Stochastic modelling of flow sequences for improved prediction of fluvial flood hazards

Author:

Patidar Sandhya1ORCID,Allen Deonie2,Haynes Rick3,Haynes Heather1

Affiliation:

1. Institute for Infrastructure & Environment, School of Energy, Geoscience, Infrastructure and Society, Heriot Watt University, Edinburgh EH14 4AS, UK

2. EcoLab – Laboratoire écologie fonctionnelle et environnement, University of Toulouse, Toulouse, France

3. Scottish Environment Protection Agency, 231 Corstorphine Road, Edinburgh EH12 7AT, UK

Abstract

AbstractThe availability of historical streamflow data of the desired length is often limited and, in these situations, the ability to synthetically generate statistically significant datasets becomes important. We previously developed a highly efficient stochastic modelling approach for the synthetic generation of daily streamflow sequences using the systematic combination of a hidden Markov model with the generalized Pareto distribution (the HMM-GP model). Daily streamflow sequences provide limited information on various significant small duration flooding events exceeding the peak over threshold values, but these are averaged out in the daily datasets. These small duration intense flooding events are often capable of causing significant damage and are important in conducting thorough flood risk management and flood risk assessment studies. This paper presents upgrades to our HMM-GP stochastic modelling approach and examines its efficiency in simulating streamflow at a temporal resolution of 15 minutes. The potential of the HMM-GP model in simulating a synthetic 15-minute streamflow series is investigated by comparing various statistical characteristics (e.g. percentiles, the probability density distribution and the autocorrelation function) of the observed streamflow records with 100 synthetically simulated streamflow time series. The proposed modelling schematics are robustly validated across case studies in four UK rivers (the Don, Nith, Dee and Tweed).

Publisher

Geological Society of London

Subject

Geology,Ocean Engineering,Water Science and Technology

Reference37 articles.

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