Flood Classification and Improved Loss Function by Combining Deep Learning Models to Improve Water Level Prediction in a Small Mountain Watershed

IF 3 3区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Rukai Wang, Ximin Yuan, Fuchang Tian, Minghui Liu, Xiujie Wang, Xiaobin Li, Minrui Wu
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引用次数: 0

Abstract

Floods are major natural disasters that present considerable challenges to socioeconomic and ecological systems. Flash floods are highly nonlinear and exhibit rapid spatiotemporal variability. Existing methods struggle to capture these features, leading to suboptimal long-term and peak flood prediction accuracy. This study proposes a hierarchical flood prediction model based on clustering to enhance forecasting accuracy in the Heshengxi watershed. We employ STGCN and GWN models with the spatiotemporal attention mechanism. Enhanced loss functions further refine flood prediction accuracy. Results show that the hierarchical prediction method is an effective means of extracting flood features by addressing the variability of prediction parameters for different flood magnitudes. The integration of Graph Convolutional and Time Aware models enables the model to recognize the spatiotemporal flood characteristics, overcoming limitations of prevailing methods and ensuring long-term forecast accuracy. The optimized loss function further improves the prediction performance, resulting in a significant improvement in the accuracy of flood peak prediction, with a reduction of 0.26% in the relative error of the peak prediction by the GWN model. This framework provides an effective solution for flood warning, emergency response, and optimal scheduling. It also demonstrates the potential of deep learning models in the field of intelligent hydrological forecasting.

Abstract Image

结合深度学习模型的洪水分类和改进损失函数改进山区小流域水位预测
洪水是对社会经济和生态系统构成重大挑战的重大自然灾害。山洪是高度非线性的,具有快速的时空变异性。现有的方法很难捕捉到这些特征,导致长期和洪峰预测的精度不理想。为了提高河胜西流域的洪水预报精度,提出了一种基于聚类的分层洪水预报模型。我们采用了具有时空注意机制的STGCN和GWN模型。增强的损失函数进一步提高了洪水预测的准确性。结果表明,分层预测方法解决了不同震级预测参数的变异性,是提取洪水特征的有效手段。图卷积模型与时间感知模型的融合使模型能够识别洪水的时空特征,克服了现有方法的局限性,保证了长期预测的准确性。优化后的损失函数进一步提高了预测性能,洪峰预测精度显著提高,GWN模型洪峰预测的相对误差降低0.26%。该框架为洪水预警、应急响应和优化调度提供了有效的解决方案。它还展示了深度学习模型在智能水文预测领域的潜力。
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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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