River Flow Forecasting: A Comparison Between Feedforward and Layered Recurrent Neural Network
Resource type
Authors/contributors
- Aljahdali, Sultan (Author)
- Sheta, Alaa (Author)
- Turabieh, Hamza (Author)
- Serrhini, Mohammed (Editor)
- Silva, Carla (Editor)
- Aljahdali, Sultan (Editor)
Title
River Flow Forecasting: A Comparison Between Feedforward and Layered Recurrent Neural Network
Abstract
Forecasting the daily flows of rivers is a challenging task that have a significant impact on the environment, agriculture, and people life. This paper investigates the river flow forecasting problem using two types of Deep Neural Networks (DNN) structures, Long Short-Term Memory (LSTM) and Layered Recurrent Neural Networks (L-RNN) for two rivers in the USA, Black and Gila rivers. The data sets collected for a period of seven years for Black river (six years for training and one year for testing) and four years for Gila river (three years for training and one year for testing) were used for our experiments. An order selection method based partial auto-correlation sequence was employed to determine the appropriate order for the proposed models in both cases. Mean square errors (MSE), Root mean square errors (RMSE) and Variance (VAF) were used to evaluate to developed models. The obtained results show that the proposed LSTM is able to produce an excellent model in each case study.
Proceedings Title
Innovation in Information Systems and Technologies to Support Learning Research
Publisher
Springer International Publishing
Place
Cham
Date
2020
Pages
523-532
Series
Learning and Analytics in Intelligent Systems
ISBN
978-3-030-36778-7
Citation Key
aljahdaliRiverFlowForecasting2020
Short Title
River Flow Forecasting
Language
en
Library Catalog
Springer Link
Citation
Aljahdali, S., Sheta, A., & Turabieh, H. (2020). River Flow Forecasting: A Comparison Between Feedforward and Layered Recurrent Neural Network. In M. Serrhini, C. Silva, & S. Aljahdali (Eds.), Innovation in Information Systems and Technologies to Support Learning Research (pp. 523–532). Springer International Publishing. https://doi.org/10.1007/978-3-030-36778-7_58
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