Renewable Energy Transition in Developing Countries: Challenges and Opportunities for Sustainable Development
Abstract
The transition to renewable energy is a cornerstone of global efforts to combat climate change and achieve sustainable development. However, developing countries face unique challenges, including financial constraints, technological gaps, and infrastructural limitations. This paper examines the barriers to renewable energy adoption in developing nations and identifies opportunities for overcoming these challenges. By analyzing successful case studies and policy frameworks, the study proposes a multi-stakeholder approach involving governments, private sector actors, and international organizations. The research underscores the importance of renewable energy in achieving SDG 7 (Affordable and Clean Energy) and its interconnectedness with other SDGs, such as poverty reduction and climate action
References
Vattikuti, M. C. (2021). Machine Learning for Renewable Energy Optimization Forecasting Accuracy. International Meridian Journal, 3(3).
Vattikuti, M. C. (2019). Navigating Healthcare Data Management in the Cloud: Exploring Limitations and Opportunities. Transactions on Latest Trends in IoT, 2(2).
Vattikuti, M. C. (2023). AI in Physical Therapy: Automating Rehabilitation for Faster Recovery. International Machine learning journal and Computer Engineering, 6(6).
Vattikuti, M. C. (2023). Sentiment Analysis for Crisis Management Using Social Media Data. Transactions on Recent Developments in Health Sectors, 6(6).
Vattikuti, M. C. (2021). AI in Genomics: Unlocking the Future of Precision Medicine. International Numeric Journal of Machine Learning and Robots, 5(5).
Vattikuti, M. C. (2020). AI in Emergency Medicine: Rapid Decision-Making for Critical Care. International Numeric Journal of Machine Learning and Robots, 4(4).
Vattikuti, M. C. (2019). AI in Nutrition and Dietetics: Personalized Approaches to Health and Wellness. International Numeric Journal of Machine Learning and Robots, 3(3).
Vattikuti, M. C. (2019). AI for Rare Cancer Detection: Advancing Early Diagnosis and Treatment. International Machine learning journal and Computer Engineering, 2(2).
Vattikuti, M. C. (2018). AI for Epidemic Prediction and Management: Safeguarding Public Health. International Numeric Journal of Machine Learning and Robots, 2(2).
Vattikuti, M. C. (2018). AI in Healthcare Supply Chain Management: Ensuring Resilience and Efficiency. International Machine learning journal and Computer Engineering, 1(1).
Vattikuti, M. C. (2017). AI in Radiology: Enhancing Diagnostic Accuracy and Workflow Efficiency. International Numeric Journal of Machine Learning and Robots, 1(1).
Davuluri, M., & Yarlagadda, V. S. T. (2024). NOVEL DEVICE FOR ENHANCING TUBERCULOSIS DIAGNOSIS FOR FASTER, MORE ACCURATE SCREENING RESULTS. International Journal of Innovations in Engineering Research and Technology, 11(11).
Davuluri, M. (2022). Comparative Study of Machine Learning Algorithms in Predicting Diabetes Onset Using Electronic Health Records. Research-gate journal, 8(8).
Davuluri, M. (2020). AI-Driven Predictive Analytics in Patient Outcome Forecasting for Critical Care. Research-gate journal, 6(6).
Davuluri, M. (2018). Revolutionizing Healthcare: The Role of AI in Diagnostics, Treatment, and Patient Care Integration. International Transactions in Artificial Intelligence, 2(2).
Davuluri, M. (2018). Navigating AI-Driven Data Management in the Cloud: Exploring Limitations and Opportunities. Transactions on Latest Trends in IoT, 1(1), 106-112.
Davuluri, M. (2017). Bridging the Healthcare Gap in Smart Cities: The Role of IoT Technologies in Digital Inclusion. International Transactions in Artificial Intelligence, 1(1).
Davuluri, M. (2016). Avoid Road Accident Using AI. International Journal of Sustainable Development in computer Science Engineering, 2(2).
Davuluri, M. (2015). Integrating Neural Networks and Fuzzy Logic: Innovations and Practical Applications. International Journal of Sustainable Development in computer Science Engineering, 1(1).
Davuluri, M. (2014). The Evolution and Global Impact of Big Data Science. Transactions on Latest Trends in Health Sector, 6(6).
Davuluri, M. (2023). Optimizing Supply Chain Efficiency Through Machine Learning-Driven Predictive Analytics. International Meridian Journal, 5(5).
Davuluri, M. (2021). AI in Education: Personalized Learning Pathways Using Machine Learning Algorithms. International Meridian Journal, 3(3).
Davuluri, M. (2021). AI-Powered Crop Yield Prediction Using Multimodal Data Fusion. International Journal of Machine Learning for Sustainable Development, 3(2).
Davuluri, M. (2019). Cultivating Data Quality in Healthcare: Strategies, Challenges, and Impact on Decision-Making. Transactions on Latest Trends in IoT, 2(2).
Abdi, S. D., Wagacha, K. N., Yarosake, M., Richard, B. P., & Parasa, S. K. (2024). Workforce Management. Cari Journals USA LLC.
Parasa, S. K. (2024). Impact of AI on Employee Experience and Engagement.
Parasa, S. K. (2022). Impact of AI on Employee Onboarding in HR Transformation. Available at SSRN 5102766.
Parasa, S. K. (2022). Use of SAP Intelligent RPA in SAP SuccessFactors. Available at SSRN 5079534.
Parasa, S. K. (2021). Integrating Microsoft Teams with SAP SuccessFactors: Enhancing Workforce Collaboration and Efficiency. Available at SSRN 5102744.
Parasa, S. K. (2024). Impact of AI in recruitment and talent acquisition. Human Resource and Leadership Journal, 9(3), 78-83.
Parasa, S. K. (2024). AI in SAP Fieldglass Contingent Workforce Management. Available at SSRN 5102831.
Parasa, S. K. (2024). Impact of AI in Compensation Management in HR Digital Transformation. International Journal of Science and Research (IJSR), 13(6), 10-21275.
Parasa, S. K. (2024). Building a Slack Chatbot to send SuccessFactors Notifications to Employees Using Workato. Available at SSRN 5102835.
Parasa, S. K., & Jadugala, S. (2023). Enabling Joule in SAP Success Factors: A New Frontier in Employee Experience. International Journal of Science and Research (IJSR), 12(12), 10-21275.