A novel method to estimate the maximization ratio of the Probable Maximum Precipitation (PMP) using regional climate model output
Type de ressource
Auteurs/contributeurs
- Rouhani, Hassan (Auteur)
- Leconte, Robert (Auteur)
Titre
A novel method to estimate the maximization ratio of the Probable Maximum Precipitation (PMP) using regional climate model output
Résumé
The moisture maximization approach to estimate the Probable Maximum Precipitation (PMP) has a simple technique for controlling the risk of overestimating PMP: the maximization ratio is limited by an upper bound. The upper bound limit depends on storm records and watershed characteristics. However, it is not readily available in many watersheds. A robust scientific justification for limiting the maximization ratio is missing. In this paper, a novel approach is proposed to estimate the maximization ratio which does not impose an upper limit to the ratio. The new approach, which uses regional climate model data, is based on constructing annual maximum precipitable water time series with precipitable water values for which atmospheric variables are similar to the original event to be maximized. These time series are then used to estimate the 100-year return period precipitable water value required to calculate the maximization ratio. The new approach was tested in three watersheds in the province of Quebec, Canada. Results showed that maximization ratio values were lower than the proposed upper bound value for these watersheds. In comparison to the approach using an upper bound, this proposed approach reduced PMP in these watersheds by 11%. This article is protected by copyright. All rights reserved.
Publication
Water Resources Research
Date
2016-09-01
Extra
DOI: 10.1002/2016wr018603
MAG ID: 2518515503
Référence
Rouhani, H., & Leconte, R. (2016). A novel method to estimate the maximization ratio of the Probable Maximum Precipitation (PMP) using regional climate model output. Water Resources Research. https://doi.org/10.1002/2016wr018603
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