Harnessing Renewable Energy with Machine Learning: A Comparative Study of Renewable Energy Approaches in the USA and Sub-Saharan Africa.
Publication Date: 10/01/2025
Author(s): Anya Adebayo Anya.
Volume/Issue: Volume 5 , Issue 1 (2025)
Abstract:
The integration of machine learning (ML) in renewable energy systems has emerged as a pivotal strategy for enhancing energy efficiency, forecasting energy demand, and improving the stability of power grids. This study presents a comparative analysis of the adoption and application of ML in renewable energy between the United States and Sub-Saharan Africa (SSA). The United States has made significant advancements in utilizing ML technologies, leveraging them for optimizing grid operations, energy consumption forecasting, and waste management. Conversely, Sub-Saharan Africa, despite its vast renewable energy potential, faces substantial barriers such as inadequate infrastructure, limited data availability, and insufficient technological capacity, hindering the widespread application of ML in renewable energy. Through a critical review of existing literature, this study identifies the technological, economic, and policy-related challenges that both regions face in integrating ML into renewable energy systems. While the United States benefits from a strong technological infrastructure and investment in research and development, SSA is still in the early stages of adopting ML, with considerable room for growth. The findings suggest that while the USA has been successful in applying ML to improve energy efficiency and integrate renewable resources, Sub-Saharan Africa’s adoption of ML is limited by structural constraints, a lack of skilled personnel, and financial challenges. This paper offers policy recommendations for Sub-Saharan African countries to foster greater integration of ML in renewable energy, including improving data infrastructure, investing in educational and technological capacity, and enhancing cross-border collaborations. Additionally, the United States can play a key role in supporting African nations through technology transfer, joint research ventures, and strategic investments to overcome the barriers to ML adoption in the renewable energy sector. In conclusion, the integration of ML with renewable energy systems presents a transformative opportunity for both regions. Addressing the technological and infrastructural challenges in Sub-Saharan Africa, while leveraging the advancements in the United States, will be crucial for achieving sustainable and efficient global energy systems. This study underscores the importance of international cooperation and tailored policy frameworks in advancing ML applications for renewable energy in both developed and developing regions.
Keywords:
Renewable energy; Machine learning; sub-Saharan Africa (SSA).