Boosting flood routing prediction performance through a hybrid approach using empirical mode decomposition and neural networks: a case study of the Mera River in Ankara

Okan Mert Katipoglu, Metin Sarıgöl
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Abstract

Abstract Flood routing is vital in helping to reduce the impact of floods on people and communities by allowing timely and appropriate responses. In this study, the empirical mode decomposition (EMD) signal decomposition technique is combined with cascade forward backpropagation neural network (CFBNN) and feed-forward backpropagation neural network (FFBNN) machine learning (ML) techniques to model 2014 floods in Ankara, Mera River. The data are split in order to avoid the underfitting and overfitting problems of the algorithm. While establishing the algorithm, 70% of the data were divided into training, 15% testing and 15% validation. Graphical indicators and statistical parameters were used for the analysis of model performance. As a result, the EMD signal decomposition technique has been found to improve the performance of ML models. In addition, the EMD-FFBNN hybrid model showed the most accurate estimation results in the flood routing calculation. The study's outputs can assist in designing flood control structures such as levees and dams to help reduce flood risk.
通过使用经验模态分解和神经网络的混合方法提高洪水路径预测性能:安卡拉梅拉河的案例研究
洪水路线对于帮助减少洪水对人们和社区的影响至关重要,因为它允许及时和适当的响应。本研究将经验模态分解(EMD)信号分解技术与级联前向反向传播神经网络(CFBNN)和前馈反向传播神经网络(FFBNN)机器学习(ML)技术相结合,对2014年安卡拉梅拉河洪水进行建模。为了避免算法的欠拟合和过拟合问题,对数据进行了拆分。在建立算法时,将70%的数据分为训练、15%的测试和15%的验证。采用图形指标和统计参数对模型性能进行分析。结果表明,EMD信号分解技术可以提高机器学习模型的性能。此外,在洪水路由计算中,EMD-FFBNN混合模型的估计结果最为准确。这项研究的成果可以帮助设计防洪堤和水坝等防洪结构,以帮助减少洪水风险。
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