4.6 Article

Quantifying Debris Flood Deposits in an Alaskan Fjord Using Multitemporal Digital Elevation Models

期刊

SENSORS
卷 21, 期 6, 页码 -

出版社

MDPI
DOI: 10.3390/s21061966

关键词

DEM; SfM; DoD; LiDAR; dGNSS; sedimentation; debris flood; survey; Alaska; flood mitigation

资金

  1. National Science Foundation [OIA-1208927]
  2. State of Alaska

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The study quantified the changes in sedimentation in the Japanese Creek drainage using six DEMs and demonstrated that major flood events resulted in increased sedimentation in the drainage. By correlating sediment budget changes with rainfall data and flood events, the study showed that the DoD method and using multiple technologies to create DEMs is effective in quantifying volumetric changes of sediment redistribution.
Six DEMs over a 10-year period were used to estimate flood-related sedimentation in the Japanese Creek drainage located in Seward, Alaska. We analyze two existing LiDAR DEMs and one GNSS-derived DEM along with three additional DEMs that we generated using differential Global Navigation Satellite System (dGNSS) and Structure from Motion (SfM) techniques. Uncertainties in each DEM were accounted for, and a DEMs of Difference (DoD) technique was used to quantify the amount and pattern of sediment introduced, redistributed, or exiting the system. Through correlating the changes in sediment budget with rainfall data and flood events, the study demonstrates that the major flood events in 2006 and 2012-the 7th and 5th highest precipitation events on record-resulted in an increased sedimentation in the drainage as a whole. At a minimum the 2006 and 2012 events increased the sediment in the lower reaches by 70,100 and 53,900 cubic meters, respectively. The study shows that the DoD method and using multiple technologies to create DEMs is effective in quantifying the volumetric change and general spatial patterns of sediment redistribution between the acquisition of DEMs.

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