动态水文系统的精确洪水预报:整合LP-III分布、多层神经网络和斯瓦特盆地CMIP6预测

IF 3 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Muhammad Waqas, Basir Ullah, Afed Ullah Khan, Ateeq Ur Rauf, Ilman Khan, Muhammad Bilal Ahmad, Ezaz Ali Khan, Shujaat Ali, Dilawar Shah, Muhammad Tahir
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引用次数: 0

摘要

洪水是最具破坏性的自然灾害之一,由于其不可预测性和复杂的行为,带来了重大挑战。本研究通过将传统统计方法与先进的机器学习(ML)模型相结合,为巴基斯坦斯瓦特河Chakdara监测站开发了一个强大的洪水预测框架。四种统计分布——对数正态分布、甘贝尔分布、一般极值分布(GEV)和对数皮尔逊型分布(LP-III)——被评估用于洪水频率分析。其中LP-III分布表现最佳,R2值为0.78。为了提高预测精度,采用人工神经网络(ANN)和多层神经网络(MLNN)两种机器学习模型。MLNN模型的表现优于其他所有模型,训练的R2值为0.96,测试的R2值为0.93,证实了其对流量预测的高可靠性。此外,在SSP245和SSP585情景下,使用缩小和偏差校正的CMIP6预估,训练后的MLNN适应了未来的气候条件。这使得在不断变化的降水和温度趋势下进行可靠的流量预测成为可能。提出的混合方法不仅提高了洪水预测的准确性,而且还支持减轻洪水风险的长期规划。这些发现为政策制定者、工程师和灾害管理机构在斯瓦特河流域设计适应性基础设施和实施积极的洪水管理战略提供了重要见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Precision Flood Forecasting in Dynamic Hydrological Systems: Integrating LP-III Distributions, Multilayer Neural Networks, and CMIP6 Projections for the Swat Basin

Precision Flood Forecasting in Dynamic Hydrological Systems: Integrating LP-III Distributions, Multilayer Neural Networks, and CMIP6 Projections for the Swat Basin

Floods are among the most destructive natural disasters, presenting significant challenges due to their unpredictability and complex behavior. This study develops a robust flood prediction framework for the Chakdara monitoring station on the Swat River, Pakistan, by integrating traditional statistical methods with advanced machine learning (ML) models. Four statistical distributions—Log-Normal, Gumbel, General Extreme Value (GEV), and Log-Pearson Type III (LP-III)—were evaluated for flood frequency analysis. Among these, the LP-III distribution demonstrated the best performance with an R2 value of 0.78. To enhance prediction accuracy, two ML models—Artificial Neural Network (ANN) and multilayer neural network (MLNN)—were employed. The MLNN model outperformed all others, achieving R2 values of 0.96 for training and 0.93 for testing, confirming its high reliability for streamflow prediction. Furthermore, the trained MLNN was adapted to future climate conditions using downscaled and bias-corrected CMIP6 projections under SSP245 and SSP585 scenarios. This allowed for reliable discharge forecasting under changing precipitation and temperature trends. The proposed hybrid approach not only improves the accuracy of flood predictions but also supports long-term planning for flood risk mitigation. These findings provide essential insights for policymakers, engineers, and disaster management agencies to design adaptive infrastructure and implement proactive flood management strategies in the Swat River basin.

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来源期刊
Journal of Flood Risk Management
Journal of Flood Risk Management ENVIRONMENTAL SCIENCES-WATER RESOURCES
CiteScore
8.40
自引率
7.30%
发文量
93
审稿时长
12 months
期刊介绍: Journal of Flood Risk Management provides an international platform for knowledge sharing in all areas related to flood risk. Its explicit aim is to disseminate ideas across the range of disciplines where flood related research is carried out and it provides content ranging from leading edge academic papers to applied content with the practitioner in mind. Readers and authors come from a wide background and include hydrologists, meteorologists, geographers, geomorphologists, conservationists, civil engineers, social scientists, policy makers, insurers and practitioners. They share an interest in managing the complex interactions between the many skills and disciplines that underpin the management of flood risk across the world.
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