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Development and evaluation of a stochastic daily rainfall model with long-term variability

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posted on 2025-05-11, 15:09 authored by A. F. M. Kamal Chowdhury, Natalie Lockart, Garry Willgoose, George KuczeraGeorge Kuczera, Anthony KiemAnthony Kiem, Nadeeka Parana Manage
The primary objective of this study is to develop a stochastic rainfall generation model that can match not only the short resolution (daily) variability but also the longer resolution (monthly to multiyear) variability of observed rainfall. This study has developed a Markov chain (MC) model, which uses a two-state MC process with two parameters (wet-to-wet and dry-to-dry transition probabilities) to simulate rainfall occurrence and a gamma distribution with two parameters (mean and standard deviation of wet day rainfall) to simulate wet day rainfall depths. Starting with the traditional MC-gamma model with deterministic parameters, this study has developed and assessed four other variants of the MC-gamma model with different parameterisations. The key finding is that if the parameters of the gamma distribution are randomly sampled each year from fitted distributions rather than fixed parameters with time, the variability of rainfall depths at both short and longer temporal resolutions can be preserved, while the variability of wet periods (i.e. number of wet days and mean length of wet spell) can be preserved by decadally varied MC parameters. This is a straightforward enhancement to the traditional simplest MC model and is both objective and parsimonious.

Funding

ARC

LP120200494

History

Journal title

Hydrology and Earth System Sciences

Volume

21

Issue

12

Pagination

6541-6558

Publisher

Copernicus GmbH

Language

  • en, English

College/Research Centre

Faculty of Engineering and Built Environment

School

School of Engineering

Rights statement

© Author(s) 2017. This work is distributed under the Creative Commons Attribution 3.0 License.

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