Novel Hybrid Data-Intelligence Model for Forecasting Monthly Rainfall with Uncertainty Analysis
Abstract
:1. Introduction
2. Methodology
2.1. Adaptive Neuro-Fuzzy Inference System
2.2. Particle Swarm Optimization (PSO)
2.3. Genetic Algorithm (GA) Optimization
2.4. Differential Evolution (DE) Optimization
2.5. Hybridization of ANFIS Model
2.6. Modeling Performance Indicators
2.7. Uncertainty Analysis
3. Case Study and Hydrological Data Description
4. Application and Analysis
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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(a) ANFIS-based model | ||||||||
Models | RMSE (mm) | MAE (mm) | CC | WI | RMSE (mm) | MAE (mm) | CC | WI |
Training phase | Testing phase | |||||||
Model 1 | 4.23 | 3.16 | 0.492 | 0.564 | 5.32 | 3.69 | 0.439 | 0.478 |
Model 2 | 4.02 | 2.85 | 0.575 | 0.698 | 4.04 | 2.73 | 0.749 | 0.788 |
Model 3 | 2.96 | 2.22 | 0.799 | 0.882 | 3.00 | 2.31 | 0.864 | 0.913 |
Model 4 | 3.41 | 2.43 | 0.723 | 0.810 | 4.69 | 2.91 | 0.627 | 0.714 |
Model 5 | 2.87 | 1.95 | 0.820 | 0.888 | 4.54 | 2.82 | 0.664 | 0.759 |
Model 6 | 3.08 | 2.30 | 0.780 | 0.865 | 2.63 | 2.00 | 0.897 | 0.938 |
Model 7 | 3.40 | 2.26 | 0.724 | 0.806 | 3.17 | 2.28 | 0.848 | 0.911 |
Model 8 | 3.05 | 2.07 | 0.793 | 0.871 | 3.03 | 2.13 | 0.866 | 0.922 |
Model 9 | 3.20 | 2.13 | 0.760 | 0.850 | 4.16 | 2.14 | 0.723 | 0.801 |
Model 10 | 3.06 | 2.20 | 0.796 | 0.880 | 3.72 | 2.42 | 0.807 | 0.850 |
Model 11 | 2.18 | 1.50 | 0.896 | 0.941 | 2.20 | 1.49 | 0.930 | 0.962 |
Model 12 | 2.73 | 1.83 | 0.842 | 0.911 | 2.46 | 1.87 | 0.924 | 0.947 |
Model 13 | 2.78 | 1.94 | 0.832 | 0.903 | 2.51 | 1.66 | 0.915 | 0.946 |
Model 14 | 1.92 | 1.20 | 0.923 | 0.960 | 1.73 | 1.12 | 0.960 | 0.978 |
Model 15 | 2.10 | 1.36 | 0.897 | 0.943 | 1.13 | 0.75 | 0.984 | 0.991 |
Model 16 | 1.40 | 0.91 | 0.956 | 0.976 | 0.99 | 0.65 | 0.987 | 0.994 |
(b) ANFIS-PSO | ||||||||
Models | RMSE (mm) | MAE (mm) | CC | WI | RMSE (mm) | MAE (mm) | CC | WI |
Training phase | Testing phase | |||||||
Model 1 | 4.24 | 3.17 | 0.488 | 0.561 | 5.31 | 3.67 | 0.444 | 0.483 |
Model 2 | 3.63 | 2.66 | 0.671 | 0.782 | 4.31 | 2.92 | 0.692 | 0.756 |
Model 3 | 2.66 | 1.93 | 0.841 | 0.908 | 2.63 | 2.02 | 0.895 | 0.939 |
Model 4 | 3.25 | 2.31 | 0.751 | 0.840 | 4.46 | 2.69 | 0.671 | 0.755 |
Model 5 | 2.76 | 1.95 | 0.835 | 0.898 | 4.40 | 2.74 | 0.689 | 0.786 |
Model 6 | 2.84 | 1.96 | 0.816 | 0.888 | 2.21 | 1.53 | 0.927 | 0.960 |
Model 7 | 3.32 | 2.33 | 0.740 | 0.835 | 2.67 | 1.92 | 0.898 | 0.937 |
Model 8 | 2.68 | 1.75 | 0.846 | 0.907 | 2.75 | 1.81 | 0.892 | 0.939 |
Model 9 | 3.11 | 2.13 | 0.775 | 0.861 | 4.02 | 2.05 | 0.745 | 0.819 |
Model 10 | 2.53 | 1.67 | 0.864 | 0.924 | 3.07 | 2.18 | 0.871 | 0.912 |
Model 11 | 2.04 | 1.33 | 0.910 | 0.950 | 1.81 | 1.20 | 0.953 | 0.975 |
