Integrating energy valley optimization with machine learning for flood susceptibility mapping in Kayseri, Türkiye

IF 2.1 4区 地球科学
Ahmet Toprak
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引用次数: 0

Abstract

This study responds to the growing concern about flooding and its consequences, particularly in areas prone to severe meteorological events, by employing an innovative approach to identify flood susceptibility in Kayseri. The methodology combines machine learning (ML) algorithms, namely extreme gradient boosting (XGB), categorical boosting (CB), and gradient boosting (GB), with hyperparameter optimization strategies through a hybridization process utilizing the energy valley optimizer technique. A total of 6000 data points were designated for the purposes of training, testing, and validation. In order to create these models, a total of nine variables, which have been identified as influential factors in the occurrence of floods, were selected based on data availability and a review of the relevant literature. It is noteworthy that elevation and rainfall were identified as pivotal predictors across all models. The CB model demonstrated robust predictive accuracy, with a substantial majority of instances correctly classified. The AUC values for the XGB and GB models remain notably high at 0.98, indicating robust predictive power and generalization capabilities. In the test phase, the AUC values underscore the superior performance of the XGB (0.9763) and GB (0.9739) models, with the CB model also demonstrating robust results at 0.9677. This study introduces a novel approach to flood susceptibility mapping by utilizing a range of ML methods. Its key innovations lie in the superior performance of these algorithms compared to traditional methods, as well as their inherent flexibility and heuristic capabilities. The generated flood susceptibility maps offer a detailed insight into the spatial distribution of flood susceptibility, with significant implications for urban planning and disaster preparedness.

将能量谷优化与机器学习相结合用于基耶省开塞利的洪水易感性制图
这项研究通过采用一种创新的方法来确定开塞利的洪水易感性,回应了对洪水及其后果日益增长的担忧,特别是在容易发生严重气象事件的地区。该方法结合了机器学习(ML)算法,即极端梯度增强(XGB)、分类增强(CB)和梯度增强(GB),并通过利用能量谷优化器技术的杂交过程采用超参数优化策略。总共6000个数据点被指定用于培训、测试和验证。为了创建这些模型,根据数据可用性和对相关文献的审查,共选择了9个变量,这些变量已被确定为洪水发生的影响因素。值得注意的是,海拔和降雨量被确定为所有模型的关键预测因子。CB模型显示出稳健的预测准确性,绝大多数实例被正确分类。XGB和GB模型的AUC值仍然很高,为0.98,表明具有强大的预测能力和泛化能力。在测试阶段,AUC值强调了XGB(0.9763)和GB(0.9739)模型的优越性能,而CB模型在0.9677时也显示出稳健的结果。本研究引入了一种利用一系列ML方法绘制洪水敏感性图的新方法。其关键创新在于这些算法相对于传统方法的优越性能,以及它们固有的灵活性和启发式能力。生成的洪水易感性图提供了对洪水易感性空间分布的详细洞察,对城市规划和备灾具有重要意义。
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来源期刊
Acta Geophysica
Acta Geophysica GEOCHEMISTRY & GEOPHYSICS-
CiteScore
3.80
自引率
13.00%
发文量
251
期刊介绍: Acta Geophysica is open to all kinds of manuscripts including research and review articles, short communications, comments to published papers, letters to the Editor as well as book reviews. Some of the issues are fully devoted to particular topics; we do encourage proposals for such topical issues. We accept submissions from scientists world-wide, offering high scientific and editorial standard and comprehensive treatment of the discussed topics.
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