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Training Machine Learning Surrogate Models From a High-Fidelity Physics-Based Model: Application for Real-Time Street-Scale Flood Prediction in an Urban Coastal Community

机译:培训机器从基于高保真物理的模型学习代理模型:在城市沿海社区中实时街道洪水预测的应用

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摘要

Mitigating the adverse impacts caused by increasing flood risks in urban coastal communities requires effective flood prediction for prompt action. Typically, physics-based 1-D pipe/2-D overland flow models are used to simulate urban pluvial flooding. Because these models require significant computational resources and have long run times, they are often unsuitable for real-time flood prediction at a street scale. This study explores the potential of a machine learning method, Random Forest (RF), to serve as a surrogate model for urban flood predictions. The surrogate model was trained to relate topographic and environmental features to hourly water depths simulated by a high-resolution 1-D/2-D physics-based model at 16,914 road segments in the coastal city of Norfolk, Virginia, USA. Two training scenarios for the RF model were explored: (i) training on only the most flood-prone street segments in the study area and (ii) training on all 16,914 street segments in the study area. The RF model yielded high predictive skill, especially for the scenario when the model was trained on only the most flood-prone streets. The results also showed that the surrogate model reduced the computational run time of the physics-based model by a factor of 3,000, making real-time decision support more feasible compared to using the full physics-based model. We concluded that machine learning surrogate models strategically trained on high-resolution and high-fidelity physics-based models have the potential to significantly advance the ability to support decision making in real-time flood management within urban communities.
机译:减轻了城市沿海社区洪水风险增加所造成的不利影响需要有效的洪水预测迅速行动。通常,基于物理的1-D管/ 2-D泛漏模型用于模拟城市普利洪水。由于这些模型需要大量的计算资源并长期运行时间,因此它们通常不适合街道规模的实时洪水预测。本研究探讨了机器学习方法,随机森林(RF)的潜力,作为城市洪水预测的代理模型。替代模型培训以将地形和环境特征培训,以通过弗吉尼亚州诺福克沿海市的16,914个道路段模拟的一小时水深。探索了射频模型的两种培训方案:(i)仅在研究区内的最洪水普通街道段和(ii)研究区内所有16,914街段的培训培训。 RF模型产生了高的预测技能,特别是对于仅在最泛滥街道培训的模型时的场景。结果还表明,替代模型将基于物理的模型的计算运行时间减少了3,000倍,与使用基于全部物理的模型相比,实时决策支持更加可行。我们得出结论,机器学习代理模型在高分辨率和高保真物理学的模型上进行战略培训,有可能大大推进在城市社区内实时洪水管理的决策能力。

著录项

  • 来源
    《Water resources research》 |2020年第10期|e2019WR027038.1-e2019WR027038.25|共25页
  • 作者单位

    Univ Virginia Dept Engn Syst & Environm Charlottesville VA 22903 USA|Univ Virginia Sch Engn & Appl Sci Link Lab Charlottesville VA 22903 USA;

    Univ Virginia Dept Engn Syst & Environm Charlottesville VA 22903 USA|Univ Virginia Sch Engn & Appl Sci Link Lab Charlottesville VA 22903 USA;

    Univ Virginia Dept Engn Syst & Environm Charlottesville VA 22903 USA|Univ Virginia Sch Engn & Appl Sci Link Lab Charlottesville VA 22903 USA|US Geol Survey Middleton WI USA;

    Univ Virginia Dept Engn Syst & Environm Charlottesville VA 22903 USA|Univ Virginia Sch Engn & Appl Sci Link Lab Charlottesville VA 22903 USA;

    Univ Virginia Dept Engn Syst & Environm Charlottesville VA 22903 USA|Univ Virginia Sch Engn & Appl Sci Link Lab Charlottesville VA 22903 USA|Cairo Univ Irrigat & Hydraul Engn Dept Giza Egypt|Dewberry Fairfax VA USA;

    Univ Virginia Sch Engn & Appl Sci Link Lab Charlottesville VA 22903 USA|Univ Virginia Dept Comp Sci Charlottesville VA 22903 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    flooding; machine learning; surrogate models; real#8208; time; urban hydrology; sea level rise;

    机译:洪水;机器学习;代理模型;真实‐时间;城市水文;海平面上升;

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