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    River-Flow Forecasting Using Higher-Order Neural Networks

    Source: Journal of Hydrologic Engineering:;2012:;Volume ( 017 ):;issue: 005
    Author:
    Mukesh K. Tiwari
    ,
    Ki-Young Song
    ,
    Chandranath Chatterjee
    ,
    Madan M. Gupta
    DOI: 10.1061/(ASCE)HE.1943-5584.0000486
    Publisher: American Society of Civil Engineers
    Abstract: In this paper, we propose a novel neural modeling methodology for forecasting daily river discharge that makes use of neural units with higher-order synaptic operations (NU-HSOs). For hydrologic forecasting, conventional rainfall-runoff models based on mechanistic approaches in the literature have shown limitations attributable to their overparameterization and complexity. With the use of neural units with quadratic synaptic operation (NU-QSO) and cubic synaptic operation (NU-CSO), as suggested in this paper, the refined neural modeling methodology can overcome the intricacy and inefficiency of conventional models. In this paper, neural network (NN) models with NU-HSO are compared with conventional NNs with neural units with linear synaptic operation (NU-LSO) for forecasting river discharge. This study was conducted using 1- to 5-day lead time forecasting in the Mahanadi River basin at the Naraj gauging site to evaluate the effectiveness of the higher-order neural networks (HO-NNs). Performance indices for the prediction of daily discharge forecasting indicated that NNs with NU-CSO and NNs with NU-QSO achieved better performance than NNs with NU-LSO even with a lower number of hidden neurons. Thus, this study shows that HO-NNs can be effective in hydrologic forecasting.
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      River-Flow Forecasting Using Higher-Order Neural Networks

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    contributor authorMukesh K. Tiwari
    contributor authorKi-Young Song
    contributor authorChandranath Chatterjee
    contributor authorMadan M. Gupta
    date accessioned2017-05-08T21:49:12Z
    date available2017-05-08T21:49:12Z
    date copyrightMay 2012
    date issued2012
    identifier other%28asce%29he%2E1943-5584%2E0000507.pdf
    identifier urihttp://yetl.yabesh.ir/yetl/handle/yetl/63370
    description abstractIn this paper, we propose a novel neural modeling methodology for forecasting daily river discharge that makes use of neural units with higher-order synaptic operations (NU-HSOs). For hydrologic forecasting, conventional rainfall-runoff models based on mechanistic approaches in the literature have shown limitations attributable to their overparameterization and complexity. With the use of neural units with quadratic synaptic operation (NU-QSO) and cubic synaptic operation (NU-CSO), as suggested in this paper, the refined neural modeling methodology can overcome the intricacy and inefficiency of conventional models. In this paper, neural network (NN) models with NU-HSO are compared with conventional NNs with neural units with linear synaptic operation (NU-LSO) for forecasting river discharge. This study was conducted using 1- to 5-day lead time forecasting in the Mahanadi River basin at the Naraj gauging site to evaluate the effectiveness of the higher-order neural networks (HO-NNs). Performance indices for the prediction of daily discharge forecasting indicated that NNs with NU-CSO and NNs with NU-QSO achieved better performance than NNs with NU-LSO even with a lower number of hidden neurons. Thus, this study shows that HO-NNs can be effective in hydrologic forecasting.
    publisherAmerican Society of Civil Engineers
    titleRiver-Flow Forecasting Using Higher-Order Neural Networks
    typeJournal Paper
    journal volume17
    journal issue5
    journal titleJournal of Hydrologic Engineering
    identifier doi10.1061/(ASCE)HE.1943-5584.0000486
    treeJournal of Hydrologic Engineering:;2012:;Volume ( 017 ):;issue: 005
    contenttypeFulltext
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