Research Article
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On Performance of ABC, FPA, BBO and MVO Algorithms in ANFIS Training for Short-Term Forecasting of Crude Oil Price

Year 2025, Volume: 14 Issue: 1, 314 - 330, 26.03.2025
https://doi.org/10.17798/bitlisfen.1584985

Abstract

Crude oil is one of the most important assets that are used in the production of many industrial products in a wide variety of areas. The importance of crude oil has made it important to predict its future price. Therefore, it is possible to come across many studies in the literature in which the price of crude oil is estimated in the short or long term. In this study, innovative adaptive neuro-fuzzy inference systems (ANFIS) based approaches are proposed to estimate the daily minimum and maximum prices of crude oil. The used data was taken from the period between January 3, 2022, and December 29, 2023. A total of 516 different days of data were collected to create the dataset for analysis. For daily forecasting, time series data were transformed into a data set consisting of two inputs and one output. Moth-flame optimization algorithm (MFO), flower pollination algorithm (FPA), biogeography-based optimization (BBO) and artificial bee colony (ABC) were used in training ANFIS. The results obtained in the training and testing processes were compared. When the results obtained were compared, it was shown that the relevant algorithms were effective in the daily estimation of crude oil. It has been observed that effective results are also achieved at low evaluation numbers, especially thanks to the fast convergence feature of the MFO and BBO algorithms.

Ethical Statement

The study is complied with research and publication ethics.

Supporting Institution

This study was produced from the project supported by TUBITAK – TEYDEB (The Scientific and Technological Research Council of Türkiye – Technology and Innovation Funding Programmes Directorate) (Project No: 3230705).

Thanks

This study was produced from the project supported by TUBITAK – TEYDEB (The Scientific and Technological Research Council of Türkiye – Technology and Innovation Funding Programmes Directorate) (Project No: 3230705). In addition, technical infrastructure was provided by CEKA Software R&D Co. Ltd. The authors thank both TUBITAK – TEYDEB and CEKA Software R&D Co. Ltd. for their contributions.

