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Principle component analysis in conjuction with data driven methods for sediment load prediction

机译:主成分分析与数据驱动方法相结合的泥沙负荷预测

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摘要

This study investigates sediment load prediction and generalization from laboratory scale to field scale using principle component analysis (PCA) in conjunction with data driven methods of artificial neural networks (ANNs) and genetic algorithms (GAs). Five main dimensionless parameters for total load are identified by using PCA. These parameters are used in the input vector of ANN for predicting total sediment loads. In addition, nonlinear equations are constructed, based upon the same identified dimensionless parameters. The optimal values of exponents and constants of the equations are obtained by the GA method. The performance of the so-developed ANN and GA based methods is evaluated using laboratory and field data. Results show that the expert methods (ANN and GA), calibrated with laboratory data, are capable of predicting total sediment load in field, thus showing their transferability. In addition, this study shows that the expert methods are not transferable for suspended load, perhaps due to insufficient laboratory data. Yet, these methods are able to predict suspended load in field, when trained with respective field data.
机译:这项研究使用主成分分析(PCA)结合人工神经网络(ANN)和遗传算法(GA)的数据驱动方法,研究了从实验室规模到田间规模的沉积物负荷预测和一般化。使用PCA可以确定五个主要的无因次参数来确定总负载。这些参数在ANN的输入向量中用于预测总的泥沙负荷。另外,基于相同的识别的无量纲参数构造非线性方程。方程的指数和常数的最优值是通过遗传算法获得的。如此开发的基于ANN和GA的方法的性能使用实验室和现场数据进行评估。结果表明,通过实验室数据校准的专家方法(ANN和GA)能够预测田间的总沉积物负荷,从而显示出其可迁移性。此外,这项研究表明,可能由于实验室数据不足而导致专家方法无法用于悬挂负载。然而,当用相应的现场数据训练时,这些方法能够预测现场的悬浮负荷。

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