通过优化机器学习技术开发洪水测绘程序。案例研究:罗马尼亚普拉霍瓦河流域

IF 4.7 2区 地球科学 Q1 WATER RESOURCES
Daniel Constantin Diaconu , Romulus Costache , Abu Reza Md. Towfiqul Islam , Manish Pandey , Subodh Chandra Pal , Arun Pratap Mishra , Chaitanya Baliram Pande
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引用次数: 0

摘要

研究区域位于罗马尼亚中南部地区的普拉霍瓦河流域。研究重点本研究旨在利用最先进的机器学习和优化程序来评估洪水的易发性。为实现这一目标,我们在机器学习模型中采用了十个与洪水相关的变量作为自变量。这些变量包括坡度角、收敛指数、与河流的距离、海拔高度、平面曲率、水文土壤类别、岩性、地形湿润指数、降雨量和土地利用。在四个混合模型的训练中,我们使用了 158 个洪水地点作为因变量:深度学习神经网络-统计指数(DLNN-SI)、粒子群优化-深度学习神经网络-统计指数(PSO-DLNN-SI)、支持向量机-统计指数(SVM-SI)和粒子群优化-支持向量机-统计指数(PSO-SVM-SI)。利用统计指数法,我们计算出了每个洪水预测等级或类别的系数。PSO-DLNN-SI 模型表现最佳,AUC-ROC 曲线达到 0.952。值得注意的是,PSO 算法的应用大大提高了模型的性能。此外,需要强调的是,研究区域约有 25% 的面积易受洪水事件影响。考虑到本研究中应用的模型非常精确的结果,我们可以说,从水文角度来看,目前的研究有助于更好地理解洪水对普拉霍瓦河流域不同地区的影响强度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing flood mapping procedure through optimized machine learning techniques. Case study: Prahova river basin, Romania

Study region

Prahova river basin located in the central-southern region of Romania.

Study focus

This study aims to assess the susceptibility to flooding by using state-of-the-art machine learning and optimization procedures. To achieve this goal, we employed ten flood-related variables as independent variables in our machine learning models. These variables include slope angle, convergence index, distance from the river, elevation, plan curvature, hydrological soil group, lithology, topographic wetness index, rainfall, and land use. We used 158 flood locations as dependent variables in the training of four hybrid models: Deep Learning Neural Network-Statistical Index (DLNN-SI), Particle Swarm Optimization-Deep Learning Neural Network-Statistical Index (PSO-DLNN-SI), Support Vector Machine-Statistical Index (SVM-SI), and Particle Swarm Optimization-Support Vector Machine-Statistical Index (PSO-SVM-SI). Utilizing the Statistical Index method, we calculated coefficients for each flood predictor class or category.

New hydrological insights for the region

The PSO-DLNN-SI model demonstrated the best performance, achieving an AUC-ROC curve of 0.952. It's worth noting that the application of the PSO algorithm significantly enhanced the model's performance. Additionally, it's crucial to highlight that approximately 25 % of the study region exhibits a high to very high susceptibility to flood events. Taking into account the very precise results of the models applied in the present study, we can state that from a hydrological point of view, the current research contributes to a better understanding of the intensity with which floods can affect the different areas of the Prahova river basin.

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来源期刊
Journal of Hydrology-Regional Studies
Journal of Hydrology-Regional Studies Earth and Planetary Sciences-Earth and Planetary Sciences (miscellaneous)
CiteScore
6.70
自引率
8.50%
发文量
284
审稿时长
60 days
期刊介绍: Journal of Hydrology: Regional Studies publishes original research papers enhancing the science of hydrology and aiming at region-specific problems, past and future conditions, analysis, review and solutions. The journal particularly welcomes research papers that deliver new insights into region-specific hydrological processes and responses to changing conditions, as well as contributions that incorporate interdisciplinarity and translational science.
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