4.7 Article

An artificial neural network model to predict debris-flow volumes caused by extreme rainfall in the central region of South Korea

期刊

ENGINEERING GEOLOGY
卷 281, 期 -, 页码 -

出版社

ELSEVIER
DOI: 10.1016/j.enggeo.2020.105979

关键词

Debris-flows; Debris-flow volume; Artificial neural network; Regression; Prediction model; Extreme rainfall

资金

  1. Basic Research Laboratory Program through the National Research Foundation of Korea (NRF) - Ministry of Science and ICT [NRF-2018R1A4A1025765]
  2. Basic Science Research Program through the NRF - Ministry of Education [NRF-2020R1A6A3A01100247]

向作者/读者索取更多资源

A study in South Korea developed an Artificial Neural Network (ANN) model to predict debris-flow volume, considering morphology, rainfall, and geology characteristics. The ANN model with two hidden neurons showed the highest R-2 value (0.828) and the lowest MSE value (0.022). The study demonstrated the potential of the developed ANN model as a useful resource for decision-making and barrier designing in debris-flow prone areas in South Korea.
In South Korea, the risk of debris-flow is relatively high due to the country's vast mountainous topographical features and intense continuous rainfall during the summer. Debris-flows can result in the loss of human life and severe property damage, which can be made worse due to the poor spatiotemporal predictability of such hazards. Therefore, it is essential to research the preemptive prediction and mitigation of debris-flow hazards. For this purpose, this study developed an ANN model to predict the debris-flow volume based on 63 historical events. By considering the morphology, rainfall, and geology characteristics of the studied area in central South Korea, the data of 15 debris-flow predisposing factors were obtained. Among these data, four predisposing factors (watershed area, channel length, watershed relief, and rainfall data) were selected based on Pearson's correlation analysis to check for significant correlations with the debris-flow volume. To determine the best performing ANN model, a validation testing was carried out involving ten-fold cross-validation with MSE and R-2 using both training and validation datasets, which were randomly split into a 7:3 ratio. The model performance validation results showed that an ANN model with two hidden neurons (4 x 2 x 1 architecture) had the highest R-2 value (0.828) and the lowest MSE (0.022). In addition, in a comparative study with other existing regression models, the ANN model showed better results in terms of adjusted R-2 value (0.911) using all datasets. Furthermore, 94% of the observed debris-flow volumes from the ANN model were within 1:2 and 2:1 lines of the predicted volumes. The results of this study have shown the potentiality of the developed ANN model to be a useful resource for decision-making and designing barriers in areas prone to debris-flows in South Korea.

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