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Wave overtopping predictions using an advanced machine learning technique

机译:使用先进的机器学习技术浪潮泛型预测

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摘要

Coastal structures are often designed to a maximum allowable wave overtopping discharge, hence accurate prediction of the amount of wave overtopping is an important issue. Both empirical formulae and neural networks are among the commonly used prediction tools. In this work, a new model for the prediction of mean wave overtopping discharge is presented using the innovative machine learning technique XGBoost. The selection of features to train the model on is carefully substantiated, including the redefinition of existing features to obtain a better model performance. Confidence intervals are derived by tuning hyperparameters and applying bootstrap resampling. The quality of the model is tested against four new physical model data sets, and a thorough quantitative comparison with existing machine learning methods and empirical overtopping formulae is presented. The XGBoost model generally outperforms other methods for the test data sets with normally incident waves. All data-driven methods show less accuracy on oblique wave data, presumably because these conditions are underrepresented in the training data. The performance of the XGBoost model is significantly improved by adding a randomly selected part of the new oblique wave cases to the training data. In the end, this new model is shown to reduce errors on all data used in this work with a factor of up to 5 compared to existing overtopping prediction methods.
机译:沿海星结构通常被设计为最大允许的波浪概述放电,因此精确预测波浪泛型的量是一个重要问题。经验性公式和神经网络都是常用的预测工具中。在这项工作中,使用创新的机器学习技术XGBoost提出了一种预测平均波的预测的新模型。仔细选择要培训模型的功能,包括重新定义现有功能以获得更好的模型性能。通过调整超参数和应用引导重采样来源的置信区间。针对四个新的物理模型数据集测试了模型的质量,并提出了与现有机器学习方法和经验转换公式的彻底定量比较。 XGBoost模型通常优于测试数据集的其他方法,其中具有正常入射波。所有数据驱动方法都在倾斜波数据上显示了更低的准确性,可能是因为这些条件在训练数据中经历了不足。通过向训练数据添加一个随机选择的部分新的倾斜波盒来显着改善XGBoost模型的性能。最后,显示了与现有的泛型预测方法相比,这项新模型可降低本工作中使用的所有数据的错误。

著录项

  • 来源
    《Coastal engineering》 |2021年第6期|103830.1-103830.12|共12页
  • 作者单位

    Deltares Dept Coastal Struct & Waves JdB & MvG Boussinesqweg 1 NL-2629HV Delft Netherlands|Deltares Software Ctr HvdB Boussinesqweg 1 NL-2629HV Delft Netherlands;

    Deltares Dept Coastal Struct & Waves JdB & MvG Boussinesqweg 1 NL-2629HV Delft Netherlands|Deltares Software Ctr HvdB Boussinesqweg 1 NL-2629HV Delft Netherlands|Delft Univ Technol Dept Hydraul Engn Stevinweg 1 NL-2628 CN Delft Netherlands;

    Deltares Dept Coastal Struct & Waves JdB & MvG Boussinesqweg 1 NL-2629HV Delft Netherlands|Deltares Software Ctr HvdB Boussinesqweg 1 NL-2629HV Delft Netherlands;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Machine learning; Wave overtopping; Coastal structures; Physical model tests; Gradient boosting decision trees; XGBoost;

    机译:机器学习;波浪泛价;沿海结构;物理模型试验;梯度提升决策树;XGBoost;

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