Machine learning-based energy management and power forecasting in grid-connected microgrids with multiple distributed energy sources
Hanjiang Normal University · Lingnan Normal University · +5 more institutions
Abstract
The growing integration of renewable energy sources into grid-connected microgrids has created new challenges in power generation forecasting and energy management. This paper explores the use of advanced machine learning algorithms, specifically Support Vector Regression (SVR), to enhance the efficiency and reliability of these systems. The proposed SVR algorithm leverages comprehensive historical energy production data, detailed weather patterns, and dynamic grid conditions to accurately forecast power generation. Our model demonstrated significantly lower error metrics compared to traditional linear regression models, achieving a Mean Squared Error of 2.002 for solar PV and 3.059 for wind power forecasting.…
Citation impact
- FWCI
- 54.31
- Percentile
- 100%
- References
- 96
Authors
5- ARArvind R. Singh
Hanjiang Normal University, Lingnan Normal University
- RSR. Seshu Kumar
Vignan's Foundation for Science, Technology & Research
- MBMohit BajajCorresponding
Graphic Era University
- CBChetan B. Khadse
MIT World Peace University
- ЄЗЄвген ЗайцевCorresponding
Institute of Electrodynamics, National Academy of Sciences of Ukraine
Topics & keywords
- Computer science
- Mean absolute percentage error
- Renewable energy
- Mean squared error
- Wind power
- Support vector machine
- Energy management
- Distributed generation
- Affordable and clean energy