AI-Driven Strategic Management and Decision Making for Energy Sector

Authors

DOI:

https://doi.org/10.62802/q7rkdb54

Keywords:

Artificial Intelligence, Strategic Management, Energy Sector, Predictive Analytics, Decision Support Systems, Machine Learning, Sustainability, Optimization

Abstract

The energy sector faces unprecedented challenges, including volatile market conditions, fluctuating resource availability, and the urgent need for sustainable energy transition. Artificial intelligence (AI) offers transformative potential in addressing these challenges by enhancing strategic management and decision-making processes. This research explores the integration of AI-driven tools and methodologies into strategic management practices in the energy sector, focusing on optimization, predictive analytics, and automated decision systems. By leveraging machine learning, neural networks, and data-driven modeling, AI can provide actionable insights for supply chain optimization, demand forecasting, risk assessment, and sustainability planning. This study examines real-world case studies and employs econometric and computational models to evaluate the effectiveness of AI applications in improving operational efficiency, cost-effectiveness, and environmental outcomes. Additionally, the research investigates the ethical implications, regulatory considerations, and barriers to AI adoption in this critical sector. The findings aim to guide energy companies in aligning AI-driven strategies with long-term goals, fostering innovation, and promoting resilience in an evolving global energy landscape.

References

Binyamin, S. S., Slama, S. A. B., & Zafar, B. (2024). Artificial intelligence-powered energy community management for developing renewable energy systems in smart homes. Energy Strategy Reviews, 51, 101288.

Hamdan, A., Ibekwe, K. I., Ilojianya, V. I., Sonko, S., & Etukudoh, E. A. (2024). AI in renewable energy: A review of predictive maintenance and energy optimization. International Journal of Science and Research Archive, 11(1), 718-729.

Hossain, A., Al Mamun, M. A., Hossain, K., Rahman, H. B. H., Al-Jawahry, H. M., & Melon, M. M. H. (2024). AI-Driven Optimization and Management of Decentralized Renewable Energy Grids. Nanotechnology Perceptions, 76-97.

Jambol, D. D., Sofoluwe, O. O., Ukato, A., & Ochulor, O. J. (2024). Transforming equipment management in oil and gas with AI-Driven predictive maintenance. Computer Science & IT Research Journal, 5(5), 1090-1112.

Kaggwa, S., Eleogu, T. F., Okonkwo, F., Farayola, O. A., Uwaoma, P. U., & Akinoso, A. (2024). AI in decision making: transforming business strategies. International Journal of Research and Scientific Innovation, 10(12), 423-444.

Khalid, M. (2024). Energy 4.0: AI-enabled digital transformation for sustainable power networks. Computers & Industrial Engineering, 110253.

Kaur, S., Kumar, R., Singh, K., & Huang, Y. (2024). Leveraging artificial intelligence for enhanced sustainable energy management. J. Sustain. Energy, 3(1), 1-20.

Moinuddin, M., Usman, M., & Khan, R. (2024). Strategic Insights in a Data-Driven Era: Maximizing Business Potential with Analytics and AI. Revista Espanola de Documentacion Cientifica, 18(02), 125-149.

Narneg, S., Adedoja, T., Ayyalasomayajula, M. M. T., & Chintala, S. (2024). AI-driven decision support systems in management: Enhancing strategic planning and execution. International Journal on Recent and Innovation Trends in Computing and Communication, 12(1), 268-275.

Olajiga, O. K., Olu-lawal, K. A., Usman, F. O., & Ninduwezuor-Ehiobu, N. (2024). Data analytics in energy corporations: Conceptual framework for strategic business outcomes. World Journal of Advanced Research and Reviews, 21(3), 952-963.

Raji, E., Ijomah, T. I., & Eyieyien, O. G. (2024). Integrating technology, market strategies, and strategic management in agricultural economics for enhanced productivity. International Journal of Management & Entrepreneurship Research, 6(7), 2112-2124.

SaberiKamarposhti, M., Kamyab, H., Krishnan, S., Yusuf, M., Rezania, S., Chelliapan, S., & Khorami, M. (2024). A comprehensive review of AI-enhanced smart grid integration for hydrogen energy: Advances, challenges, and future prospects. International Journal of Hydrogen Energy.

Shaik, A. S., Alshibani, S. M., Jain, G., Gupta, B., & Mehrotra, A. (2024). Artificial intelligence (AI)‐driven strategic business model innovations in small‐and medium‐sized enterprises. Insights on technological and strategic enablers for carbon neutral businesses. Business Strategy and the Environment, 33(4), 2731-2751.

Zakizadeh, M., & Zand, M. (2024, February). Transforming the Energy Sector: Unleashing the Potential of AI-Driven Energy Intelligence, Energy Business Intelligence, and Energy Management System for Enhanced Efficiency and Sustainability. In 2024 20th CSI International Symposium on Artificial Intelligence and Signal Processing (AISP) (pp. 1-7). IEEE.

frontpage

Published

2024-11-07