Abstract

The paper presents a hybrid approach for short-term river flood forecasting. It is based on multi-modal data fusion from different sources (weather stations, water height sensors, remote sensing data). To improve the forecasting efficiency, the machine learning methods and the Snowmelt-Runoff physical model are combined in a composite modeling pipeline using automated machine learning techniques. The novelty of the study is based on the application of automated machine learning to identify the individual blocks of a composite pipeline without involving an expert. It makes it possible to adapt the approach to various river basins and different types of floods. Lena River basin was used as a case study since its modeling during spring high water is complicated by the high probability of ice-jam flooding events. Experimental comparison with the existing methods confirms that the proposed approach reduces the error at each analyzed level gauging station. The value of Nash–Sutcliffe model efficiency coefficient for the ten stations chosen for comparison is 0.80. The other approaches based on statistical and physical models could not surpass the threshold of 0.74. Validation for a high-water period also confirms that a composite pipeline designed using automated machine learning is much more efficient than stand-alone models.

Highlights

  • IntroductionRiver floods can be considered as a crucial type of dangerous event

  • In this subsection we are analyzing the most significant causes of floods and the specific features of the Lena River basin, which do not allow to apply of existing approaches for flood modeling in this area

  • All models have been configured to give a forecast for seven days ahead

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Summary

Introduction

River floods can be considered as a crucial type of dangerous event. The damage caused by a river flood may reach hundreds of thousands of dollars [1,2]. Natural hazards take lives and affect a large number of people every year [3]. Because it is vital to predicting such floods successfully, there are a lot of scientific works dedicated to flooding operational modeling based on various solutions [4]. To reduce the damage caused by natural disasters, forecasting systems are used

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