Modelling annual maximum daily rainfall with the STORAGE (STOchastic RAinfall GEnerator) model

Author:

Petroselli Andrea1ORCID,De Luca Davide Luciano2ORCID,Młyński Dariusz3ORCID,Wałęga Andrzej3ORCID

Affiliation:

1. Department of Economy, Engineering, Society and Business Organization (DEIM), Tuscia University, Viterbo, Italy

2. Department of Informatics, Modelling, Electronics and System Engineering, University of Calabria, Arcavacata di Rende, Italy

3. Department of Engineering Sanitary and Water Management, University of Agriculture in Krakow, Krakow, Poland

Abstract

Abstract In this work, the capability of STORAGE (STOchastic RAinfall GEnerator) model for generating long and continuous rainfall series for the upper Vistula basin (southern Poland) is tested. Specifically, in the selected area, only parameters of depth–duration–frequency curves are known for sub-daily rainfall heights (which are usually estimated in an indirect way by using Lambor's equations from daily data), while continuous daily series with a sufficient sample size are available. Attention is focused on modelling the sample frequency distributions of daily annual maximum rainfall. The obtained results are promising for further elaborations, concerning the use of STORAGE synthetic continuous rainfall data as input for a continuous rainfall-runoff approach, to be preferred with respect to classical event-based modelling.

Publisher

IWA Publishing

Subject

Water Science and Technology

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