TY - JOUR
T1 - Promises and uncertainties in remotely sensed riverine hydro-environmental attributes
T2 - Field testing of novel approaches to unmanned aerial vehicle-borne lidar and imaging velocimetry
AU - Islam, Md Touhidul
AU - Yoshida, Keisuke
AU - Nishiyama, Satoshi
AU - Sakai, Koichi
AU - Adachi, Shin
AU - Pan, Shijun
N1 - Funding Information:
The authors are grateful to the Chugoku Regional Development Bureau and to the Ministry of Land, Infrastructure, Transport, and Tourism in Japan for providing necessary data recorded at the nearest observatory station in the Asahi River's targeted domain. This study was partly supported by the Chugoku Kensetsu Kousaikai and the Wesco Scientific Promotion Foundation. The authors would also like to thank the anonymous reviewers for their insightful comments and suggestions on the manuscript.
Publisher Copyright:
© 2022 John Wiley & Sons Ltd.
PY - 2022
Y1 - 2022
N2 - Recent advancements in remotely sensed techniques have markedly expanded data acquisition potential in riverine studies, but the techniques' applicability must be validated and improved because of uncertainties associated with diverse field conditions. This study is the first experimental evidence of using a newly designed unmanned aerial vehicle (UAV)-borne green lidar system (GLS) and deep learning-automated space–time image velocimetry (STIV) for remote investigation of hydraulic and vegetation quantities of the gravel-bed Asahi River in Okayama Prefecture, Japan. In addition to identifying bed deformation in waters shallower than 2 m, the GLS point clouds characterized the submerged infrastructure with block detailing patterns, thereby identifying positional displacement and severely damaged parts. This paper also presents a noncontact method of estimating incremental river discharge. Compared to benchmarked flow model estimates, remotely sensed discharges for three transects covering shallower, deeper, and partially submerged woody vegetation areas were overestimated by 1–11%, with 4% underestimation for another cross-section. The STIV analysis also showed complicated flow patterns that were reasonably confirmed by flow vectors from depth-averaged modeling. Ultimately, depth-averaged flow model estimates validated hydraulic parameters derived remotely from GLS and STIV, and vice versa. In addition to approximating vegetation growth rates, the study using GLS attributes accurately identified riparian vegetation types as herbaceous (70%), woody (86%), and bamboo groves (65%). Finally, our findings provide insight into the management of shallow clear-flowing vegetated rivers and remote sensing of streamflow to validate hydrodynamic-numerical methods.
AB - Recent advancements in remotely sensed techniques have markedly expanded data acquisition potential in riverine studies, but the techniques' applicability must be validated and improved because of uncertainties associated with diverse field conditions. This study is the first experimental evidence of using a newly designed unmanned aerial vehicle (UAV)-borne green lidar system (GLS) and deep learning-automated space–time image velocimetry (STIV) for remote investigation of hydraulic and vegetation quantities of the gravel-bed Asahi River in Okayama Prefecture, Japan. In addition to identifying bed deformation in waters shallower than 2 m, the GLS point clouds characterized the submerged infrastructure with block detailing patterns, thereby identifying positional displacement and severely damaged parts. This paper also presents a noncontact method of estimating incremental river discharge. Compared to benchmarked flow model estimates, remotely sensed discharges for three transects covering shallower, deeper, and partially submerged woody vegetation areas were overestimated by 1–11%, with 4% underestimation for another cross-section. The STIV analysis also showed complicated flow patterns that were reasonably confirmed by flow vectors from depth-averaged modeling. Ultimately, depth-averaged flow model estimates validated hydraulic parameters derived remotely from GLS and STIV, and vice versa. In addition to approximating vegetation growth rates, the study using GLS attributes accurately identified riparian vegetation types as herbaceous (70%), woody (86%), and bamboo groves (65%). Finally, our findings provide insight into the management of shallow clear-flowing vegetated rivers and remote sensing of streamflow to validate hydrodynamic-numerical methods.
KW - hydrodynamic-numerical modeling
KW - noncontact river discharge
KW - riparian vegetation characterization
KW - riverbed deformation
KW - space–time image velocimetry
KW - unmanned aerial vehicle-borne green lidar
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U2 - 10.1002/rra.4042
DO - 10.1002/rra.4042
M3 - Article
AN - SCOPUS:85136501014
SN - 1535-1459
JO - River Research and Applications
JF - River Research and Applications
ER -