Abstract

Flash floods in mountainous catchments are often caused by the rainstorm, which may result in more severe consequences than plain area floods due to less timescale and a fast-flowing front of water and debris. Flash flood forecasting is a huge challenge for hydrologists and managers due to its instantaneity, nonlinearity, and dependency. Among different methods of flood forecasting, data-driven models have become increasingly popular in recent years due to their strong ability to simulate nonlinear hydrological processes. This study proposed a Support Vector Regression (SVR) model, which is a powerful artificial intelligence-based model originated from statistical learning theory, to forecast flash floods at different lead times in a small mountainous catchment. The lagged average rainfall and runoff are identified as model input variables, and the time lags associated with the model input variables are determined by the hydrological concept of the time of response. There are 69 flash flood events collected from 1984 to 2012 in a mountainous catchment in China and then used for the model training and testing. The contribution of the runoff variables to the predictions and the phase lag of model outputs are analyzed. The results show that: (i) the SVR model has satisfactory predictive performances for one to three-hours ahead forecasting; (ii) the lagged runoff variables have a more significant effect on the predictions than the rainfall variables; and (iii) the phase lag (time difference) of prediction results significantly exists in both two- and three-hours-ahead forecasting models, however, the input rainfall information can assist in mitigating the phase lag of peak flow.

Highlights

  • Flooding is one of the most serious and frequent disasters worldwide, which causes life loss and structure damage, including buildings, roads, bridges, etc. [1,2]

  • The primary goal of this paper is to investigate the predictive capability of Support vector regression (SVR) for long lead time flood forecasting within a small mountainous catchment

  • The predictive performance of different multiple-hours-ahead models is investigated with respect to the predictions of peak flow and peak appearance time

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Summary

Introduction

Flooding is one of the most serious and frequent disasters worldwide, which causes life loss and structure damage, including buildings, roads, bridges, etc. [1,2]. The changing conditions (e.g., global warming, climate extremes, population growth, etc.,) largely exaggerate flood risk, which brings more severe challenges to hydrologic forecasters [6,7]. Various hydrological models have been developed and broadly used for flood forecasting [8,9,10,11,12,13,14]. These hydrological models can be divided into three categories, namely lumped (e.g., Xinanjiang model), semi-distributed (e.g., TOPMODEL) and distributed models (e.g., SWAT) [15]

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