, Virginia Tech, Blacksburg, VA 24061, USADepartment of Geography, Virginia Tech, Blacksburg, VA 24061, USADepartment of Biological Systems Engineering, Virginia Tech, Blacksburg, VA 24061, USAVegetation heights derived from drone laser scanning (DLS), and structure from motion (SfM) photogrammetry at the Virginia Tech StREAM Lab were utilized to determine hydraulic roughness (Manning’s roughness coefficients). We determined hydraulic roughness at three spatial scales: reach, patch, and pixel. For the reach scale, one roughness value was set for the channel, and one value for the entire floodplain. For the patch scale, vegetation heights were used to classify the floodplain into grass, scrub, and small and large trees, with a single roughness value for each. The roughness values for the reach and patch methods were calibrated using a two-dimensional (2D) hydrodynamic model (HEC-RAS) and data from in situ velocity sensors. For the pixel method, we applied empirical equations that directly estimated roughness from vegetation height for each pixel of the raster (no calibration necessary). Model simulations incorporating these roughness datasets in 2D HEC-RAS were validated against water surface elevations (WSE) from seventeen groundwater wells for seven high-flow events during the Fall of 2018 and 2019, and compared to marked flood extents. The reach method tended to overestimate while the pixel method tended to underestimate the flood extent. There were no visual differences between DLS and SfM within the pixel and patch methods when comparing flood extents. All model simulations were not significantly different with respect to the well WSEs (<i>p</i> > 0.05). The pixel methods had the lowest WSE RMSEs (SfM: 0.136 m, DLS: 0.124 m). The other methods had RMSE values 0.01–0.02 m larger than the DLS pixel method. Models with DLS data also had lower WSE RMSEs by 0.01 m when compared to models utilizing SfM. This difference might not justify the increased cost of a DLS setup over SfM (~150,000 vs. ~2000 USD for this study), though our use of the DLS DEM to determine SfM vegetation heights might explain this minimal difference. We expect a poorer performance of the SfM-derived vegetation heights/roughness values if we were using a SfM DEM, although further work is needed. These results will help improve hydrodynamic modeling efforts, which are becoming increasingly important for management and planning in response to climate change, specifically in regions were high flow events are increasing.https://www.mdpi.com/2072-4292/13/13/2616lidarstructure from motionvegetative roughnessdronesunoccupied aerial systemfloodplains
collection DOAJ
language English
format Article
sources DOAJ
author Elizabeth M. Prior
Charles A. Aquilina
Jonathan A. Czuba
Thomas J. Pingel
W. Cully Hession
spellingShingle Elizabeth M. Prior
Charles A. Aquilina
Jonathan A. Czuba
Thomas J. Pingel
W. Cully Hession
Estimating Floodplain Vegetative Roughness Using Drone-Based Laser Scanning and Structure from Motion Photogrammetry
Remote Sensing
lidar
structure from motion
vegetative roughness
drones
unoccupied aerial system
floodplains
author_facet Elizabeth M. Prior
Charles A. Aquilina
Jonathan A. Czuba
Thomas J. Pingel
W. Cully Hession
author_sort Elizabeth M. Prior
title Estimating Floodplain Vegetative Roughness Using Drone-Based Laser Scanning and Structure from Motion Photogrammetry
title_short Estimating Floodplain Vegetative Roughness Using Drone-Based Laser Scanning and Structure from Motion Photogrammetry
title_full Estimating Floodplain Vegetative Roughness Using Drone-Based Laser Scanning and Structure from Motion Photogrammetry
title_fullStr Estimating Floodplain Vegetative Roughness Using Drone-Based Laser Scanning and Structure from Motion Photogrammetry
title_full_unstemmed Estimating Floodplain Vegetative Roughness Using Drone-Based Laser Scanning and Structure from Motion Photogrammetry
title_sort estimating floodplain vegetative roughness using drone-based laser scanning and structure from motion photogrammetry
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-07-01
description Vegetation heights derived from drone laser scanning (DLS), and structure from motion (SfM) photogrammetry at the Virginia Tech StREAM Lab were utilized to determine hydraulic roughness (Manning’s roughness coefficients). We determined hydraulic roughness at three spatial scales: reach, patch, and pixel. For the reach scale, one roughness value was set for the channel, and one value for the entire floodplain. For the patch scale, vegetation heights were used to classify the floodplain into grass, scrub, and small and large trees, with a single roughness value for each. The roughness values for the reach and patch methods were calibrated using a two-dimensional (2D) hydrodynamic model (HEC-RAS) and data from in situ velocity sensors. For the pixel method, we applied empirical equations that directly estimated roughness from vegetation height for each pixel of the raster (no calibration necessary). Model simulations incorporating these roughness datasets in 2D HEC-RAS were validated against water surface elevations (WSE) from seventeen groundwater wells for seven high-flow events during the Fall of 2018 and 2019, and compared to marked flood extents. The reach method tended to overestimate while the pixel method tended to underestimate the flood extent. There were no visual differences between DLS and SfM within the pixel and patch methods when comparing flood extents. All model simulations were not significantly different with respect to the well WSEs (<i>p</i> > 0.05). The pixel methods had the lowest WSE RMSEs (SfM: 0.136 m, DLS: 0.124 m). The other methods had RMSE values 0.01–0.02 m larger than the DLS pixel method. Models with DLS data also had lower WSE RMSEs by 0.01 m when compared to models utilizing SfM. This difference might not justify the increased cost of a DLS setup over SfM (~150,000 vs. ~2000 USD for this study), though our use of the DLS DEM to determine SfM vegetation heights might explain this minimal difference. We expect a poorer performance of the SfM-derived vegetation heights/roughness values if we were using a SfM DEM, although further work is needed. These results will help improve hydrodynamic modeling efforts, which are becoming increasingly important for management and planning in response to climate change, specifically in regions were high flow events are increasing.
topic lidar
structure from motion
vegetative roughness
drones
unoccupied aerial system
floodplains
url https://www.mdpi.com/2072-4292/13/13/2616
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