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A comparative evaluation of shear stress modeling based on machine learning methods in small streams

机译:基于机器学习方法的小溪剪切应力建模比较评估

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摘要

Predicting shear stress distribution has proved to be a critical problem to solve. Hence, the basic objective of this paper is to develop a prediction of shear stress distribution by machine learning algorithms including artificial neural networks, classification and regression tree, generalized linear models. The data set, which is large and feature-rich, is utilized to improve machine learning-based predictive models and extract the most important predictive factors. The 10-fold cross-validation approach was used to determine the performances of prediction methods. The predictive performances of the proposed models were found to be very close to each other. However, the results indicated that the artificial neural network, which has the R value of 0.92 +/- 0.03, achieved the best classification performance overall accuracy on the 10-fold holdout sample. The predictions of all machine learning models were well correlated with measurement data.
机译:预测剪应力分布已证明是要解决的关键问题。因此,本文的基本目标是通过机器学习算法(包括人工神经网络,分类和回归树,广义线性模型)来预测剪切应力分布。该数据集庞大且功能丰富,可用于改进基于机器学习的预测模型并提取最重要的预测因素。 10倍交叉验证方法用于确定预测方法的性能。发现所提出模型的预测性能非常接近。但是,结果表明,在10倍保留样本上,R值为0.92 +/- 0.03的人工神经网络实现了最佳的分类性能总体准确度。所有机器学习模型的预测都与测量数据充分相关。

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