TY - JOUR
T1 - Probabilistic wind power forecasting with online model selection and warped gaussian process
AU - Kou, Peng
AU - Liang, Deliang
AU - Gao, Feng
AU - Gao, Lin
PY - 2014/8
Y1 - 2014/8
N2 - Based on the online model selection and the warped Gaussian process (WGP), this paper presents an ensemble model for the probabilistic wind power forecasting. This model provides the non-Gaussian predictive distributions, which quantify the non-Gaussian uncertainties associated with wind power. In order to follow the time-varying characteristics of wind generation, multiple time dependent base forecasting models and an online model selection strategy are established, thus adaptively selecting the most probable base model for each prediction. WGP is employed as the base model, which handles the non-Gaussian uncertainties in wind power series. Furthermore, a regime switch strategy is designed to modify the input feature set dynamically, thereby enhancing the adaptiveness of the model. In an online learning framework, the base models should also be time adaptive. To achieve this, a recursive algorithm is introduced, thus permitting the online updating of WGP base models. The proposed model has been tested on the actual data collected from both single and aggregated wind farms.
AB - Based on the online model selection and the warped Gaussian process (WGP), this paper presents an ensemble model for the probabilistic wind power forecasting. This model provides the non-Gaussian predictive distributions, which quantify the non-Gaussian uncertainties associated with wind power. In order to follow the time-varying characteristics of wind generation, multiple time dependent base forecasting models and an online model selection strategy are established, thus adaptively selecting the most probable base model for each prediction. WGP is employed as the base model, which handles the non-Gaussian uncertainties in wind power series. Furthermore, a regime switch strategy is designed to modify the input feature set dynamically, thereby enhancing the adaptiveness of the model. In an online learning framework, the base models should also be time adaptive. To achieve this, a recursive algorithm is introduced, thus permitting the online updating of WGP base models. The proposed model has been tested on the actual data collected from both single and aggregated wind farms.
KW - Model selection
KW - Online learning
KW - Probabilistic forecasting
KW - Wind power
UR - https://www.scopus.com/pages/publications/84901428043
U2 - 10.1016/j.enconman.2014.04.051
DO - 10.1016/j.enconman.2014.04.051
M3 - 文章
AN - SCOPUS:84901428043
SN - 0196-8904
VL - 84
SP - 649
EP - 663
JO - Energy Conversion and Management
JF - Energy Conversion and Management
ER -