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Urban Flooding Prediction Method Based on the Combination of LSTM Neural Network and Numerical Model

Jian Chen, Yaowei Li, Changhui Zhang, Yangyang Tian, Zhikai Guo

2023International Journal of Environmental Research and Public Health48 citationsDOIOpen Access PDF

Abstract

At present, urban flood risk analysis and forecasting and early warning mainly use numerical models for simulation and analysis, which are more accurate and can reflect urban flood risk well. However, the calculation speed of numerical models is slow and it is difficult to meet the needs of daily flood control and emergency. How to use artificial intelligence technology to quickly predict urban flooding is a key concern and a problem that needs to be solved. Therefore, this paper combines a numerical model with good computational accuracy and an LSTM artificial neural network model with high computational efficiency to propose a new method for fast prediction of urban flooding risk. The method uses the simulation results of the numerical model of urban flooding as the data driver to construct the LSTM neural network prediction model of each waterlogging point. The results show that the method has a high prediction accuracy and fast calculation speed, which can meet the needs of daily flood control and emergency response, and provides a new idea for the application of artificial intelligence technology in the direction of flood prevention and mitigation.

Topics & Concepts

Flooding (psychology)Computer scienceArtificial neural networkFlood mythFlood controlComputational intelligenceWarning systemArtificial intelligenceData miningMachine learningGeographyPsychologyArchaeologyTelecommunicationsPsychotherapistFlood Risk Assessment and ManagementHydrological Forecasting Using AIAdvanced Technologies in Various Fields
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