Application of the extreme learning machine algorithm for the prediction of monthly Effective Drought Index in eastern Australia
Article
Article Title | Application of the extreme learning machine algorithm for the prediction of monthly Effective Drought Index in eastern Australia |
---|---|
ERA Journal ID | 1956 |
Article Category | Article |
Authors | Deo, Ravinesh C. (Author) and Sahin, Mehmet (Author) |
Journal Title | Atmospheric Research |
Journal Citation | 153, pp. 512-525 |
Number of Pages | 14 |
Year | 2015 |
Publisher | Elsevier |
ISSN | 0169-8095 |
1873-2895 | |
Digital Object Identifier (DOI) | https://doi.org/10.1016/j.atmosres.2014.10.016 |
Web Address (URL) | http://www.sciencedirect.com/science/article/pii/S0169809514003858 |
Abstract | The prediction of future drought is an effective mitigation tool for assessing its adverse consequences on water resources, agriculture, ecosystems and hydrology. Data-driven model predictions using machine learning algorithms are promising tenets for these purposes as they require less developmental time, minimal inputs and are relatively less complex than the dynamic or physical model. This paper authenticates a computationally simple, fast and efficient non-linear algorithm known as extreme learning machine (ELM) for the prediction of Effective Drought Index (EDI) in eastern Australia using input data trained from 1957–2008 and the monthly EDI predicted over the period 2009–2011. The predictive variables for the ELM model were the rainfall and mean, minimum and maximum temperatures, supplemented by the large-scale climate mode indices of interest as regression covariates, namely the Southern Oscillation Index, Pacific Decadal Oscillation, Southern Annular Mode and the Indian Ocean Dipole moment. To demonstrate the effectiveness of the proposed data-driven model a performance comparison in terms of the prediction capabilities and learning speeds was conducted between the proposed ELM algorithm and the conventional artificial neural network (ANN) algorithm trained with Levenberg-Marquardt backpropagation. The prediction metrics certified an excellent performance of the ELM over the ANN model for the overall test sites, thus yielding Mean Absolute Errors, Root-Mean Square Errors, Coefficients of Determination and Willmott’s Indices of Agreement of 0.277, 0.008, 0.892 and 0.93 (for ELM) and 0.602, 0.172, 0.578 and 0.92 (for ANN) models. Moreover, the ELM model was executed with learning speed 32 times faster and training speed 6.1 times faster than the ANN model. An improvement in the prediction capability of the drought duration and severity by the ELM model was achieved. Based on these results we aver that out of the two machine learning algorithms tested, the ELM was the more expeditious tool for prediction of drought and its related properties. |
Keywords | extreme learning machine; artificial neural network; drought prediction; effective drought index |
ANZSRC Field of Research 2020 | 370108. Meteorology |
469999. Other information and computing sciences not elsewhere classified | |
370202. Climatology | |
490399. Numerical and computational mathematics not elsewhere classified | |
410404. Environmental management | |
490199. Applied mathematics not elsewhere classified | |
Public Notes | This research is an outcome of USQ author's collaboration with his Turkey counterparts in application of artificial intelligence models to hydrology and climate modelling research. First available online 25 October 2014. Permanent restricted access to Published version due to publisher copyright policy. |
Byline Affiliations | School of Agricultural, Computational and Environmental Sciences |
Siirt University, Turkiye | |
Institution of Origin | University of Southern Queensland |
https://research.usq.edu.au/item/q2v56/application-of-the-extreme-learning-machine-algorithm-for-the-prediction-of-monthly-effective-drought-index-in-eastern-australia
Download files
1931
total views1725
total downloads2
views this month0
downloads this month