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利用人工智能揭示城市河流洪水水力学的复杂性。

Unraveling the complexities of urban fluvial flood hydraulics through AI.

机构信息

Villanova Centre of Resilient Water System, Villanova University, Villanova, PA, USA.

Department of Earth and Planetary Sciences, Washington University in St. Louis, St. Louis, MO, USA.

出版信息

Sci Rep. 2022 Nov 4;12(1):18738. doi: 10.1038/s41598-022-23214-9.

Abstract

As urbanization increases across the globe, urban flooding is an ever-pressing concern. Urban fluvial systems are highly complex, depending on a myriad of interacting variables. Numerous hydraulic models are available for analyzing urban flooding; however, meeting the demand of high spatial extension and finer discretization and solving the physics-based numerical equations are computationally expensive. Computational efforts increase drastically with an increase in model dimension and resolution, preventing current solutions from fully realizing the data revolution. In this research, we demonstrate the effectiveness of artificial intelligence (AI), in particular, machine learning (ML) methods including the emerging deep learning (DL) to quantify urban flooding considering the lower part of Darby Creek, PA, USA. Training datasets comprise multiple geographic and urban hydraulic features (e.g., coordinates, elevation, water depth, flooded locations, discharge, average slope, and the impervious area within the contributing region, downstream distance from stormwater outfalls and dams). ML Classifiers such as logistic regression (LR), decision tree (DT), support vector machine (SVM), and K-nearest neighbors (KNN) are used to identify the flooded locations. A Deep neural network (DNN)-based regression model is used to quantify the water depth. The values of the evaluation matrices indicate satisfactory performance both for the classifiers and DNN model (F-1 scores- 0.975, 0.991, 0.892, and 0.855 for binary classifiers; root mean squared error- 0.027 for DNN regression). In addition, the blocked K-folds Cross Validation (CV) of ML classifiers in detecting flooded locations showed satisfactory performance with the average accuracy of 0.899, which validates the models to generalize to the unseen area. This approach is a significant step towards resolving the complexities of urban fluvial flooding with a large multi-dimensional dataset in a highly computationally efficient manner.

摘要

随着全球城市化进程的加快,城市内涝问题日益突出。城市河流系统非常复杂,取决于众多相互作用的变量。有许多水力模型可用于分析城市内涝;然而,满足高空间扩展和更精细离散化的需求并解决基于物理的数值方程在计算上是昂贵的。随着模型维度和分辨率的增加,计算工作量会急剧增加,从而阻止当前的解决方案充分实现数据革命。在这项研究中,我们展示了人工智能(AI),特别是机器学习(ML)方法的有效性,包括新兴的深度学习(DL),用于量化美国宾夕法尼亚州达比溪下游部分的城市洪水。训练数据集包括多个地理和城市水力特征(例如坐标、高程、水深、淹没位置、流量、平均坡度以及汇流区域内的不透水区、从雨水出口和水坝下游的距离)。逻辑回归(LR)、决策树(DT)、支持向量机(SVM)和 K-最近邻(KNN)等 ML 分类器用于识别淹没位置。基于深度神经网络(DNN)的回归模型用于量化水深。评估矩阵的值表明分类器和 DNN 模型的性能都令人满意(二进制分类器的 F-1 分数为 0.975、0.991、0.892 和 0.855;DNN 回归的均方根误差为 0.027)。此外,ML 分类器在检测淹没位置时的块 K 折交叉验证(CV)表现出令人满意的性能,平均准确率为 0.899,这验证了模型可以推广到未见过的区域。这种方法是朝着使用大型多维数据集以高度计算效率解决城市河流洪水复杂性迈出的重要一步。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a389/9636396/6b32f3188aee/41598_2022_23214_Fig1_HTML.jpg

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