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Title

A Hybrid Wind Power Forecasting Model with XGBoost, Data Preprocessing Considering Different NWPs.

Authors

Phan, Quoc Thang; Wu, Yuan Kang; Phan, Quoc Dung; Yan, Jun-Juh; Tsai, Jason Sheng-Hong

Abstract

In recent years, wind energy has become a competitively priced source of energy around the world, which has created increasing challenges for system operators. Accurate wind power generation forecasting plays an important role in power systems to improve the reliable and efficient operation. Therefore, numerous artificial intelligent methods such as machine learning and deep learning have been considered as solutions for accurate wind power forecasts. In addition to deterministic forecasting, the probabilistic forecasting becomes more important, because it indicates the level of uncertainty. In this paper, a hybrid forecasting model considering different Numerical Weather Prediction (NWP) models and the XGBoost training model is proposed for short-term wind power forecasting. The proposed forecasting algorithm includes data preprocessing, in which an autoencoder model is used to reduce the dimension of 20 NWP ensembles. The performance of the proposed method is investigated using historical wind power measurements and NWP results by the Taiwan Central Weather Bureau (CWB); the NWP includes spot wind speeds from WRFD, RWRF, and ensemble wind speeds from WEPS. Based on the forecasting results, the proposed model produces better performance and forecasting accuracy among other forecasting models, which reveals the importance of data preprocessing using autoencoders and the use of deep learning models in deterministic or probabilistic forecasts.

Subjects

WIND power; WIND forecasting; HYBRID power; DEEP learning; NUMERICAL weather forecasting; METEOROLOGICAL services; FORECASTING; LOAD forecasting (Electric power systems)

Publication

Applied Sciences (2076-3417), 2021, Vol 11, Issue 3, p1100

ISSN

2076-3417

Publication type

Academic Journal

DOI

10.3390/app11031100

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