Article ID Journal Published Year Pages File Type
13434572 Procedia Computer Science 2019 10 Pages PDF
Abstract
Urban flooding is a major problem in Thailand. An essential countermeasure towards better flooding management is to forecast flood water levels in the real-time manner. Most existing early warning systems (EWS) in Thailand contain a lot of miscalculations when they face with real situations. Towards prediction improvement, this paper presents hydrological modeling augmented with alternative five machine learning techniques; linear regression, neural network regression, Bayesian linear regression and boosted decision tree regression. As the testbed system, the so-called MIKE-11 hydrologic forecasting model, developed by Danish Hydraulic Institute (DHI), Denmark, is used. To test error reduction in runoff forecasting, the water-level records during 2012-2016 data are used for training and the derived model is tested on the record of 2017, in the experiments.
Related Topics
Physical Sciences and Engineering Computer Science Computer Science (General)
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