Novel hybrid linear stochastic with non-linear extreme learning machine methods for forecasting monthly rainfall a tropical climate

被引:71
作者
Zeynoddin, Mohammad [1 ]
Bonakdari, Hossein [1 ,2 ]
Azari, Arash [3 ]
Ebtehaj, Isa [1 ,2 ]
Gharabaghi, Bahram [4 ]
Madavar, Hossein Riahi [5 ]
机构
[1] Razi Univ, Dept Civil Engn, Kermanshah, Iran
[2] Razi Univ, Environm Res Ctr, Kermanshah, Iran
[3] Razi Univ, Dept Water Engn, Kermanshah, Iran
[4] Univ Guelph, Sch Engn, Guelph, ON N1G 2W1, Canada
[5] Vali E Asr Univ Rafsanjan, Dept Water Engn, Rafsanjan, Iran
关键词
Forecast; Hybrid model; Rainfall; Spectral analysis; Tropical climate; Uncertainty; ARTIFICIAL NEURAL-NETWORKS; WATER-QUALITY; MODEL; ARIMA; COEFFICIENT; PREDICTION; TERM; TRANSFORMATIONS; ACCURACY; INFLOW;
D O I
10.1016/j.jenvman.2018.05.072
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
A novel hybrid approach is presented that can more accurately predict monthly rainfall in a tropical climate by integrating a linear stochastic model with a powerful non-linear extreme learning machine method. This new hybrid method was then evaluated by considering four general scenarios. In the first scenario, the modeling process is initiated without preprocessing input data as a base case. While in other three scenarios, the one-step and two-step procedures are utilized to make the model predictions more precise. The mentioned scenarios are based on a combination of stationarization techniques (i.e., differencing, seasonal and non-seasonal standardization and spectral analysis), and normality transforms (i.e., Box-Cox, John and Draper, Yeo and Johnson, Johnson, Box-Cox-Mod, log, log standard, and Manly). In scenario 2, which is a one-step scenario, the stationarization methods are employed as preprocessing approaches. In scenario 3 and 4, different combinations of normality transform, and stationarization methods are considered as preprocessing techniques. In total, 61 sub-scenarios are evaluated resulting 11013 models (10785 linear methods, 4 nonlinear models, and 224 hybrid models are evaluated). The uncertainty of the linear, nonlinear and hybrid models are examined by Monte Carlo technique. The best preprocessing technique is the utilization of Johnson normality transform and seasonal standardization (respectively) (R-2 = 0.99; RMSE = 0.6; MAE = 0.38; RMSRE = 0.1, MARE = 0.06, UI = 0.03 & UII = 0.05). The results of uncertainty analysis indicated the good performance of proposed technique (d-factor = 0.27; 95PPU = 83.57). Moreover, the results of the proposed methodology in this study were compared with an evolutionary hybrid of adaptive neuro fuzzy inference system (ANFIS) with firefly algorithm (ANFIS-FFA) demonstrating that the new hybrid methods outperformed ANFIS-FFA method.
引用
收藏
页码:190 / 206
页数:17
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