Renewable Energy Integration in Developing Economies: Challenges and Opportunities for Sustainable Growth
Abstract
Developing economies face unique challenges in transitioning to renewable energy sources due to infrastructural, financial, and policy constraints. This study explores the barriers and opportunities for integrating solar, wind, and hydropower in regions such as Sub-Saharan Africa and Southeast Asia. Through a combination of economic modeling and stakeholder interviews, the research identifies strategies to overcome financial hurdles, improve grid infrastructure, and foster international collaboration. The findings highlight the potential for renewable energy to drive sustainable development while addressing energy poverty.
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References
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