4.7 Article

A systematic approach to selecting the best probability models for annual maximum rainfalls - A case study using data in Ontario (Canada)

Journal

JOURNAL OF HYDROLOGY
Volume 553, Issue -, Pages 49-58

Publisher

ELSEVIER
DOI: 10.1016/j.jhydrol.2017.07.052

Keywords

Extreme rainfall process; Frequency analysis; Statistical modelling; Probability distributions; Extreme-value analysis

Funding

  1. Faculty of Engineering at McGill University
  2. NSERC FloodNet Strategic Network

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Many probability distributions have been developed to model the annual maximum rainfall series (AMS). However, there is no general agreement as to which distribution should be used due to the lack of a suitable evaluation method. This paper presents hence a general procedure for assessing systematically the performance of ten commonly used probability distributions in rainfall frequency analyses based on their descriptive as well as predictive abilities. This assessment procedure relies on an extensive set of graphical and numerical performance criteria to identify the most suitable models that could provide the most accurate and most robust extreme rainfall estimates. The proposed systematic assessment approach has been shown to be more efficient and more robust than the traditional model selection method based on only limited goodness-of-fit criteria. To test the feasibility of the proposed procedure, an illustrative application was carried out using 5-min, 1-h, and 24-h annual maximum rainfall data from a network of 21 raingages located in the Ontario region in Canada. Results have indicated that the GEV, GNO, and PE3 models were the best models for describing the distribution of daily and sub-daily annual maximum rainfalls in this region. The GEV distribution, however, was preferred to the GNO and PE3 because it was based on a more solid theoretical basis for representing the distribution of extreme random variables. (C) 2017 Elsevier B.V. All rights reserved.

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