Methods for predicting peak discharge of floods caused by failure of natural and constructed earthen dams

Water Resources Research
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Abstract

Floods from failures of natural and constructed dams constitute a widespread hazard to people and property. Expeditious means of assessing flood hazards are necessary, particularly in the case of natural dams, which may form suddenly and unexpectedly. We revise statistical relations (derived from data for past constructed and natural dam failures) between peak discharge (Qp) and water volume released (V0) or drop in lake level (d) but assert that such relations, even when cast into a dimensionless form, are of limited utility because they fail to portray the effect of breach-formation rate. We then analyze a simple, physically based model of dam-breach formation to show that the hydrograph at the breach depends primarily on a dimensionless parameter η=kV0/gl/2d7/2, where k is the mean erosion rate of the breach and g is acceleration due to gravity. The functional relationship between Qp and η takes asymptotically distinct forms depending on whether η ≪ 1 (relatively slow breach formation or small lake volume) or η ≫ 1 (relatively fast breach formation or large lake volume). Theoretical predictions agree well with data from dam failures for which k, and thus η, can be estimated. The theory thus provides a rapid means of predicting the plausible range of values of peak discharge at the breach in an earthen dam as long as the impounded water volume and the water depth at the dam face can be estimated.

Publication type Article
Publication Subtype Journal Article
Title Methods for predicting peak discharge of floods caused by failure of natural and constructed earthen dams
Series title Water Resources Research
DOI 10.1029/97WR01616
Volume 33
Issue 10
Year Published 1997
Language English
Publisher American Geophysical Union
Contributing office(s) Oregon Water Science Center
Description 13 p.
First page 2337
Last page 2348
Online Only (Y/N) N
Additional Online Files (Y/N) N
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