STORM SURGE FORECAST MODEL USING GENETIC PROGRAMMING

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Authors

Keywords:

Storm surge; Genetic programming; Typhoon; Surge deviation; White-box forecasting.

Abstract

Stormsurge is a typical genuine fiasco coming from the ocean. Therefore, an accurate forecast of surges is a vital assignment to dodge property misfortunes and decrease the chance of tropical storm surges. Genetic Programming (GP) is an evolution-based model learning technique that can simultaneously find the functional form and the numeric coefficients for the model. Moreover, GP has been widely applied to build models for predictive problems. However, GP has seldom been applied to the problem of storm surge forecasting. In this paper, a new method to use GP for evolving models for storm surge forecasting is proposed. Experimental results on data-sets collected from the Tottori coast of Japan show that GP can become more accurate storm surge forecasting models than other standard machine learning methods. Moreover, GP can automatically select relevant features when evolving storm surge forecasting models, and the models developed by GP are interpretable.

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Published

16-11-2020

How to Cite

Quyen. “STORM SURGE FORECAST MODEL USING GENETIC PROGRAMMING”. Journal of Military Science and Technology, no. 69A, Nov. 2020, pp. 75-89, https://en.jmst.info/index.php/jmst/article/view/133.

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Section

Research Articles