DocumentCode :
1776664
Title :
A robust probabilistic wind power forecasting method considering wind scenarios
Author :
Jie Yan ; Yongqian Liu ; Shuang Han ; Chenghong Gu ; Furong Li
Author_Institution :
State Key Lab. of Alternate Electr. Power Syst. with Renewable Energy Sources, North China Electr. Power Univ., Beijing, China
fYear :
2014
fDate :
24-25 Sept. 2014
Firstpage :
1
Lastpage :
6
Abstract :
Wind power forecasting is one of the cheapest and direct methods to alleviate negative impacts on power system reliability and stability from intermittent wind generation. Compared with deterministic forecasts, probabilistic forecasts can provide additional information concerning wind uncertainty for economic operation and efficient trading. However, it is far from ideal with respect to the accuracy, reliability and sharpness, since the wind shows strong variable property. In this paper, a robust probabilistic wind power forecasting method is proposed as (RPWPF) that can reflect the variability of wind generation under different wind conditions. The wind scenarios are identified concerning wind generation process and dominance of wind direction in a wind farm. And then, forecasting models for each scenario can be established and executed separately so that model parameters, such as kernel function and kernel width will be adjusted with the changing external wind conditions, wind speed and direction, in a real time operation. In this way, the forecasting model will provide more fined information on power outputs and their variabilities under different wind conditions. This proposed model is validated through comparison between the simulated power outputs and their variabilities under differing wind speeds and directions with the actual outputs on a practical 183 MW wind farm in northwest China. The results show that RPWPF achieves lower root mean square error comparing with artificial neural network model, while higher skill score for forecasting interval comparing with quantile regression. Finally, a sensitivity analysis is carried out to investigate the contribution of individual input (NWP variables) to help optimize the dimension of forecasting model.
Keywords :
load forecasting; power generation economics; power generation reliability; power system stability; probability; wind power plants; RPWPF; artificial neural network model; deterministic forecasts; economic operation; efficient trading; external wind conditions; intermittent wind generation process; kernel function; kernel width; model parameters; northwest China; power 183 MW; power system reliability; power system stability; quantile regression; robust probabilistic wind power forecasting method; root mean square error; sensitivity analysis; wind farm; wind scenarios; wind speed; power curve; power generation process; probabilistic forecast; robust; wind power;
fLanguage :
English
Publisher :
iet
Conference_Titel :
Renewable Power Generation Conference (RPG 2014), 3rd
Conference_Location :
Naples
Type :
conf
DOI :
10.1049/cp.2014.0828
Filename :
6993221
Link To Document :
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