Model 12 | 1.77 | 1.20 | 0.936 | 0.965 | 1.58 | 1.11 | 0.967 | 0.981 |
Model 13 | 2.30 | 1.53 | 0.891 | 0.940 | 2.24 | 1.36 | 0.931 | 0.961 |
Model 14 | 1.16 | 0.75 | 0.973 | 0.985 | 1.14 | 0.62 | 0.982 | 0.991 |
Model 15 | 1.44 | 0.83 | 0.953 | 0.975 | 0.73 | 0.44 | 0.993 | 0.996 |
Model 16 | 0.86 | 0.51 | 0.984 | 0.991 | 0.47 | 0.28 | 0.997 | 0.998 |
(c) ANFIS-GA | ||||||||
Models | RMSE (mm) | MAE (mm) | CC | WI | RMSE (mm) | MAE (mm) | CC | WI |
Training phase | Testing phase | |||||||
Model 1 | 4.24 | 3.17 | 0.488 | 0.561 | 5.31 | 3.67 | 0.442 | 0.481 |
Model 2 | 3.59 | 2.62 | 0.679 | 0.791 | 4.28 | 2.85 | 0.697 | 0.758 |
Model 3 | 2.91 | 2.10 | 0.805 | 0.881 | 2.84 | 2.28 | 0.876 | 0.928 |
Model 4 | 3.43 | 2.37 | 0.720 | 0.822 | 4.12 | 2.47 | 0.738 | 0.794 |
Model 5 | 2.60 | 1.78 | 0.856 | 0.911 | 3.55 | 2.28 | 0.812 | 0.890 |
Model 6 | 2.77 | 2.02 | 0.826 | 0.895 | 2.40 | 1.72 | 0.915 | 0.951 |
Model 7 | 3.42 | 2.15 | 0.718 | 0.812 | 2.98 | 2.02 | 0.868 | 0.922 |
Model 8 | 2.90 | 2.01 | 0.816 | 0.884 | 3.36 | 2.28 | 0.833 | 0.900 |
Model 9 | 3.11 | 2.07 | 0.774 | 0.860 | 4.12 | 2.12 | 0.728 | 0.806 |
Model 10 | 2.50 | 1.63 | 0.872 | 0.930 | 3.26 | 2.27 | 0.851 | 0.898 |
Model 11 | 2.37 | 1.60 | 0.876 | 0.930 | 2.40 | 1.53 | 0.917 | 0.954 |
Model 12 | 2.33 | 1.59 | 0.885 | 0.935 | 1.83 | 1.35 | 0.954 | 0.975 |
Model 13 | 2.40 | 1.57 | 0.880 | 0.932 | 2.06 | 1.30 | 0.942 | 0.967 |
Model 14 | 1.50 | 0.93 | 0.956 | 0.976 | 1.38 | 0.78 | 0.974 | 0.986 |
Model 15 | 1.55 | 0.92 | 0.945 | 0.970 | 0.92 | 0.56 | 0.989 | 0.994 |
Model 16 | 1.21 | 0.69 | 0.967 | 0.982 | 0.83 | 0.51 | 0.991 | 0.995 |
(d) ANFIS-DE | ||||||||
Models | RMSE (mm) | MAE (mm) | CC | WI | RMSE (mm) | MAE (mm) | CC | WI |
Training phase | Testing phase | |||||||
Model 1 | 4.17 | 3.20 | 0.513 | 0.600 | 5.29 | 3.60 | 0.449 | 0.486 |
Model 2 | 3.66 | 2.61 | 0.666 | 0.781 | 4.07 | 2.61 | 0.736 | 0.791 |
Model 3 | 2.71 | 2.00 | 0.834 | 0.900 | 2.75 | 2.17 | 0.885 | 0.935 |
Model 4 | 3.42 | 2.41 | 0.720 | 0.819 | 4.05 | 2.61 | 0.741 | 0.813 |
Model 5 | 2.62 | 1.86 | 0.853 | 0.913 | 2.73 | 2.03 | 0.894 | 0.940 |
Model 6 | 2.74 | 1.89 | 0.830 | 0.895 | 2.35 | 1.66 | 0.917 | 0.955 |
Model 7 | 3.32 | 2.09 | 0.740 | 0.824 | 3.04 | 2.07 | 0.862 | 0.919 |
Model 8 | 2.85 | 1.91 | 0.824 | 0.889 | 2.88 | 1.96 | 0.881 | 0.934 |
Model 9 | 3.17 | 2.18 | 0.763 | 0.850 | 4.20 | 2.16 | 0.715 | 0.797 |
Model 10 | 2.51 | 1.70 | 0.867 | 0.930 | 3.12 | 2.23 | 0.865 | 0.908 |
Model 11 | 2.22 | 1.42 | 0.893 | 0.940 | 2.12 | 1.40 | 0.936 | 0.965 |
Model 12 | 2.43 | 1.68 | 0.875 | 0.930 | 2.09 | 1.65 | 0.941 | 0.966 |
Model 13 | 2.50 | 1.68 | 0.866 | 0.923 | 2.32 | 1.51 | 0.925 | 0.956 |
Model 14 | 1.36 | 0.92 | 0.963 | 0.980 | 1.37 | 0.76 | 0.974 | 0.987 |
Model 15 | 1.58 | 0.99 | 0.943 | 0.970 | 0.70 | 0.46 | 0.994 | 0.997 |
