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Development of stage-discharge rating curve using model tree and neural networks: An application to Peachtree Creek in Atlanta

机译:使用模型树和神经网络开发阶段放电额定曲线:在亚特兰大的桃树溪中的应用

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The applicability and the performance of the M5P model tree machine learning technique is investigated in modeling of the stage-discharge problem for Peachtree Creek in Atlanta, Georgia. The stage-discharge relationship has an important bearing on the correct assessment of discharge. This technique is compared to three different algorithms of artificial neural network and conventional rating curve. It is shown that the model trees, being analogous to piecewise linear functions, have certain advantages over neural networks; they are more transparent and hence acceptable by decision makers, they are very fast in training, and they always converge. The accuracy of M5P trees is superior to neural network models and conventional model. It was found that M5P outperformed when fewer data events were available for model development. In other words, M5P has potential to be a useful and practical tool for cases where less measured data is available for modeling stage-discharge problem. This study has also showed high consistency between the training and testing phases of modeling when using M5P compared to neural network models and conventional method. Furthermore, a partition analysis has been performed. This analysis reveals that the results obtained using M5P model performed better than ANN for both the high flows and the low flows.
机译:M5P模型树机器学习技术的适用性和性能在佐治亚州亚特兰大的Peachtree Creek的阶段放电问题建模中进行了研究。阶段放电关系对正确评估放电有重要影响。将该技术与三种不同的人工神经网络算法和常规评级曲线进行了比较。结果表明,与分段线性函数相似,模型树比神经网络具有一定的优势。它们更加透明,因此决策者可以接受,他们的培训速度非常快,而且它们总是融合在一起。 M5P树的准确性优于神经网络模型和常规模型。人们发现,当较少的数据事件可用于模型开发时,M5P的性能优于其他。换句话说,对于较少的测量数据可用于建模阶段放电问题的情况,M5P有潜力成为有用且实用的工具。这项研究还表明,与神经网络模型和常规方法相比,使用M5P时在建模的训练和测试阶段之间具有很高的一致性。此外,已经执行了分区分析。该分析表明,对于高流量和低流量,使用M5P模型获得的结果均优于ANN。

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