4.2 Article

A new approach to river flow forecasting: LSTM and GRU multivariate models

Journal

IEEE LATIN AMERICA TRANSACTIONS
Volume 17, Issue 12, Pages 1978-1986

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TLA.2019.9011542

Keywords

Rivers; Logic gates; Recurrent neural networks; IEEE transactions; Power generation; Biology; Feedforward neural networks; artificial neural networks; long short term memory; river flow; time series forecasting; gated recurrent unit

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Hydroelectric power stations are responsible for renewable energy generation, especially in countries with many rivers such as Brazil. It is very important to have good estimates of the hydrological flow in order to determine whether thermoelectric power plants should begin operation, an event that would increase the costs of electricity and also have aterrible environmental impact. The monthly flow of a river was estimated using two recurrent neural networks techniques: Long-Short Term Memory (LSTM) and Gated Recurrent Unit (GRU). The results were compared with other articles that had the same structure and used the same data: the Rio Grande river in the Furnas and Camargos dam.

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