Flood resilience through hybrid deep learning: Advanced forecasting for Taipei's urban drainage system

IF 8.4 2区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Li-Chiu Chang , Ming-Ting Yang , Fi-John Chang
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引用次数: 0

Abstract

The escalating impacts of climate change have intensified extreme rainfall events, placing urban drainage systems under unprecedented pressure and increasing flood risks. Addressing these challenges requires advanced flood mitigation strategies, optimized sewer operations, and responsive disaster management. This study leverages knowledge graphs to integrate diverse data sources, providing a comprehensive perspective on flood dynamics, and applies deep learning models within a Real-Time Urban Drainage Early Warning System to enhance flood management at Taipei City's Zhongshan Pumping Station in Taiwan. We proposed deep learning models, specifically Convolutional Neural Networks combined with Back Propagation Neural Networks (CNN-BP), to make multi-input multi-output multi-step (MIMOMS) forecasts on sewer water levels at intervals from 10 to 40 min (T+1 to T+4) and MIMO forecasts on the pumping station's internal (forebay) and external (river) water levels at intervals from 10 to 60 min (T+1 to T+6). The CNN-BP model exhibited superior forecast accuracy, reaching an R2 (RMSE) of 0.97 (0.08m) at T+1 for sewer water levels and an R2 (RMSE) of 0.99 (0.06m) at T+1 for both internal and external water levels. These results highlight CNN-BP's capability to accurately capture water level trends, ensuring reliable real-time responsiveness, especially during intense and sudden rainfall events. The CNN-BP's high predictive accuracy enables enhanced pump operations, strengthens early warning systems, and fosters intelligent flood control practices crucial for effective environmental management.

Abstract Image

基于混合深度学习的洪水复原力:台北市城市排水系统的先进预测
气候变化的影响不断升级,加剧了极端降雨事件,使城市排水系统面临前所未有的压力,并增加了洪水风险。应对这些挑战需要先进的防洪策略、优化的下水道运营和响应式灾害管理。本研究利用知识图谱整合不同资料来源,提供洪水动态的全面视角,并将深度学习模型应用于城市排水实时预警系统,以加强台北市中山泵站的洪水管理。我们提出了深度学习模型,特别是卷积神经网络与反向传播神经网络(CNN-BP)相结合,以间隔10至40分钟(T+1至T+4)对下水道水位进行多输入多输出多步骤(MIMOMS)预测,并以间隔10至60分钟(T+1至T+6)对泵站内部(前bay)和外部(河流)水位进行MIMO预测。CNN-BP模型具有较好的预测精度,T+1时下水道水位R2 (RMSE)为0.97 (0.08m), T+1时内外水位R2 (RMSE)均为0.99 (0.06m)。这些结果突出了CNN-BP准确捕捉水位趋势的能力,确保了可靠的实时响应,特别是在强降雨和突然降雨事件期间。CNN-BP的高预测精度提高了泵的运行效率,加强了早期预警系统,并促进了对有效环境管理至关重要的智能防洪实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Environmental Management
Journal of Environmental Management 环境科学-环境科学
CiteScore
13.70
自引率
5.70%
发文量
2477
审稿时长
84 days
期刊介绍: The Journal of Environmental Management is a journal for the publication of peer reviewed, original research for all aspects of management and the managed use of the environment, both natural and man-made.Critical review articles are also welcome; submission of these is strongly encouraged.
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