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JDR Vol.16 No.3 pp. 371-380
(2021)
doi: 10.20965/jdr.2021.p0371

Paper:

Applicability of High-Resolution Geospatial Data Obtained by UAV Photogrammetry to Develop Drainage System Models for Pluvial Flood Analysis

Kyuhyun Park*,†, Yoshihiro Shibuo*, Junichi Katayama***, Shinji Baba***, and Hiroaki Furumai**

*Department of Urban Engineering, Graduate School of Engineering, The University of Tokyo
7-3-1 Hongo, Bunkyo-ku, Tokyo 113-8656, Japan

Corresponding author

**Research Center for Water Environment Technology, School of Engineering, The University of Tokyo, Tokyo, Japan

***Ishigaki Company, Ltd., Tokyo, Japan

Received:
September 30, 2020
Accepted:
February 5, 2021
Published:
April 1, 2021
Keywords:
pluvial flooding, UAV photogrammetry, high-resolution geospatial data survey, open channel shape survey, suburban area
Abstract

Integrated flood models have been previously developed to simulate diverse inundation situations and combined with models of storm surges and river floods. However, drainage systems, ground elevation, and surface information of human settlements have only been digitized in large cities. Digitization of surface information is essential for developing a drainage system model for pluvial flood analysis. Occasionally, suburban drainage areas exhibit various complex land-use conditions, including residential and green areas, agricultural land with drainage, and irrigation channels. Herein, UAV photogrammetry was applied to obtain high-resolution geospatial data associated with small-scale flood-prone areas whose elevation, land-use, and waterway networks have not been elucidated sufficiently. The resolution of elevation and land-use data ranged from 2.61–5.22 cm/mesh. The measurement accuracy of the width and depth of the open channels was high, and the errors were mostly within 10%. A drainage system model was developed using data on open channel, elevation, and land-use.

Cite this article as:
Kyuhyun Park, Yoshihiro Shibuo, Junichi Katayama, Shinji Baba, and Hiroaki Furumai, “Applicability of High-Resolution Geospatial Data Obtained by UAV Photogrammetry to Develop Drainage System Models for Pluvial Flood Analysis,” J. Disaster Res., Vol.16, No.3, pp. 371-380, 2021.
Data files:
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Last updated on May. 04, 2021