期刊
APPLIED ENERGY
卷 236, 期 -, 页码 262-272出版社
ELSEVIER SCI LTD
DOI: 10.1016/j.apenergy.2018.11.063
关键词
Wind signal; Forecasting; Long short term memory network; Multi task learning, deep neural networks
资金
- International and Hong Kong, Macao and Taiwan cooperation innovation platform
- major international cooperation projects of Guangdong General Colleges and Universities, Guangdong Electronic Commerce Large Data Engineering Technology Research Center [2015KGJHZ027]
This paper proposed a training-based method for wind turbine signal forecasting. This proposed model employs a convolutional network, a long short-term memory network as well as a multi-task learning ideas within a signal frame. This method utilized the convolutional network for exploitation of spatial properties from wind field. As well, the mentioned long short-term memory is used for training dynamic features of the wind field. The ideas stated together have been utilized for modeling the impacts of spatio-dynamic construction of wind field on wind turbine responses of interest. So, we implemented this multi-task training method for forecasting the generated WT energy and demand at the same time through a single forecast method, which is the deep neural-network. Performance of our suggested model is confirmed by a real wind field information that is produced by Large Eddy Simulation. This data also include wind turbine reaction information that is simulated using aero-elastic wind turbine construction analyzing software. The obtained results depict that the suggested method can forecast two outputs with a five-percent error by a so short term prediction, which is shorter than 1 m.
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