An ultra-short-term wind speed forecasting model based on time scale recognition and dynamic adaptive modeling

Elsevier
Artikkeli
vertaisarvioitu
Artikkeli
Osuva_Zhen_Qiu_Mei_Wang_Zhang_Yin_Li_Osorio_Shafie-khah_Catalao_2022.pdf - Hyväksytty kirjoittajan käsikirjoitus - 1.61 MB

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©2022 Elsevier. This manuscript version is made available under the Creative Commons Attribution–NonCommercial–NoDerivatives 4.0 International (CC BY–NC–ND 4.0) license, https://creativecommons.org/licenses/by-nc-nd/4.0/
The forecast of wind speed is prerequisite for wind power prediction, which is one of the most effective means of promoting wind power absorption. However, when modeling for wind speed sequences with different fluctuations, most existing researches ignore the influence of time scale of wind speed fluctuation period, let alone the low compatibility between training and testing samples that severely limit the training performance of forecasting model. To improve the accuracy of wind speed and wind power forecasting, an ultra-short-term wind speed forecasting model based on time scale recognition and dynamic adaptive modeling is proposed in this paper. First, a series of wind processes are divided from the historical wind speed sequence according to the natural variation characteristics of wind speed. Second, we divide all the wind processes into two patterns based on their time scale, and an SVC model with input features extracted from meteorological data is built to identify the time scale of the current wind process. Third, for a specifically identified wind process, the complex network algorithm is applied in data screening to select high compatible training samples to train the forecast model dynamically for current input. Simulation indicates that the proposed approach presents higher accuracy than benchmark models using the same forecasting algorithms but without considering the time scale and data screening.

Emojulkaisu

ISBN

ISSN

1879-3517
0142-0615

Aihealue

Kausijulkaisu

International Journal of Electrical Power & Energy Systems|135

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