DOI: 10.1016/j.atmosres.2018.07.005
Scopus记录号: 2-s2.0-85049460229
论文题名: Multi-stage hybridized online sequential extreme learning machine integrated with Markov Chain Monte Carlo copula-Bat algorithm for rainfall forecasting
作者: Ali M. ; Deo R.C. ; Downs N.J. ; Maraseni T.
刊名: Atmospheric Research
ISSN: 1698095
出版年: 2018
卷: 213 起始页码: 450
结束页码: 464
语种: 英语
英文关键词: And RF
; Bat algorithm
; Copulas
; ELM
; Markov chain Monte Carlo simulation
; OS-ELM
; Rainfall forecasting
Scopus关键词: Agriculture
; Autocorrelation
; Benchmarking
; Chains
; Decision support systems
; Decision trees
; Drought
; E-learning
; Intelligent systems
; Knowledge acquisition
; Learning algorithms
; Learning systems
; Markov processes
; Monte Carlo methods
; Statistical tests
; Water resources
; Weather forecasting
; And RF
; Bat algorithms
; Copulas
; Markov chain monte carlo simulation
; Rainfall forecasting
; Rain
; algorithm
; computer simulation
; data set
; forecasting method
; integrated approach
; machine learning
; Markov chain
; Monte Carlo analysis
; precipitation intensity
英文摘要: To ameliorate agricultural impacts due to persistent drought-risks by promoting sustainable utilization and pre-planning of water resources, accurate rainfall forecasting models, addressing the dynamic nature of drought phenomenon, is crucial. In this paper, a multi-stage probabilistic machine learning model is designed and evaluated for forecasting monthly rainfall. The multi-stage hybrid MCMC-Cop-Bat-OS-ELM model utilizing online-sequential extreme learning machines integrated with Markov Chain Monte Carlo (MCMC) based bivariate-copula and the Bat algorithm is employed to incorporate significant antecedent rainfall (t–1) as the model's predictor in the training phase. After computing the partial autocorrelation function (PACF) at the first stage, twenty-five MCMC based copulas (i.e., Gaussian, t, Clayton, Gumble, Frank and Fischer-Hinzmann etc.) are adopted to determine the dependence of antecedent month's rainfall with the current and future rainfall at the second stage of the model design. Bat algorithm is applied to sort the optimal MCMC-copula model by a feature selection strategy at the third stage. At the fourth stage, PACF's of the optimal MCMC-copula model are computed to couple the output with OS-ELM algorithm to forecast future rainfall values in an independent test dataset. As a benchmarking process, standalone extreme learning machine (ELM) and random forest (RF) is also integrated with MCMC based copulas and the Bat algorithm, yielding a hybrid MCMC-Cop-Bat-ELM and a MCMC-Cop-Bat-RF models. The proposed multi-stage hybrid model is tested in agricultural belt region in Faisalabad, Jhelum and Multan, located in Pakistan. The testing performance of all three hybridized models, according to robust statistical error metrics, is satisfactory in comparison to the standalone counterparts, however the multi-stage, hybridized MCMC-Cop-Bat-OS-ELM model is found to be a superior tool for forecasting monthly rainfall. This multi-stage probabilistic learning model can be explored as a pertinent decision-support tool for agricultural water resources management in arid and semi-arid regions where a statistically significant relationship with antecedent rainfall exists. © 2018 Elsevier B.V.
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/108771
Appears in Collections: 影响、适应和脆弱性 气候变化事实与影响
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作者单位: School of Agricultural, Computational and Environmental Sciences, International Centre for Applied Climate Sciences, Institute of Agriculture and Environment, University of Southern Queensland SpringfieldQLD 4300, Australia
Recommended Citation:
Ali M.,Deo R.C.,Downs N.J.,et al. Multi-stage hybridized online sequential extreme learning machine integrated with Markov Chain Monte Carlo copula-Bat algorithm for rainfall forecasting[J]. Atmospheric Research,2018-01-01,213