Predicting Future Flood Risks in the Face of Climate Change: A Frequency Analysis Perspective

Author:

Anghel Cristian Gabriel1ORCID,Ilinca Cornel1ORCID

Affiliation:

1. Faculty of Hydrotechnics, Technical University of Civil Engineering Bucharest, Lacul Tei, Nr. 122-124, 020396 Bucharest, Romania

Abstract

The frequency analysis of maximum flows represents a direct method to predict future flood risks in the face of climate change. Thus, the correct use of the tools (probability distributions and methods of estimating their parameters) necessary to carry out such analyzes is required to avoid possible negative consequences. This article presents four probability distributions from the generalized Beta families, using the L- and LH-moments method as parameter estimation. New elements are presented regarding the applicability of Dagum, Paralogistic, Inverse Paralogistic and the four-parameter Burr distributions in the flood frequency analysis. The article represents the continuation of the research carried out in the Faculty of Hydrotechnics, being part of larger and more complex research with the aim of developing a normative regarding flood frequency analysis using these methods. According to the results obtained, among the four analyzed distributions, the Burr distribution was found to be the best fit model because the theoretical values of the statistical indicators calibrated the corresponding values of the observed data. Considering the existence of more rigorous selection criteria, it is recommended to use these methods in the frequency analysis.

Publisher

MDPI AG

Subject

Water Science and Technology,Aquatic Science,Geography, Planning and Development,Biochemistry

Reference53 articles.

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3. (1981). Bulletin 17B Guidelines for Determining Flood Flow Frequency, Office of Water Data Coordination. Hydrology Subcommittee; Interagency Advisory Committee on Water Data; U.S. Department of the Interior; U.S. Geological Survey.

4. (2017). Bulletin 17C Guidelines for Determining Flood Flow Frequency, U.S. Department of the Interior, U.S. Geological Survey.

5. Anghel, C.G., and Ilinca, C. (2023). Evaluation of Various Generalized Pareto Probability Distributions for Flood Frequency Analysis. Water, 15.

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