References

  • Z. Cen and J. Wang, "Crude oil price prediction model with long short term memory deep learning based on prior knowledge data transfer," Energy, vol. 169, pp. 160-171, 2019.
  • M. Y. Anshori, D. Rahmalia, T. Herlambang, and D. F. Karya, "Optimizing Adaptive Neuro Fuzzy Inference System (ANFIS) parameters using Cuckoo Search (Case study of world crude oil price estimation)," in Journal of Physics: Conference Series, 2021, vol. 1836, no. 1: IOP Publishing, p. 012041.
  • S. Gao and Y. Lei, "A new approach for crude oil price prediction based on stream learning," Geoscience Frontiers, vol. 8, no. 1, pp. 183-187, 2017.
  • M. Hamdi and C. Aloui, "Forecasting crude oil price using artificial neural networks: a literature survey," Econ. Bull, vol. 35, no. 2, pp. 1339-1359, 2015.
  • S. Mirmirani and H. Cheng Li, "A comparison of VAR and neural networks with genetic algorithm in forecasting price of oil," in Applications of artificial intelligence in finance and economics: Emerald Group Publishing Limited, 2004, pp. 203-223.
  • C. Wu, J. Wang, and Y. Hao, "Deterministic and uncertainty crude oil price forecasting based on outlier detection and modified multi-objective optimization algorithm," Resources Policy, vol. 77, p. 102780, 2022.
  • T. Zhang, Z. Tang, J. Wu, X. Du, and K. Chen, "Multi-step-ahead crude oil price forecasting based on two-layer decomposition technique and extreme learning machine optimized by the particle swarm optimization algorithm," Energy, vol. 229, p. 120797, 2021.
  • N. Gupta and S. Nigam, "Crude oil price prediction using artificial neural network," Procedia Computer Science, vol. 170, pp. 642-647, 2020.
  • H. Chiroma, S. Abdulkareem, and T. Herawan, "Evolutionary Neural Network model for West Texas Intermediate crude oil price prediction," Applied Energy, vol. 142, pp. 266-273, 2015.
  • M. A. Al-Qaness, A. A. Ewees, L. Abualigah, A. M. AlRassas, H. V. Thanh, and M. Abd Elaziz, "Evaluating the applications of dendritic neuron model with metaheuristic optimization algorithms for crude-oil-production forecasting," Entropy, vol. 24, no. 11, p. 1674, 2022.
  • P. Sohrabi, H. Dehghani, and R. Rafie, "Forecasting of WTI crude oil using combined ANN-Whale optimization algorithm," Energy Sources, Part B: Economics, Planning, and Policy, vol. 17, no. 1, p. 2083728, 2022.
  • J. W.-S. Hu, Y.-C. Hu, and R. R.-W. Lin, "Applying neural networks to prices prediction of crude oil futures," Mathematical Problems in Engineering, vol. 2012, no. 1, p. 959040, 2012.
  • S. Sivanandam, S. Deepa, S. Sivanandam, and S. Deepa, Genetic algorithms. Springer, 2008.
  • J. V. Tu, "Advantages and disadvantages of using artificial neural networks versus logistic regression for predicting medical outcomes," Journal of clinical epidemiology, vol. 49, no. 11, pp. 1225-1231, 1996.
  • M. N. M. Salleh, N. Talpur, and K. Hussain, "Adaptive neuro-fuzzy inference system: Overview, strengths, limitations, and solutions," in Data Mining and Big Data: Second International Conference, DMBD 2017, Fukuoka, Japan, July 27–August 1, 2017, Proceedings 2, 2017: Springer, pp. 527-535.
  • J.-S. Jang and C.-T. Sun, "Neuro-fuzzy modeling and control," Proceedings of the IEEE, vol. 83, no. 3, pp. 378-406, 1995.
  • J.-S. Jang, "ANFIS: adaptive-network-based fuzzy inference system," IEEE Transactions on Systems, Man, and Cybernetics, vol. 23, no. 3, pp. 665-685, 1993.
  • D. Karaboga and E. Kaya, "Adaptive network based fuzzy inference system (ANFIS) training approaches: a comprehensive survey," Artificial Intelligence Review, vol. 52, pp. 2263-2293, 2019.
  • T. Smith and M. Villet, "Parasitoids associated with the diamondback moth, Plutella xylostella (L.), in the Eastern Cape, South Africa," 2004.
  • K. J. Gaston, J. Bennie, T. W. Davies, and J. Hopkins, "The ecological impacts of nighttime light pollution: a mechanistic appraisal," Biological Reviews, vol. 88, no. 4, pp. 912-927, 2013.
  • M. Shehab, L. Abualigah, H. Al Hamad, H. Alabool, M. Alshinwan, and A. M. Khasawneh, "Moth–flame optimization algorithm: variants and applications," Neural Computing and Applications, vol. 32, no. 14, pp. 9859-9884, 2020.
  • S. Mirjalili, "Moth-flame optimization algorithm: A novel nature-inspired heuristic paradigm," Knowledge-Based Systems, vol. 89, pp. 228-249, 2015.
  • M. Abdel-Basset and L. A. Shawky, "Flower pollination algorithm: a comprehensive review," Artificial Intelligence Review, vol. 52, pp. 2533-2557, 2019.
  • S. Kalra and S. Arora, "Firefly algorithm hybridized with flower pollination algorithm for multimodal functions," in Proceedings of the International Congress on Information and Communication Technology: ICICT 2015, Volume 1, 2016: Springer, pp. 207-219.
  • I. Pavlyukevich, "Lévy flights, non-local search and simulated annealing," journal of computational physics, vol. 226, no. 2, pp. 1830-1844, 2007.
  • X.-S. Yang, "Flower pollination algorithm for global optimization," in International conference on unconventional computing and natural computation, 2012: Springer, pp. 240-249.
  • D. Simon, "Biogeography-based optimization," IEEE Transactions on Evolutionary Computation, vol. 12, no. 6, pp. 702-713, 2008.
  • D. Karaboga and B. Basturk, "A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm," Journal of global optimization, vol. 39, pp. 459-471, 2007.
  • D. Karaboga and B. Basturk, "On the performance of artificial bee colony (ABC) algorithm," Applied Soft Computing, vol. 8, no. 1, pp. 687-697, 2008.
Year 2025, Volume: 14 Issue: 1, 314 - 330, 26.03.2025
https://doi.org/10.17798/bitlisfen.1584985

