Abstract

Timely acquisition of spatial flood distribution is an essential basis for flood-disaster monitoring and management. Remote-sensing data have been widely used in water-body surveys. However, due to the cloudy weather and complex geomorphic environment, the inability to receive remote-sensing images throughout the day has resulted in some data being missing and unable to provide dynamic and continuous flood inundation process data. To fully and effectively use remote-sensing data, we developed a new decision support system for integrated flood inundation management based on limited and intermittent remote-sensing data. Firstly, we established a new multi-scale water-extraction convolutional neural network named DEU-Net to extract water from remote-sensing images automatically. A specific datasets training method was created for typical region types to separate the water body from the confusing surface features more accurately. Secondly, we built a waterfront contour active tracking model to implicitly describe the flood movement interface. In this way, the flooding process was converted into the numerical solution of the partial differential equation of the boundary function. Space upwind difference format and the time Euler difference format were used to perform the numerical solution. Finally, we established seven indicators that considered regional characteristics and flood-inundation attributes to evaluate flood-disaster losses. The cloud model using the entropy weight method was introduced to account for uncertainties in various parameters. In the end, a decision support system realizing the flood losses risk visualization was developed by using the ArcGIS application programming interface (API). To verify the effectiveness of the model constructed in this paper, we conducted numerical experiments on the model’s performance through comparative experiments based on a laboratory scale and actual scale, respectively. The results were as follows: (1) The DEU-Net method had a better capability to accurately extract various water bodies, such as urban water bodies, open-air ponds, plateau lakes etc., than the other comparison methods. (2) The simulation results of the active tracking model had good temporal and spatial consistency with the image extraction results and actual statistical data compared with the synthetic observation data. (3) The application results showed that the system has high computational efficiency and noticeable visualization effects. The research results may provide a scientific basis for the emergency-response decision-making of flood disasters, especially in data-sparse regions.

Highlights

  • From many historical flood events, it is observed that flood disaster is one of the most frequent and destructive natural disasters [1]

  • Since the submerged-area data obtained from remote-sensing images contain rich hydraulic spatial information, this paper aimed to develop a robust decision support system for integrated flood inundation management based on limited remote-sensing images

  • We could deduce that the regions affected by the flood in the Chaohu Lake Basin were primarily located in the southwest, followed by the northeast

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Summary

Introduction

Due to the dual impacts of global climate. From many historical flood events, it is observed that flood disaster is one of the most frequent and destructive natural disasters [1]. Due to the dual impacts of global climate change and human activities, the frequency of extreme weather has dramatically increased, change and human activities, the frequency of extreme weather has dramatically and large-scale floods have occurred frequently, bringing vast losses of life and propincreased, and large-scale floods have occurred frequently, bringingin vast lossesparts of life erty to people [2]. Expressively higher than in 2020 previous years, causing the largestin various parts of. The flood disaster was so disastrous years, that causing disaster since 1998 Figure.

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