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Artificial neural network model for synthetic streamflow generation

机译:用于合成流生成的人工神经网络模型

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摘要

Time series of streamflow plays an important role in planning, design and management of water resources system. In the event of non availability of a long series of historical streamflow record, generation of the data series is of utmost importance. Although a number of models exist, they may not always produce satisfactory result in respect of statistics of the historical data. In such event, artificial neural network (ANN) model can be a potential alternative to the conventional models. Streamflow series, which is a stochastic phenomenon, can be suitably modeled by ANN for its strong capability to perform non-linear mapping. An ANN model developed for generating synthetic streamflow series of the Pagladia River, a major north bank tributary of the river Brahmaputra, is presented in this paper along with its comparison with other existing models. The comparison carried out in respect of five different statistics of the historical data and synthetically generated data has shown that among the different models, viz., autoregressive moving average (ARMA) model, Thomas-Fiering model and ANN model, the ANN based model has performed better in generating synthetic streamflow series for the Pagladia River.
机译:水流的时间序列在水资源系统的规划,设计和管理中起着重要作用。如果无法获得一长串的历史流量记录,则生成数据系列至关重要。尽管存在许多模型,但是就历史数据的统计而言,它们可能并不总是产生令人满意的结果。在这种情况下,人工神经网络(ANN)模型可以替代传统模型。由于其强大的执行非线性映射的能力,可以用ANN适当地模拟作为随机现象的流序列。本文介绍了一种用于生成帕拉格迪河(布拉马普特拉河的主要北岸支流)的合成水流序列的神经网络模型,并将其与其他现有模型进行了比较。对历史数据和综合生成的数据的五种不同统计数据进行的比较表明,在不同的模型(即自回归移动平均值(ARMA)模型,Thomas-Fiering模型和ANN模型)中,基于ANN的模型具有在为帕格拉迪亚河(Pagladia River)生成合成水流序列方面表现更好。

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