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A Modified Adaptive Neuro-Fuzzy Inference System Using Multi-Verse Optimizer Algorithm for Oil Consumption Forecasting

Oil is the primary source of energy, therefore, oil consumption forecasting is essential for the necessary economic and social plans. This paper presents an alternative time series prediction method for oil consumption based on a modified Adaptive Neuro-Fuzzy Inference System (ANFIS) model using the Multi-verse Optimizer algorithm (MVO). MVO is applied to find the optimal parameters of the ANFIS. Then, the hybrid method, namely MVO-ANFIS, is employed to forecast oil consumption. To evaluate the performance of the MVO-ANFIS model, a dataset of two different countries was used and compared with several forecasting models. The evaluation results show the superiority of the MVO-ANFIS model over other models. Moreover, the proposed method constitutes an accurate tool that effectively improved the solution of time series prediction problems.
- Wuhan University China (People's Republic of)
- Zagazig University Egypt
- Damietta University Egypt
- Wuhan University China (People's Republic of)
- Damietta University Egypt
Multi-verse Optimizer, TK7800-8360, forecasting, Electronics, oil consumption, ANFIS
Multi-verse Optimizer, TK7800-8360, forecasting, Electronics, oil consumption, ANFIS
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