LAPSE:2024.0826
Published Article
LAPSE:2024.0826
Optimizing Short-Term Photovoltaic Power Forecasting: A Novel Approach with Gaussian Process Regression and Bayesian Hyperparameter Tuning
Md. Samin Safayat Islam, Puja Ghosh, Md. Omer Faruque, Md. Rashidul Islam, Md. Alamgir Hossain, Md. Shafiul Alam, Md. Rafiqul Islam Sheikh
June 7, 2024
Abstract
The inherent volatility of PV power introduces unpredictability to the power system, necessitating accurate forecasting of power generation. In this study, a machine learning (ML) model based on Gaussian process regression (GPR) for short-term PV power output forecasting is proposed. With its benefits in handling nonlinear relationships, estimating uncertainty, and generating probabilistic forecasts, GPR is an appropriate approach for addressing the problems caused by PV power generation’s irregularity. Additionally, Bayesian optimization to identify optimal hyper-parameter combinations for the ML model is utilized. The research leverages solar radiation intensity data collected at 60-min and 30-min intervals over periods of 1 year and 6 months, respectively. Comparative analysis reveals that the data set with 60-min intervals performs slightly better than the 30-min intervals data set. The proposed GPR model, coupled with Bayesian optimization, demonstrates superior performance compared to contemporary ML models and traditional neural network models. This superiority is evident in 98% and 90% improvements in root mean square errors compared to feed-forward neural network and artificial neural network models, respectively. This research contributes to advancing accurate and efficient forecasting methods for PV power output, thereby enhancing the reliability and stability of power systems.
Keywords
Bayesian optimization, Gaussian process regression, Machine Learning, PV power forecasting, solar radiation intensity
Suggested Citation
Islam MSS, Ghosh P, Faruque MO, Islam MR, Hossain MA, Alam MS, Islam Sheikh MR. Optimizing Short-Term Photovoltaic Power Forecasting: A Novel Approach with Gaussian Process Regression and Bayesian Hyperparameter Tuning. (2024). LAPSE:2024.0826
Author Affiliations
Islam MSS: Department of Electrical & Electronic Engineering, Rajshahi University of Engineering & Technology, Rajshahi 6204, Bangladesh
Ghosh P: Department of Electrical & Electronic Engineering, Rajshahi University of Engineering & Technology, Rajshahi 6204, Bangladesh
Faruque MO: Department of Electrical & Electronic Engineering, Dhaka University of Engineering & Technology, Gazipur 1707, Bangladesh
Islam MR: Department of Electrical & Electronic Engineering, Rajshahi University of Engineering & Technology, Rajshahi 6204, Bangladesh [ORCID]
Hossain MA: Queensland Micro- and Nanotechnology Centre, Griffith University, Nathan, QLD 4111, Australia [ORCID]
Alam MS: Applied Research Center for Environment & Marine Studies, King Fahd University of Petroleum & Minerals (KFUPM), Dhahran 31261, Saudi Arabia [ORCID]
Islam Sheikh MR: Department of Electrical & Electronic Engineering, Rajshahi University of Engineering & Technology, Rajshahi 6204, Bangladesh
Journal Name
Processes
Volume
12
Issue
3
First Page
546
Year
2024
Publication Date
2024-03-11
ISSN
2227-9717
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Original Submission
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PII: pr12030546, Publication Type: Journal Article
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LAPSE:2024.0826
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https://doi.org/10.3390/pr12030546
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