
International Journal on Science and Technology
E-ISSN: 2229-7677
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Impact Factor: 9.88
A Widely Indexed Open Access Peer Reviewed Multidisciplinary Bi-monthly Scholarly International Journal
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Volume 16 Issue 2
2025
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Solar Intelligence Predictive Models for Power Generation and Radiation
Author(s) | Kirubakaran M, Nithish Kumar B, Mohammed Thowfiq, Balaji M |
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Country | India |
Abstract | The efficient integration of solar energy into the power grid requires accurate regression of solar power generation and radiation levels. This work explores the development of "Solar Intelligence" - a system utilizing machine learning-based predictive models. These models will be trained on a multitude of data sources, including historical solar radiation measurements, weather forecasts, and environmental factors. By analysing these complex relationships, Solar Intelligence aims to predict future solar power generation and radiation with high accuracy. This improved forecasting capability will empower grid operators to optimize energy production, integrate renewable sources seamlessly, and enhance overall grid stability. Furthermore, this "Solar Intelligence" system has the potential to revolutionize solar energy management for utilities and individual consumers, enabling informed decision-making and maximizing the utilization of this clean and sustainable energy source. |
Keywords | Keywords: Solar Energy, Machine Learning, Predictive Models, Power, Generation, Solar Radiation |
Field | Engineering |
Published In | Volume 16, Issue 1, January-March 2025 |
Published On | 2025-03-31 |
Cite This | Solar Intelligence Predictive Models for Power Generation and Radiation - Kirubakaran M, Nithish Kumar B, Mohammed Thowfiq, Balaji M - IJSAT Volume 16, Issue 1, January-March 2025. |
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CrossRef DOI is assigned to each research paper published in our journal.
IJSAT DOI prefix is
10.71097/IJSAT
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