Model 16 | 1.14 | 0.67 | 0.971 | 0.985 | 0.73 | 0.38 | 0.993 | 0.996 |
Indicators | Models | ANFIS-PSO | ANFIS-GA | ANFIS-DE | ANFIS |
---|---|---|---|---|---|
d-factor | Model 1 | 0.14 | 0.14 | 0.14 | 0.15 |
Model 2 | 0.68 | 0.69 | 0.69 | 0.72 | |
Model 3 | 0.68 | 0.67 | 0.67 | 0.65 | |
Model 4 | 0.69 | 0.69 | 0.68 | 0.67 | |
Model 5 | 0.67 | 0.65 | 0.65 | 0.61 | |
Model 6 | 1.17 | 1.18 | 1.18 | 1.19 | |
Model 7 | 0.95 | 0.96 | 0.96 | 0.98 | |
Model 8 | 1.02 | 1.02 | 1.02 | 1.03 | |
Model 9 | 0.99 | 0.99 | 0.99 | 0.98 | |
Model 10 | 0.88 | 0.88 | 0.88 | 0.88 | |
Model 11 | 1.28 | 1.28 | 1.29 | 1.30 | |
Model 12 | 1.30 | 1.31 | 1.31 | 1.32 | |
Model 13 | 1.29 | 1.29 | 1.30 | 1.31 | |
Model 14 | 1.43 | 1.43 | 1.44 | 1.44 | |
Model 15 | 1.38 | 1.39 | 1.40 | 1.42 | |
Model 16 | 1.41 | 1.41 | 1.42 | 1.43 | |
95PPU | Model 1 | 12.29 | 12.29 | 12.29 | 12.29 |
Model 2 | 60.67 | 60.67 | 60.11 | 60.67 | |
Model 3 | 57.63 | 56.50 | 55.37 | 50.28 | |
Model 4 | 58.62 | 58.05 | 57.47 | 55.75 | |
Model 5 | 65.48 | 64.88 | 64.29 | 61.31 | |
Model 6 | 76.84 | 76.84 | 76.84 | 75.71 | |
Model 7 | 66.67 | 67.24 | 64.94 | 65.52 | |
Model 8 | 76.19 | 75.60 | 74.40 | 72.62 | |
Model 9 | 70.11 | 69.54 | 68.39 | 65.52 | |
Model 10 | 73.81 | 73.21 | 72.02 | 70.83 | |
Model 11 | 79.31 | 78.74 | 78.16 | 77.59 | |
Model 12 | 85.71 | 85.71 | 85.12 | 85.12 | |
Model 13 | 82.74 | 82.14 | 81.55 | 81.55 | |
Model 14 | 85.12 | 84.52 | 84.52 | 83.33 | |
Model 15 | 89.10 | 89.10 | 88.46 | 85.26 | |
Model 16 | 91.67 | 91.03 | 89.74 | 88.46 |
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Yaseen, Z.M.; Ebtehaj, I.; Kim, S.; Sanikhani, H.; Asadi, H.; Ghareb, M.I.; Bonakdari, H.; Wan Mohtar, W.H.M.; Al-Ansari, N.; Shahid, S. Novel Hybrid Data-Intelligence Model for Forecasting Monthly Rainfall with Uncertainty Analysis. Water 2019, 11, 502. https://doi.org/10.3390/w11030502
Yaseen ZM, Ebtehaj I, Kim S, Sanikhani H, Asadi H, Ghareb MI, Bonakdari H, Wan Mohtar WHM, Al-Ansari N, Shahid S. Novel Hybrid Data-Intelligence Model for Forecasting Monthly Rainfall with Uncertainty Analysis. Water. 2019; 11(3):502. https://doi.org/10.3390/w11030502
Chicago/Turabian StyleYaseen, Zaher Mundher, Isa Ebtehaj, Sungwon Kim, Hadi Sanikhani, H. Asadi, Mazen Ismaeel Ghareb, Hossein Bonakdari, Wan Hanna Melini Wan Mohtar, Nadhir Al-Ansari, and Shamsuddin Shahid. 2019. "Novel Hybrid Data-Intelligence Model for Forecasting Monthly Rainfall with Uncertainty Analysis" Water 11, no. 3: 502. https://doi.org/10.3390/w11030502
APA StyleYaseen, Z. M., Ebtehaj, I., Kim, S., Sanikhani, H., Asadi, H., Ghareb, M. I., Bonakdari, H., Wan Mohtar, W. H. M., Al-Ansari, N., & Shahid, S. (2019). Novel Hybrid Data-Intelligence Model for Forecasting Monthly Rainfall with Uncertainty Analysis. Water, 11(3), 502. https://doi.org/10.3390/w11030502