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首页> 外文期刊>Water Resources Management >Soft Computing Techniques for Rainfall-Runoff Simulation: Local Non-Parametric Paradigm vs. Model Classification Methods
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Soft Computing Techniques for Rainfall-Runoff Simulation: Local Non-Parametric Paradigm vs. Model Classification Methods

机译:降雨径流模拟的软计算技术:局部非参数范例与模型分类方法

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Accurate simulation of rainfall-runoff process is of great importance in hydrology and water resources management. Rainfall-runoff modeling is a non-linear process and highly affected by the inputs to the simulation model. In this study, three kinds of soft computing methods, namely artificial neural networks (ANNs), model tree (MT) and multivariate adaptive regression splines (MARS), have been employed and compared for rainfall-runoff process simulation. Moreover, this study investigates the effect of input size, including number of input variables and number of data time series on runoff simulation by the developed models. Inputs to the simulation models for calibration and validation purposes consist two parts: I1: five variables, including daily rainfall and runoff time series (30 years) with lag times, and I2: twelve variables, including daily rainfall and runoff time series (10 years). To increase the model performances, optimal number and type for input variables are identified. The efficiency of the training and testing performances using the ANNs, MT and MARS models is then evaluated using several evaluation criteria. To implement the methodology, Tajan catchment in the northern part of Iran is selected. Based on the results, it was found that using I1 as input to the developed models results in higher simulation performance. The results also provided evidence that MT (R = 0.897, RMSE = 6.70, RSE = 0.33) with set I2 is capable of reliable model for rainfall-runoff process compared with MARS (R = 0.892, RMSE = 7.47, RSE = 0.83) and ANNs (R = 0.884, RMSE = 7.40, RSE = 0.43) models. Therefore, size (length of data time series) and type of input variables have significant effects on the modeling results.
机译:降雨径流过程的精确模拟对水文和水资源管理具有重要意义。降雨径流建模是一个非线性过程,受仿真模型输入的影响很大。在这项研究中,采用了三种软计算方法,即人工神经网络(ANN),模型树(MT)和多元自适应回归样条(MARS),并将其用于降雨-径流过程模拟。此外,本研究调查了输入大小(包括输入变量的数量和数据时间序列的数量)对已开发模型对径流模拟的影响。用于校准和验证目的的仿真模型输入包括两个部分:I1:五个变量,包括带滞后时间的每日降雨量和径流时间序列(30年); I2:十二个变量,包括每日降雨量和径流时间序列(10年) )。为了提高模型性能,确定输入变量的最佳数量和类型。然后,使用几种评估标准评估使用ANN,MT和MARS模型进行培训和测试的效率。为了实施该方法,选择了伊朗北部的Tajan流域。根据结果​​,发现将I1用作已开发模型的输入可提高仿真性能。结果还提供了证据,与MARS(R = 0.892,RMSE = 7.47,RSE = 0.83)相比,带有I2集的MT(R = 0.897,RMSE = 6.70,RSE = 0.33)能够建立降雨径流过程的可靠模型。人工神经网络(R = 0.884,RMSE = 7.40,RSE = 0.43)模型。因此,输入变量的大小(数据时间序列的长度)和类型对建模结果有重要影响。

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