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MONTHLY FLOW ESTIMATION USING ELMAN NEURAL NETWORKS
Author(s) -
Luiz Biondi Neto,
Pedro Henrique Gouvêa Coelho,
M.L.F. Velloso,
João Carlos Correia Baptista Soares de Mello,
Lídia Ângulo Meza
Publication year - 2004
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5220/0002610101530158
Subject(s) - artificial neural network , estimation , computer science , flow (mathematics) , artificial intelligence , mathematics , engineering , systems engineering , geometry
Keywords: Time series estimation, Flow Estimation, Elman Neural Networks Abstract: This paper investigates the application of partially recurrent artificial neural networks (ANN) in the flow estimation for Sao Francisco River that feeds the hydroelectric power plant of Sobradinho. An Elman neural network was used suitably arranged to receive samples of the flow time series data available for Sao Francisco River shifted by one month. For that, the neural network input had a delay loop that included several sets of inputs separated in periods of five years monthly shifted. The considered neural network had three hidden layers. There is a feedback between the output and the input of the first hidden layer that enables the neural network to present temporal capabilities useful in tracking time variations. The data used in the application concern to the measured Sao Francisco river flow time series from 1931 to 1996, in a total of 65 years from what 60 were used for training and 5 for testing. The obtained results indicate that the Elman neural network is suitable to estimate the river flow for 5 year periods monthly. The average estimation error was less than 0.2 %

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