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Improving daily streamflow forecasts in mountainous Upper Euphrates basin by multi-layer perceptron model with satellite snow products

机译:利用带有卫星积雪产品的多层感知器模型改进上幼发拉底山脉流域的日流量预报

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This paper investigates the contribution of Moderate Resolution Imaging Spectroradiometer (MODIS) satellite Snow Cover Area (SCA) product and in-situ snow depth measurements to Artificial Neural Network model (ANN) based daily streamflow forecasting in a mountainous river basin. In order to represent non-linear structure of the snowmelt process, Multi-Layer Perceptron (MLP) Feed-Forward Backpropagation (FFBP) architecture is developed and applied in Upper Euphrates River Basin (10,275 km(2)) of Turkey where snowmelt constitutes approximately 2/3 of total annual volume of runoff during spring and early summer months. Snowmelt season is evaluated between March and July; 7 years (2002-2008) seasonal daily data are used during training while 3 years (2009-2011) seasonal daily data are split for forecasting. One of the fastest ANN training algorithms, the Levenberg-Marquardt, is used for optimization of the network weights and biases. The consistency of the network is checked with four performance criteria: coefficient of determination (R-2), Nash-Sutcliffe model efficiency (ME), root mean square error (RMSE) and mean absolute error (MAE). According to the results, SCA observations provide useful information for developing of a neural network model to predict snowmelt runoff, whereas snow depth data alone are not sufficient. The highest performance is experienced when total daily precipitation, average air temperature data are combined with satellite snow cover data. The data preprocessing technique of Discrete Wavelet Analysis (DWA) is coupled with MLP modeling to further improve the runoff peak estimates. As a result, Nash-Sutcliffe model efficiency is increased from 0.52 to 0.81 for training and from 0.51 to 0.75 for forecasting. Moreover, the results are compared with that of a conceptual model, Snowmelt Runoff Model (SRM), application using SCA as an input. The importance and the main contribution of this study is to use of satellite snow products and data preprocessing in ANN to improve the streamflow forecasts for ungauged or data sparse mountainous basins. (C) 2016 Elsevier B.V. All rights reserved.
机译:本文研究了中等分辨率成像光谱仪(MODIS)卫星积雪面积(SCA)产品和原位积雪深度测量对基于人工神经网络模型(ANN)的山区河流日流量预测的贡献。为了表示融雪过程的非线性结构,开发了多层感知器(MLP)前馈反向传播(FFBP)体系结构,并将其应用于土耳其的上幼发拉底河盆地(10,275 km(2)),其中融雪约占春季和夏季初月份的年径流量总量的2/3。融雪季节在三月至七月之间评估;训练期间使用7年(2002-2008年)的季节性每日数据,而拆分3年(2009-2011年)的季节性每日数据进行预测。 Levenberg-Marquardt是最快的ANN训练算法之一,用于优化网络权重和偏差。用四个性能标准检查网络的一致性:确定系数(R-2),Nash-Sutcliffe模型效率(ME),均方根误差(RMSE)和平均绝对误差(MAE)。根据结果​​,SCA观测为开发预测融雪径流的神经网络模型提供了有用的信息,而仅雪深数据是不够的。当每日总降水量,平均气温数据与卫星积雪数据相结合时,性能最高。离散小波分析(DWA)的数据预处理技术与MLP建模相结合,可以进一步改善径流峰值估算。结果,训练的Nash-Sutcliffe模型效率从0.52提高到0.81,预测的效率从0.51提高到0.75。此外,将结果与使用SCA作为输入的概念模型Snowmelt径流模型(SRM)进行了比较。这项研究的重要性和主要贡献是在人工神经网络中使用卫星积雪和数据预处理,以改善未开挖或数据稀疏山区的水流预报。 (C)2016 Elsevier B.V.保留所有权利。

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