在卢旺达使用机器学习和遥感技术进行河流和洪水预测,以支持农村第一英里交通连接

IF 3.3 Q2 ENVIRONMENTAL SCIENCES
Denis Macharia, Lambert Mugabo, Felix Kasiti, Abbie Noriega, Laura A. S. MacDonald, Evan Thomas
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引用次数: 0

摘要

洪水是卢旺达日益增加的风险,它往往使农村社区孤立并限制其流动性。在这项工作中,我们开发了一个水流模型,以确定洪水和降雨异常是否解释了农村步道桥梁使用的变化,这是由原位运动激活的数码相机直接测量的。我们的调查所依赖的洪水数据和河流流量并不容易获得,因为作为本研究重点的大多数河流都未被测量。我们通过探索基于过程和机器学习模型的性能,为这些河流开发了一个溪流模型。然后,我们选择了最佳模型来估计每个桥位的流量,以便调查从运动激活摄像机收集的天气事件和行人数量之间的关系。梯度增强机模型(GBM)的Kling-Gupta效率(KGE)得分最高,为0.79,其次是随机森林模型(RFM)和广义线性模型(GLM), KGE得分分别为0.73和0.66。基于物理的变入渗能力模型(VIC)的KGE评分为0.07。在流量超过50%的阈值下,GBM模型预测了2013年至2022年间报告的90%的洪水事件。研究发现,在7个桥位点中,4个桥位点的月通行次数与洪水事件总数呈正相关(r = 0.36 ~ 0.84),其余桥位点的月通行次数与洪水事件总数呈正相关(r = -0.33 ~ -0.53)。与月降雨量的相关性普遍为中至高,其中一个桥址与月降雨量无相关性,其余桥址与月降雨量的相关性在0.15 ~ 0.76之间。这些结果揭示了天气事件与流动性之间的联系,并支持扩大步道桥计划以减轻洪水风险。论文最后提出了改善卢旺达河流流量和洪水预测的建议,以支持与步道桥梁相连的基于社区的洪水预警系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Streamflow and flood prediction in Rwanda using machine learning and remote sensing in support of rural first-mile transport connectivity
Flooding, an increasing risk in Rwanda, tends to isolate and restrict the mobility of rural communities. In this work, we developed a streamflow model to determine whether floods and rainfall anomalies explain variations in rural trail bridge use, as directly measured by in-situ motion-activated digital cameras. Flooding data and river flows upon which our investigation relies are not readily available because most of the rivers that are the focus of this study are ungauged. We developed a streamflow model for these rivers by exploring the performance of process-based and machine learning models. We then selected the best model to estimate streamflow at each bridge site to enable an investigation of the associations between weather events and pedestrian volumes collected from motion-activated cameras. The Gradient Boosting Machine model (GBM) had the highest skill with a Kling-Gupta Efficiency (KGE) score of 0.79 followed by the Random Forest model (RFM) and the Generalized Linear Model (GLM) with KGE scores of 0.73 and 0.66, respectively. The physically-based Variable Infiltration Capacity model (VIC) had a KGE score of 0.07. At the 50% flow exceedance threshold, the GBM model predicted 90% of flood events reported between 2013 and 2022. We found moderate to strong positive correlations between total monthly crossings and the total number of flood events at four of the seven bridge sites (r = 0.36–0.84), and moderate negative correlations at the remaining bridge sites (r = -0.33– -0.53). Correlation with monthly rainfall was generally moderate to high with one bridge site showing no correlation and the rest having correlations ranging between 0.15–0.76. These results reveal an association between weather events and mobility and support the scaling up of the trail bridge program to mitigate flood risks. The paper concludes with recommendations for the improvement of streamflow and flood prediction in Rwanda in support of community-based flood early warning systems connected to trail bridges.
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来源期刊
Frontiers in Climate
Frontiers in Climate Environmental Science-Environmental Science (miscellaneous)
CiteScore
4.50
自引率
0.00%
发文量
233
审稿时长
15 weeks
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