Abstract

References

  • Z. Cen and J. Wang, "Crude oil price prediction model with long short term memory deep learning based on prior knowledge data transfer," Energy, vol. 169, pp. 160-171, 2019.
  • M. Y. Anshori, D. Rahmalia, T. Herlambang, and D. F. Karya, "Optimizing Adaptive Neuro Fuzzy Inference System (ANFIS) parameters using Cuckoo Search (Case study of world crude oil price estimation)," in Journal of Physics: Conference Series, 2021, vol. 1836, no. 1: IOP Publishing, p. 012041.
  • S. Gao and Y. Lei, "A new approach for crude oil price prediction based on stream learning," Geoscience Frontiers, vol. 8, no. 1, pp. 183-187, 2017.
  • M. Hamdi and C. Aloui, "Forecasting crude oil price using artificial neural networks: a literature survey," Econ. Bull, vol. 35, no. 2, pp. 1339-1359, 2015.
  • S. Mirmirani and H. Cheng Li, "A comparison of VAR and neural networks with genetic algorithm in forecasting price of oil," in Applications of artificial intelligence in finance and economics: Emerald Group Publishing Limited, 2004, pp. 203-223.
  • C. Wu, J. Wang, and Y. Hao, "Deterministic and uncertainty crude oil price forecasting based on outlier detection and modified multi-objective optimization algorithm," Resources Policy, vol. 77, p. 102780, 2022.
  • T. Zhang, Z. Tang, J. Wu, X. Du, and K. Chen, "Multi-step-ahead crude oil price forecasting based on two-layer decomposition technique and extreme learning machine optimized by the particle swarm optimization algorithm," Energy, vol. 229, p. 120797, 2021.
  • N. Gupta and S. Nigam, "Crude oil price prediction using artificial neural network," Procedia Computer Science, vol. 170, pp. 642-647, 2020.
  • H. Chiroma, S. Abdulkareem, and T. Herawan, "Evolutionary Neural Network model for West Texas Intermediate crude oil price prediction," Applied Energy, vol. 142, pp. 266-273, 2015.
  • M. A. Al-Qaness, A. A. Ewees, L. Abualigah, A. M. AlRassas, H. V. Thanh, and M. Abd Elaziz, "Evaluating the applications of dendritic neuron model with metaheuristic optimization algorithms for crude-oil-production forecasting," Entropy, vol. 24, no. 11, p. 1674, 2022.
  • P. Sohrabi, H. Dehghani, and R. Rafie, "Forecasting of WTI crude oil using combined ANN-Whale optimization algorithm," Energy Sources, Part B: Economics, Planning, and Policy, vol. 17, no. 1, p. 2083728, 2022.
  • J. W.-S. Hu, Y.-C. Hu, and R. R.-W. Lin, "Applying neural networks to prices prediction of crude oil futures," Mathematical Problems in Engineering, vol. 2012, no. 1, p. 959040, 2012.
  • S. Sivanandam, S. Deepa, S. Sivanandam, and S. Deepa, Genetic algorithms. Springer, 2008.
  • J. V. Tu, "Advantages and disadvantages of using artificial neural networks versus logistic regression for predicting medical outcomes," Journal of clinical epidemiology, vol. 49, no. 11, pp. 1225-1231, 1996.
  • M. N. M. Salleh, N. Talpur, and K. Hussain, "Adaptive neuro-fuzzy inference system: Overview, strengths, limitations, and solutions," in Data Mining and Big Data: Second International Conference, DMBD 2017, Fukuoka, Japan, July 27–August 1, 2017, Proceedings 2, 2017: Springer, pp. 527-535.
  • J.-S. Jang and C.-T. Sun, "Neuro-fuzzy modeling and control," Proceedings of the IEEE, vol. 83, no. 3, pp. 378-406, 1995.
