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A Study on the Wind Power Forecasting Model Using Transfer Learning Approachopen access

Authors
Oh, J.Park, J.Ok, C.Ha, C.Jun, H.-B.
Issue Date
1-Dec-2022
Publisher
MDPI
Keywords
data-driven approach; mid-term forecasting; transfer learning; wind power forecasting
Citation
Electronics (Switzerland), v.11, no.24
Journal Title
Electronics (Switzerland)
Volume
11
Number
24
URI
https://scholarworks.bwise.kr/hongik/handle/2020.sw.hongik/30727
DOI
10.3390/electronics11244125
ISSN
2079-9292
2079-9292
Abstract
Recently, wind power plants that generate wind energy with electricity are attracting a lot of attention thanks to their smaller installation area and cheaper power generation costs. In wind power generation, it is important to predict the amount of generated electricity because the power system would be unstable due to uncertainty in supply. However, it is difficult to accurately predict the amount of wind power generation because the power varies due to several causes, such as wind speed, wind direction, temperature, etc. In this study, we deal with a mid-term (one day ahead) wind power forecasting problem with a data-driven approach. In particular, it is intended to solve the problem of a newly completed wind power generator that makes it very difficult to predict the amount of electricity generated due to the lack of data on past power generation. To this end, a deep learning based transfer learning model was proposed and compared with other models, such as a deep learning model without transfer learning and Light Gradient Boosting Machine (LGBM). As per the experimental results, when the proposed transfer learning model was applied to a similar wind power complex in the same region, it was confirmed that the low predictive performance of the newly constructed generator could be supplemented. © 2022 by the authors.
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