Deep Learning for Flood Forecasting and Monitoring in Urban Environments

Charalampos Karyotis, Tomasz Maniak, F. Doctor, R. Iqbal, V. Palade, Raymond Tang
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引用次数: 8

Abstract

This paper describes the core computational mechanisms used by an urban flood forecasting and monitoring platform developed as part of a UK Newton Fund project in Malaysia. FLUD-FLood monitoring and forecasting platform for Urban Deployment - is a novel system aiming to deliver an effective and low cost urban flood forecasting solution, which is able to accurately forecast flood risk at street level, and deliver optimized recommendations to the relevant authorities as well as an early warning alerts to members of the public. This platform is based on a hybrid Deep Learning and Fuzzy Logic based architecture. As demonstrated by the experimental results and the analysis presented in this paper, this architecture enables the proposed system to account for factors that are not included in other modern flood forecasting systems, and simultaneously process high volumes of data originating from diverse data sources, in order to deliver accurate predictions concerning urban flood events
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城市环境中洪水预报与监测的深度学习
本文描述了作为英国牛顿基金在马来西亚项目的一部分开发的城市洪水预报和监测平台所使用的核心计算机制。“城市部署的洪水监测和预报平台”是一个新颖的系统,旨在提供有效和低成本的城市洪水预报解决方案,能够准确预测街道层面的洪水风险,并向有关当局提供优化建议,并向公众发出预警。该平台基于深度学习和模糊逻辑的混合架构。正如本文的实验结果和分析所证明的那样,该架构使所提出的系统能够考虑其他现代洪水预报系统中未包含的因素,并同时处理来自不同数据源的大量数据,以便提供有关城市洪水事件的准确预测
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