Mathematical models for the prediction of consumption and generation of electrical energy through generator sets that use oil and diesel from the Petroecuador company
Abstract
This study develops a mathematical model to predict electricity consumption and generation in Petroecuador's generator sets using oil and diesel. By implementing advanced machine learning techniques, specifically decision trees and ARIMA models, it was possible to capture the complex relationships between fuel consumption and energy production. Analysis of historical data revealed a strong linear relationship between crude oil consumption and power generation, while diesel showed a non-linear and weaker relationship. The model achieved a determination coefficient of 0.97 in validation with real data, demonstrating exceptional predictive capability. This precision was achieved using detailed daily data, underlining the importance of maintaining frequent and thorough records. The developed model not only allows accurate predictions but also offers a versatile tool for strategic planning, inventory optimization, maintenance scheduling, and improving Petroecuador's overall energy efficiency. This study establishes a solid foundation for future research in the field of energy prediction and efficient resource management in the oil and energy industry.
Downloads
References
Dźwigoł, H., Dźwigoł-Barosz, M., & Bogdanivna Zhyvko, Z. (2019). Evaluation of the energy security as a component of national security of the country. Article in Journal of Security and Sustainability Issues. https://doi.org/10.9770/jssi.2019.8.3(2)
Gao, J., Chen, H., Li, Y., Chen, J., Zhang, Y., Dave, K., & Huang, Y. (2019). Fuel consumption and exhaust emissions of diesel vehicles in worldwide harmonized light vehicles test cycles and their sensitivities to eco-driving factors. Energy Conversion and Management, 196, 605–613. https://doi.org/10.1016/J.ENCONMAN.2019.06.038
Keith, T. Z. (2019). Multiple regression and beyond: An introduction to multiple regression and structural equation modeling. Multiple Regression and Beyond: An Introduction to Multiple Regression and Structural Equation Modeling, 1–639. https://doi.org/10.4324/9781315162348/MULTIPLE-REGRESSION-BEYOND-TIMOTHY-KEITH
Khairi, D. M., Abas, M. A., Muhamad, S. F., & Wan Salim, W. S.-I. (2021). View of Fuel consumption mathematical models for road vehicle – A review. Progress in Energy and Environment. https://akademiabaru.com/submit/index.php/progee/article/view/3392/2799
Krasnyuk, M., Hrashchenko, I. S., Goncharenko, S., & Krasniuk, S. (2022). Hybrid application of decision trees, fuzzy logic and production rules for supporting investment decision making (on the example of an oil and gas producing company). ACCESS Journal: Access to Science, Business, Innovation in Digital Economy, 3(3), 278–291. https://doi.org/10.46656/ACCESS.2022.3.3(7)
Markiewicz, M., & Muślewski, Ł. (2020). Survey performance and emission parameters of diesel engine powered by diesel oil and fatty acid methyl esters using fuzzy logic techniques. Fuel, 277, 118179. https://doi.org/10.1016/J.FUEL.2020.118179
Shih, S. Y., Sun, F. K., & Lee, H. yi. (2019). Temporal pattern attention for multivariate time series forecasting. Machine Learning, 108(8–9), 1421–1441. https://doi.org/10.1007/S10994-019-05815-0/TABLES/4
Van Ruijven, B. J., De Cian, E., & Sue Wing, I. (2019). Amplification of future energy demand growth due to climate change. Nature Communications 2019 10:1, 10(1), 1–12. https://doi.org/10.1038/s41467-019-10399-3
Veza, I., Afzal, A., Mujtaba, M. A., Tuan Hoang, A., Balasubramanian, D., Sekar, M., Fattah, I. M. R., Soudagar, M. E. M., EL-Seesy, A. I., Djamari, D. W., Hananto, A. L., Putra, N. R., & Tamaldin, N. (2022). Review of artificial neural networks for gasoline, diesel and homogeneous charge compression ignition engine. Alexandria Engineering Journal, 61(11), 8363–8391. https://doi.org/10.1016/J.AEJ.2022.01.072
Yusif Mahmoud Ahmed, J. (2023). Optimized Fuel Efficiency and Management of Diesel-Powered Thermal Plants for Power Generation Stations in Freetown. SSRN Electronic Journal. https://doi.org/10.2139/SSRN.4401128
Zhang, Y., Vand, B., & Baldi, S. (2022). A Review of Mathematical Models of Building Physics and Energy Technologies for Environmentally Friendly Integrated Energy Management Systems. Buildings 2022, Vol. 12, Page 238, 12(2), 238. https://doi.org/10.3390/BUILDINGS12020238
X. Han and G. Hou, "Application of Predictive Algorithms in Informational Learning," 2023 2nd International Conference on Data Analytics, Computing and Artificial Intelligence (ICDACAI), Zakopane, Poland, 2023, pp. 502-508, doi: 10.1109/ICDACAI59742.2023.00101.
K. Rao, P. R. Gopal and K. Lata, "Computational Analysis of Machine Learning Algorithms to Predict Heart Disease," 2021 11th International Conference on Cloud Computing, Data Science & Engineering (Confluence), Noida, India, 2021, pp. 960-964, doi: 10.1109/Confluence51648.2021.9377185.
Schober P, Vetter TR. Logistic Regression in Medical Research. Anesth Analg. 2021 Feb 1;132(2):365-366. doi: 10.1213/ANE.0000000000005247. PMID: 33449558; PMCID: PMC7785709.
A. Pandey and A. Jain, "Detection of Compromised Accounts using Machine Learning Based Boosting Algorithms- AdaBoost, XGBoost, and CatBoost," 2023 14th International Conference on Computing Communication and Networking Technologies (ICCCNT), Delhi, India, 2023, pp. 1-6, doi: 10.1109/ICCCNT56998.2023.10307557.
N. S. S. V. S. Rao and S. J. J. Thangaraj, "Flight Ticket Prediction using Random Forest Regressor Compared with Decision Tree Regressor," 2023 Eighth International Conference on Science Technology Engineering and Mathematics (ICONSTEM), Chennai, India, 2023, pp. 1-5, doi: 10.1109/ICONSTEM56934.2023.10142260.
N. Pachauri and C. W. Ahn, "Electrical Energy Prediction of Combined Cycle Power Plant Using Gradient Boosted Generalized Additive Model," in IEEE Access, vol. 10, pp. 24566-24577, 2022, doi: 10.1109/ACCESS.2022.3153720.
Khan, Z.A.; Ullah, A.; Ullah, W.; Rho, S.; Lee, M.; Baik, S.W. Electrical Energy Prediction in Residential Buildings for Short-Term Horizons Using Hybrid Deep Learning Strategy. Appl. Sci. 2020, 10, 8634. https://doi.org/10.3390/app10238634
Pierre AA, Akim SA, Semenyo AK, Babiga B. Peak Electrical Energy Consumption Prediction by ARIMA, LSTM, GRU, ARIMA-LSTM and ARIMA-GRU Approaches. Energies. 2023; 16(12):4739. https://doi.org/10.3390/en16124739
Zhang, T., Liao, L., Lai, H., Liu, J., Zou, F., Cai, Q. (2019). Electrical Energy Prediction with Regression-Oriented Models. In: Krömer, P., Zhang, H., Liang, Y., Pan, JS. (eds) Proceedings of the Fifth Euro-China Conference on Intelligent Data Analysis and Applications. ECC 2018. Advances in Intelligent Systems and Computing, vol 891. Springer, Cham. https://doi.org/10.1007/978-3-030-03766-6_16