Incorporating Dynamic Drainage Supervision into Deep Learning for Accurate Real-Time Flood Simulation in Urban Areas

IF 11.4 1区 环境科学与生态学 Q1 ENGINEERING, ENVIRONMENTAL Water Research Pub Date : 2024-11-19 DOI:10.1016/j.watres.2024.122816
Hancheng Ren, Bo Pang, Gang Zhao, Haijun Yu, Peinan Tian, Chenran Xie
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Abstract

Urban flooding has become a prevalent issue in cities worldwide. Urban flood dynamics differ significantly from those in natural watersheds, primarily because of the intricate drainage systems and the high spatial heterogeneity of urban surfaces, which pose considerable challenges for accurate and rapid flood simulation. In this study, an urban drainage-supervised flood model (UDFM) for urban flood simulation is proposed. The urban flood process is decoupled into drainage routing and surface flood inundation. On the basis of physical and deep learning drainage models, a hybrid module combining deep learning and dimensionality reduction algorithm is adopted to convert the 1D drainage overflow process into a high-resolution, spatiotemporal 2D pluvial flooding process. Compared with existing state-of-the-art surrogate models for rapid flood simulation, the UDFM more comprehensively and accurately represents the role of drainage systems in urban flood dynamics, providing high-resolution predictions of flood depth and velocity. When applied to a highly urbanized district in Shenzhen, UDFM-deep learning demonstrated real-time predictive capabilities and high accuracy, particularly in simulating flow velocity, with average Nash efficiency coefficients improved by 0.112 and 0.251 compared with those of a response surface model (RSM) and a low-fidelity model (LFM), respectively. These findings underscore the critical importance of drainage system overflow in urban surface flood simulations. The UDFM enhances accuracy, flexibility, interpretability, and extensibility without requiring additional physical model construction. This research introduces a novel hierarchical surrogate model structure for urban flood simulation, offering valuable insights for rapid flood warning and risk management in urban environments.

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将动态排水监督纳入深度学习,实现城市地区准确的实时洪水模拟
城市内涝已成为全球城市的一个普遍问题。城市洪水动力学与自然流域的洪水动力学有很大不同,这主要是因为城市表面的排水系统错综复杂,空间异质性很高,这给准确、快速的洪水模拟带来了巨大挑战。本研究提出了一种用于城市洪水模拟的城市排水监督洪水模型(UDFM)。城市洪水过程被解耦为排水路由和地表洪水淹没。在物理和深度学习排水模型的基础上,采用深度学习和降维算法相结合的混合模块,将一维排水溢流过程转换为高分辨率、时空二维冲积洪水过程。与现有最先进的快速洪水模拟代用模型相比,UDFM 更全面、更准确地反映了排水系统在城市洪水动力学中的作用,提供了高分辨率的洪水深度和速度预测。将 UDFM 深度学习应用于深圳的一个高度城市化地区时,显示出了实时预测能力和高准确性,特别是在模拟流速方面,与响应面模型(RSM)和低保真模型(LFM)相比,纳什效率系数平均值分别提高了 0.112 和 0.251。这些发现强调了排水系统溢流在城市地表洪水模拟中的极端重要性。UDFM 增强了准确性、灵活性、可解释性和可扩展性,而无需额外构建物理模型。这项研究为城市洪水模拟引入了一种新颖的分层代用模型结构,为城市环境中的快速洪水预警和风险管理提供了宝贵的见解。
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来源期刊
Water Research
Water Research 环境科学-工程:环境
CiteScore
20.80
自引率
9.40%
发文量
1307
审稿时长
38 days
期刊介绍: Water Research, along with its open access companion journal Water Research X, serves as a platform for publishing original research papers covering various aspects of the science and technology related to the anthropogenic water cycle, water quality, and its management worldwide. The audience targeted by the journal comprises biologists, chemical engineers, chemists, civil engineers, environmental engineers, limnologists, and microbiologists. The scope of the journal include: •Treatment processes for water and wastewaters (municipal, agricultural, industrial, and on-site treatment), including resource recovery and residuals management; •Urban hydrology including sewer systems, stormwater management, and green infrastructure; •Drinking water treatment and distribution; •Potable and non-potable water reuse; •Sanitation, public health, and risk assessment; •Anaerobic digestion, solid and hazardous waste management, including source characterization and the effects and control of leachates and gaseous emissions; •Contaminants (chemical, microbial, anthropogenic particles such as nanoparticles or microplastics) and related water quality sensing, monitoring, fate, and assessment; •Anthropogenic impacts on inland, tidal, coastal and urban waters, focusing on surface and ground waters, and point and non-point sources of pollution; •Environmental restoration, linked to surface water, groundwater and groundwater remediation; •Analysis of the interfaces between sediments and water, and between water and atmosphere, focusing specifically on anthropogenic impacts; •Mathematical modelling, systems analysis, machine learning, and beneficial use of big data related to the anthropogenic water cycle; •Socio-economic, policy, and regulations studies.
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