Urban flood hazard assessment using FLA-optimized boost algorithms in Ankara, Türkiye

IF 5.7 3区 环境科学与生态学 Q1 WATER RESOURCES
Enes Gul
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引用次数: 0

Abstract

This study presents a comprehensive analysis of flood hazard mapping in Ankara, the capital of Türkiye, highlighting the critical vulnerability of this major urban center to climate-related disasters. By applying advanced boosting algorithms—specifically, XGBoost, GradientBoost, and CatBoost—along with hyperparameter optimization through the Fick’s law algorithm (FLA), this research introduces an innovative methodology aimed at improving the reliability and accuracy of flood hazard assessments in Ankara’s urban landscape. The analysis utilizes an extensive dataset that integrates topographic, meteorological, hydrological, and anthropogenic variables to provide critical insights into the dynamics of urban flooding with a focus on Ankara’s vulnerability. This approach is novel in that it incorporates FLA for hyperparameter optimization, marking a significant advancement in flood hazard modeling and achieving higher model accuracy and generalizability. Notably, among the various determinants of flood hazard identified, elevation emerges as the most influential factor affecting flood risk in Ankara. This finding underscores the complex relationship between urban geography and flood hazards, and highlights the need for targeted urban planning and infrastructure development strategies to effectively mitigate flood risk. The implications of this research extend beyond the local setting, contributing valuable insights to the global discourse on climate change adaptation and urban resilience. By combining cutting-edge machine learning techniques with in-depth geographic analysis, this study offers a scalable and innovative model for flood hazard assessment and management, providing a critical tool for cities around the world facing similar challenges.

在土耳其安卡拉使用fla优化的boost算法进行城市洪水灾害评估
本研究对土耳其共和国首都安卡拉的洪水灾害测绘进行了全面分析,强调了这一主要城市中心对气候相关灾害的严重脆弱性。通过应用先进的增强算法——特别是XGBoost、GradientBoost和catboost——以及通过菲克定律算法(FLA)进行的超参数优化,本研究引入了一种创新的方法,旨在提高安卡拉城市景观洪水灾害评估的可靠性和准确性。该分析利用了一个广泛的数据集,整合了地形、气象、水文和人为变量,以安卡拉的脆弱性为重点,提供了对城市洪水动态的关键见解。该方法的新颖之处在于,它将FLA用于超参数优化,标志着洪水灾害建模的重大进步,并实现了更高的模型精度和泛化性。值得注意的是,在确定的洪水危险的各种决定因素中,海拔是影响安卡拉洪水风险的最重要因素。这一发现强调了城市地理与洪水灾害之间的复杂关系,并强调了有针对性的城市规划和基础设施发展战略的必要性,以有效降低洪水风险。本研究的意义超越了当地环境,为气候变化适应和城市韧性的全球论述提供了有价值的见解。通过将尖端的机器学习技术与深入的地理分析相结合,本研究为洪水灾害评估和管理提供了一个可扩展的创新模型,为世界各地面临类似挑战的城市提供了重要工具。
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来源期刊
Applied Water Science
Applied Water Science WATER RESOURCES-
CiteScore
9.90
自引率
3.60%
发文量
268
审稿时长
13 weeks
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