Articles | Volume 16, issue 8
https://doi.org/10.5194/nhess-16-1897-2016
https://doi.org/10.5194/nhess-16-1897-2016
Research article
 | 
16 Aug 2016
Research article |  | 16 Aug 2016

Multi-objective optimization of typhoon inundation forecast models with cross-site structures for a water-level gauging network by integrating ARMAX with a genetic algorithm

Huei-Tau Ouyang

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Cited articles

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Typhoon inundation forecast model for a gauging network is proposed. Model inputs are identified by cross-correlation and mutual information analysis. Optimal ARMAX model structures are searched for considering three objective functions, including the forecasting capacity in water level throughout the event, the accuracy in forecasting peak water levels and the time at which peak water levels are likely to occur. Characteristics of the resultant models subject to various objectives are examined.
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