Stream-flow forecasting using extreme learning machines: a case study in a semi-arid region in Iraq
Article
Article Title | Stream-flow forecasting using extreme learning machines: a case study in a semi-arid region in Iraq |
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ERA Journal ID | 1949 |
Article Category | Article |
Authors | Yaseen, Zaher Mundher (Author), Jaafar, Othman (Author), Deo, Ravinesh C. (Author), Kisi, Ozgur (Author), Adamowski, Jan (Author), Quilty, John (Author) and El-Shafie, Ahmed (Author) |
Journal Title | Journal of Hydrology |
Journal Citation | 542, pp. 603-614 |
Number of Pages | 12 |
Year | 2016 |
Publisher | Elsevier |
Place of Publication | Netherlands |
ISSN | 0022-1694 |
Digital Object Identifier (DOI) | https://doi.org/10.1016/j.jhydrol.2016.09.035 |
Web Address (URL) | http://www.sciencedirect.com/science/article/pii/S0022169416305893 |
Abstract | Monthly stream-flow forecasting can yield important information for hydrological applications including sustainable design of rural and urban water management systems, optimization of water resource allocations, later use, pricing and water quality assessment, and agriculture and irrigation operations. The motivation for exploring and developing expert predictive models is an ongoing endeavor for hydrological applications. In this study, the potential of a relatively new data-driven method, namely the extreme learning machine (ELM) method, was explored for forecasting monthly stream-flow discharge rates in the Tigris River, Iraq. The ELM algorithm is a single-layer feedforward neural network (SLFNs) which randomly selects the input weights, hidden layer biases and analytically determines the output weights of the SLFNs. Based on the partial autocorrelation functions of historical stream-flow data, a set of five input combinations with lagged stream-flow values are employed to establish the best forecasting model. A comparative investigation is conducted to evaluate the performance of the ELM compared to other data-driven models: support vector regression (SVR) and generalized regression neural network (GRNN). The forecasting metrics defined as the correlation coefficient (r), Nash-Sutcliffe efficiency (ENS), Willmott’s Index (WI), root-mean-square error (RMSE) and mean absolute error (MAE) computed between the observed and forecasted stream-flow data are employed to assess the ELM model’s effectiveness. The results revealed that the ELM model outperformed the SVR and the GRNN models across a number of statistical measures. In quantitative terms, superiority of ELM over SVR and GRNN models was exhibited by ENS= 0.578, 0.378 and 0.144, r = 0.799, 0.761 and 0.468 and WI = 0.853, 0.802 and 0.689, respectively and the ELM model attained lower RMSE value by approximately 21.3% (relative to SVR) and by approximately 44.7% (relative to GRNN). Based on the findings of this study, several recommendations were suggested for further exploration of the ELM model in hydrological forecasting problems. |
Keywords | extreme learning machine; Stream-flow forecasting; Support vector regression; Generalized regression neural network; Semi-arid; Iraq |
ANZSRC Field of Research 2020 | 370201. Climate change processes |
410402. Environmental assessment and monitoring | |
469999. Other information and computing sciences not elsewhere classified | |
370901. Geomorphology and earth surface processes | |
410404. Environmental management | |
460207. Modelling and simulation | |
490109. Theoretical and applied mechanics | |
400513. Water resources engineering | |
Public Notes | Files associated with this item cannot be displayed due to copyright restrictions. |
Byline Affiliations | National University of Malaysia |
School of Agricultural, Computational and Environmental Sciences | |
International Black Sea University, Georgia | |
McGill University, Canada | |
University of Malaya, Malaysia | |
Institution of Origin | University of Southern Queensland |
Funding source | Grant ID Academic Division Researcher Activation Incentive Scheme (RAIS; July– September 2015) grant |
Funding source | Grant ID Australian Government Endeavor Executive Fellowship (2015) |
https://research.usq.edu.au/item/q3999/stream-flow-forecasting-using-extreme-learning-machines-a-case-study-in-a-semi-arid-region-in-iraq
2018
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