  • J.-S. Jang, "ANFIS: adaptive-network-based fuzzy inference system," IEEE Transactions on Systems, Man, and Cybernetics, vol. 23, no. 3, pp. 665-685, 1993.
  • D. Karaboga and E. Kaya, "Adaptive network based fuzzy inference system (ANFIS) training approaches: a comprehensive survey," Artificial Intelligence Review, vol. 52, pp. 2263-2293, 2019.
  • T. Smith and M. Villet, "Parasitoids associated with the diamondback moth, Plutella xylostella (L.), in the Eastern Cape, South Africa," 2004.
  • K. J. Gaston, J. Bennie, T. W. Davies, and J. Hopkins, "The ecological impacts of nighttime light pollution: a mechanistic appraisal," Biological Reviews, vol. 88, no. 4, pp. 912-927, 2013.
  • M. Shehab, L. Abualigah, H. Al Hamad, H. Alabool, M. Alshinwan, and A. M. Khasawneh, "Moth–flame optimization algorithm: variants and applications," Neural Computing and Applications, vol. 32, no. 14, pp. 9859-9884, 2020.
  • S. Mirjalili, "Moth-flame optimization algorithm: A novel nature-inspired heuristic paradigm," Knowledge-Based Systems, vol. 89, pp. 228-249, 2015.
  • M. Abdel-Basset and L. A. Shawky, "Flower pollination algorithm: a comprehensive review," Artificial Intelligence Review, vol. 52, pp. 2533-2557, 2019.
  • S. Kalra and S. Arora, "Firefly algorithm hybridized with flower pollination algorithm for multimodal functions," in Proceedings of the International Congress on Information and Communication Technology: ICICT 2015, Volume 1, 2016: Springer, pp. 207-219.
  • I. Pavlyukevich, "Lévy flights, non-local search and simulated annealing," journal of computational physics, vol. 226, no. 2, pp. 1830-1844, 2007.
  • X.-S. Yang, "Flower pollination algorithm for global optimization," in International conference on unconventional computing and natural computation, 2012: Springer, pp. 240-249.
  • D. Simon, "Biogeography-based optimization," IEEE Transactions on Evolutionary Computation, vol. 12, no. 6, pp. 702-713, 2008.
  • D. Karaboga and B. Basturk, "A powerful and efficient algorithm for numerical function optimization: artificial bee colony (ABC) algorithm," Journal of global optimization, vol. 39, pp. 459-471, 2007.
  • D. Karaboga and B. Basturk, "On the performance of artificial bee colony (ABC) algorithm," Applied Soft Computing, vol. 8, no. 1, pp. 687-697, 2008.
There are 29 citations in total.

Details

Primary Language English
Subjects Fuzzy Computation, Planning and Decision Making, Artificial Intelligence (Other)
Journal Section Research Article
Authors

Ebubekir Kaya 0000-0001-8576-7750

Ahmet Kaya 0000-0001-5109-8130

Eyüp Sıramkaya 0000-0002-6011-7302

Ceren Baştemur Kaya 0000-0002-0091-3606

Publication Date March 26, 2025
Submission Date November 13, 2024
Acceptance Date February 11, 2025
Published in Issue Year 2025 Volume: 14 Issue: 1

Cite

IEEE E. Kaya, A. Kaya, E. Sıramkaya, and C. Baştemur Kaya, “On Performance of ABC, FPA, BBO and MVO Algorithms in ANFIS Training for Short-Term Forecasting of Crude Oil Price”, Bitlis Eren Üniversitesi Fen Bilimleri Dergisi, vol. 14, no. 1, pp. 314–330, 2025, doi: 10.17798/bitlisfen.1584985.

Bitlis Eren University
Journal of Science Editor
Bitlis Eren University Graduate Institute
Bes Minare Mah. Ahmet Eren Bulvari, Merkez Kampus, 13000 BITLIS