Feature-Selective Ensemble Learning-Based Long-Term Regional PV Generation Forecasting
- Authors
- Eom, Haneul; Son, Yongju; Choi, Sungyun
- Issue Date
- 2020
- Publisher
- IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
- Keywords
- Ensemble learning; forecasting; long-term forecast; machine learning; power system planning
- Citation
- IEEE ACCESS, v.8, pp.54620 - 54630
- Indexed
- SCIE
SCOPUS
- Journal Title
- IEEE ACCESS
- Volume
- 8
- Start Page
- 54620
- End Page
- 54630
- URI
- https://scholar.korea.ac.kr/handle/2021.sw.korea/58993
- DOI
- 10.1109/ACCESS.2020.2981819
- ISSN
- 2169-3536
- Abstract
- Because of Korea's rapid expansion in photovoltaic (PV) generation, forecasting long-term PV generation is of prime importance for utilities to establish transmission and distribution planning. However, most previous studies focused on long-term PV forecasting have been based on parametric methodologies, and most machine learning-based approaches have focused on short-term forecasting. In addition, many factors can affect local PV production, but proper feature selection is needed to prevent overfitting and multicollinearity. In this study, we perform feature-selective long-term PV power generation predictions based on an ensemble model that combines machine learning methods and traditional time-series predictions. We provide a framework for performing feature selection through correlation analysis and backward elimination, along with an ensemble prediction methodology based on feature selection. Utilities gather predictions from various sources and need to consider them to make accurate forecasts. Our ensemble method can produce accurate predictions using various prediction sources. The model with applied feature selection shows higher predictive power than other models that use arbitrary features, and the proposed feature-selective ensemble model based on a convolutional neural network shows the best predictive power.
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Collections - College of Engineering > School of Electrical Engineering > 1. Journal Articles
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