Estimating flood statistics from basin characteristics in Scotland
Abstract
Estimation of the probability of occurrence of future flood events at
a site is frequently required for the design of bridges, culverts,
dams and other river engineering works. This study considers a method
for estimating the flood frequency distribution from the physical
characteristics of the drainage basin for use in Scotland when
adequate records of river discharge are not available. The data base
collated includes 3071 station years of annual maximum flood peaks for
168 high quality gauging stations and 12 physical characteristics for
each drainage basin. A linear regression model is derived which
explains 91% of the variation in the average magnitude of floods using
five physical characteristics indexing drainage area, rainfall, stream
density, soil type and lake storage. This model appears robust over
the range of basin types and shows no improvement when shrinkage or
ridge regression is employed. Five physically homogeneous subsets of
basins are derived using a clustering algorithm (NORMIX) and the same
five characteristics, with the addition of an index of channel slope.
For each of subsets 1, 3, 4 and 5, the individual dimensionless flood
frequency distributions for each station are not significantly
different from a single GEV distribution derived for that subset.
Consequently these subsets are considered to be hydrologically
homogeneous in addition to their physical homogeneity. Dimensionless
regional flood frequency distributions are produced for each subset
which allow the estimated average flood magnitude to be scaled to
estimate floods of less frequent occurrence. These regional 'growth
curves' imply a larger return period for a given magnitude flood than
those from the Natural Environment Research Council Flood Studies
Report (NERC, 1975). When the floods are described by a lognormal
model which allows for cross-correlation between stations the
respective return periods are smaller.
Type
Thesis, PhD Doctor of Philosophy
Collections
Items in the St Andrews Research Repository are protected by copyright, with all rights reserved, unless otherwise indicated.