Article ID Journal Published Year Pages File Type
496033 Applied Soft Computing 2013 13 Pages PDF
Abstract

This study presented various soft computing techniques for forecasting the hourly precipitations during tropical cyclones. The purpose of the current study is to present a concise and synthesized documentation of the current level of skill of various models at precipitation forecasts. The techniques involve artificial neural networks (ANN) comprising the multilayer perceptron (MLP) with five training methods (denoted as ANN-1, ANN-2, ANN-3, ANN-4, and ANN-5), and decision trees including classification and regression tree (CART), Chi-squared automatic interaction detector (CHAID), and exhaustive CHAID (E-CHAID). The developed models were applied to the Shihmen Reservoir Watershed in Taiwan. The traditional statistical models including multiple linear regressions (MLR), and climatology average model (CLIM) were selected as the benchmarks and compared with these machine learning. A total of 157 typhoons affecting the watershed were collected. The measures used include numerical statistics and categorical statistics. The RMSE criterion was employed to assess the suitable scenario, while the categorical scores, bias, POD, FAR, HK, and ETS were based on the rain contingency table. Consequently, this study found that ANN and decision trees provide better prediction compared to traditional statistical models according to the various average skill scores.

Graphical abstractFigure optionsDownload full-size imageDownload as PowerPoint slideHighlights► The soft computing techniques are modeled for rainfall forecasts during tropical cyclones. ► These techniques involve the multilayer perceptron (MLP) with five training methods, and decision trees including CART, CHAID, and exhaustive CHAID. ► The traditional statistical models including multiple linear regressions (MLR) and climatology average model (CLIM) are selected as the benchmarks. ► The 157 tropical cyclones affecting the studied watershed are collected. ► MLP and decision trees provide better prediction compared to traditional statistical models.

Related Topics
Physical Sciences and Engineering Computer Science Computer Science Applications
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