1- Khaleel, M., Yusupov, Z., Alfalh, B., Guneser, M. T., Nassar, Y., & El-Khozondar, H. (2024). Impact of smart grid technologies on sustainable urban development. Int. J. Electr. Eng. and Sustain., 62-82.
2- Alharbi, F. R., & Csala, D. (2022). A seasonal autoregressive integrated moving average with exogenous factors (SARIMAX) forecasting model-based time series approach. Inventions, 7(4), 94
3- Mahmood, M. A., & Manii, J. K. (2021). Measurement of some climatic parameter in Babylon governorate by statistical and mathematical methods. The Iraqi Geological Journal, 57-68
4- Kaur, J., Parmar, K. S., & Singh, S. (2023). Autoregressive models in environmental forecasting time series: a theoretical and application review. Environmental Science and Pollution Research, 30(8), 19617-19641.
5- Djimasbe, R., Gyamfi, S., Iweh, C. D., & Ribar, B. N. (2024). Development of an ARIMAX model for forecasting airport electricity consumption in Accra-Ghana: The role of weather and air passenger traffic. E-Prime-Advances in Electrical Engineering, Electronics and Energy, 9, 100691.
6- Mahapatra, B., & Nayyar, A. (2022). Home energy management system (HEMS): Concept, architecture, infrastructure, challenges and energy management schemes. Energy Systems, 13(3), 643-669.
7- Berger, J., Yalcinoz, T., & Rudion, K. (2020, June). Investigating the intraday continuous electricity market using auto regression integrated moving average model with exogenous inputs. In 2020 IEEE International Conference on Environment and Electrical Engineering and 2020 IEEE Industrial and Commercial Power Systems Europe (EEEIC/I&CPS Europe) (pp. 1-6). IEEE.
8- Berger, J., Yalcinoz, T., & Rudion, K. (2020, June). Investigating the intraday continuous electricity market using auto regression integrated moving average model with exogenous inputs. In 2020 IEEE International Conference on Environment and Electrical Engineering and 2020 IEEE Industrial and Commercial Power Systems Europe (EEEIC/I&CPS Europe) (pp. 1-6). IEEE.
9- Gábor, A., & Banga, J. R. (2015). Robust and efficient parameter estimation in dynamic models of biological systems. BMC systems biology, 9(1), 74
10- Aleti, A., Moser, I., Meedeniya, I., & Grunske, L. (2014). Choosing the appropriate forecasting model for predictive parameter control. Evolutionary computation, 22(2), 319-349.
11- Fakhri, M. A., & AL Mohana, F. A. M. (2025). Applying (RLS-KF) Method and Some Kernel Methods to Forecasting the Dollar Exchange Rate Based on Exogenous Variables. In Sustainable Data Management: Navigating Big Data, Communication Technology, and Business Digital Leadership. Volume 2 (pp. 319-330). Cham: Springer Nature Switzerland.
12- Amaefula Chibuzo, G. (2023). Comparative analysis of information criteria with a forecast-based criterion for optimal ARIMA model identification: Empirical evidence using naira-franc exchange rate. Asian Journal of Pure and Applied Mathematics, 5(1), 123-133.
13- Fakhri, M. A., & AL Mohana, F. A. M. (2025). Applying (RLS-KF) Method and Some Kernel Methods to Forecasting the Dollar Exchange Rate Based on Exogenous Variables. In Sustainable Data Management: Navigating Big Data, Communication Technology, and Business Digital Leadership. Volume 2 (pp. 319-330). Cham: Springer Nature Switzerland.
14- Jatti, V. S., Sekhar, R., & Shah, P. (2021, May). Machine learning based predictive modeling of ball nose end milling using exogeneous autoregressive moving average approach. In 2021 IEEE 12th International Conference on Mechanical and Intelligent Manufacturing Technologies (ICMIMT) (pp. 68-72). IEEE.
15- Yu, H., Zhu, H., Weng, S., Wen, W., Yan, A., & Yu, X. (2023). Substructural damage identification using autoregressive moving average with exogenous inputs model and sparse regularization. Advances in Structural Engineering, 26(9), 1621-1635.
16- Yu, H., Zhu, H., Weng, S., Wen, W., Yan, A., & Yu, X. (2023). Substructural damage identification using autoregressive moving average with exogenous inputs model and sparse regularization. Advances in Structural Engineering, 26(9), 1621-1635.
17- Chatterjee, S., & Byun, Y. C. (2023). A synthetic data generation technique for enhancement of prediction accuracy of electric vehicles demand. Sensors, 23(2), 594.