A Framework for Modelling Probabilistic Uncertainty in Rainfall Scenario Analysis
Seyed Hamed Alemohammad, Reza Ardakanian, Akbar Karimi

TL;DR
This paper introduces a two-stage rainfall scenario modeling framework combining ARMA models with frequency analysis to better capture probabilistic uncertainty in water resource planning.
Contribution
It presents a novel two-stage approach for rainfall scenario modeling that improves upon traditional ARMA methods by incorporating dry and wet event analysis.
Findings
Enhanced consistency with observed rainfall data
Better representation of dry and wet events
Improved reliability in rainfall scenario analysis
Abstract
Predicting future probable values of model parameters, is an essential pre-requisite for assessing model decision reliability in an uncertain environment. Scenario Analysis is a methodology for modelling uncertainty in water resources management modelling. Uncertainty if not considered appropriately in decision making will decrease reliability of decisions, especially in long-term planning. One of the challenges in Scenario Analysis is how scenarios are made. One of the most approved methods is statistical modelling based on Auto-Regressive models. Stream flow future scenarios in developed basins that human has made changes to the natural flow process could not be generated directly by ARMA modelling. In this case, making scenarios for monthly rainfall and using it in a water resources system model makes more sense. Rainfall is an ephemeral process which has zero values in some months…
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Taxonomy
TopicsWater resources management and optimization · Hydrology and Drought Analysis · Flood Risk Assessment and Management
