Spatiotemporal Variability of Channel Roughness and its Substantial Impacts on Flood Modeling Errors

IF 7.3 1区 地球科学 Q1 ENVIRONMENTAL SCIENCES Earths Future Pub Date : 2024-07-15 DOI:10.1029/2023EF004257
Md Abdullah Al Mehedi, Shah Saki, Krutikkumar Patel, Chaopeng Shen, Sagy Cohen, Virginia Smith, Adnan Rajib, Emmanouil Anagnostou, Tadd Bindas, Kathryn Lawson
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Abstract

Manning's roughness coefficient, n, is used to describe channel roughness, and is a widely sought-after key parameter for estimating and predicting flood propagation. Due to its control of flow velocity and shear stress, n is critical for modeling timing of floods and pollutants, aquatic ecosystem health, infrastructural safety, and so on. While alternative formulations exist, open-channel n is typically regarded as temporally constant, determined from lookup tables or calibration, and its spatiotemporal variability was never examined holistically at large scales. Here, we developed and analyzed a continental-scale n dataset (along with alternative formulations) calculated from observed velocity, slope, and hydraulic radius in 200,000 surveys conducted over 5,000 U.S. sites. These large, diverse observations allowed training of a Random Forest (RF) model capable of predicting n (or alternative parameters) at high accuracy (Nash Sutcliffe model efficiency >0.7) in space and time. We show that predictable time variability explains a large fraction (∼35%) of n variance compared to spatial variability (50%). While exceptions abound, n is generally lower and more stable under higher streamflow conditions. Other factorial influences on n including land cover, sinuosity, and particle sizes largely agree with conventional intuition. Accounting for temporal variability in n could lead to substantially larger (45% at the median site) estimated flow velocities under high-flow conditions or lower (44%) velocities under low-flow conditions. Habitual exclusion of n temporal dynamics means flood peaks could arrive days before model-predicted flood waves, and peak magnitude estimation might also be erroneous. We therefore offer a model of great practical utility.

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河道粗糙度的时空变异性及其对洪水模型误差的巨大影响
曼宁糙度系数 n 用于描述河道糙度,是估算和预测洪水传播的关键参数,受到广泛关注。由于其对流速和剪应力的控制,n 对于洪水和污染物的时间建模、水生生态系统健康、基础设施安全等至关重要。虽然存在其他公式,但明渠 n 通常被视为时间常数,由查找表或校准确定,从未在大尺度上对其时空变异性进行整体研究。在此,我们开发并分析了一个大陆尺度的 n 数据集(以及替代公式),该数据集是根据在美国 5000 个地点进行的 20 万次调查中观测到的速度、坡度和水力半径计算得出的。通过这些大量、多样的观测数据,可以训练出一个随机森林(RF)模型,该模型能够在空间和时间上高精度预测 n(或替代参数)(Nash Sutcliffe 模型效率为 0.7)。我们的研究表明,与空间变异性(50%)相比,可预测的时间变异性可以解释 n 变异的很大一部分(∼35%)。虽然例外情况很多,但在较高的溪流条件下,n 一般较低且更稳定。其他因素对 n 的影响,包括土地覆盖、蜿蜒度和颗粒大小,与传统的直觉基本一致。考虑到 n 的时间变化,在高流量条件下,估计流速会大大增加(中位数站点为 45%),而在低流量条件下,估计流速则会降低(44%)。习惯性地排除 n 的时间动态意味着洪峰可能会在模型预测的洪水波前几天到来,而且洪峰量级的估计也可能会出错。因此,我们提供了一个非常实用的模型。
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来源期刊
Earths Future
Earths Future ENVIRONMENTAL SCIENCESGEOSCIENCES, MULTIDI-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
11.00
自引率
7.30%
发文量
260
审稿时长
16 weeks
期刊介绍: Earth’s Future: A transdisciplinary open access journal, Earth’s Future focuses on the state of the Earth and the prediction of the planet’s future. By publishing peer-reviewed articles as well as editorials, essays, reviews, and commentaries, this journal will be the preeminent scholarly resource on the Anthropocene. It will also help assess the risks and opportunities associated with environmental changes and challenges.
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