A Spatiotemporal Coupling Calculation-Based Short-Term Wind Farm Cluster Power Prediction Method

Accurate short-term wind power prediction is of great significance to the real-time dispatching of power systems and the development of wind power generation plans. However, existing methods for wind power prediction have the following problems: 1) some studies aim at predicting wind power for a sin...

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Main Authors: Haochen Li, Liqun Liu, Qiusheng He
Format: Article
Language:English
Published: IEEE 2023-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/10325487/
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author Haochen Li
Liqun Liu
Qiusheng He
author_facet Haochen Li
Liqun Liu
Qiusheng He
author_sort Haochen Li
collection DOAJ
description Accurate short-term wind power prediction is of great significance to the real-time dispatching of power systems and the development of wind power generation plans. However, existing methods for wind power prediction have the following problems: 1) some studies aim at predicting wind power for a single wind farm, ignoring the correlations of the adjacent wind farms; 2) many studies tend to convert wind speed forecast results to wind power, increasing the conversion error; 3) almost all studies place emphasis on the capture of spatiotemporal features, neglecting the influence of spatiotemporal coupling. Therefore, to solve the above questions, this work proposes an adaptive graph neural network based on spatiotemporal attention calculation for short-term wind farm cluster power prediction, using only wind power data. Firstly, a dynamic undirected graph is established to sufficiently learn prior knowledge of spatial relationships. Next, the spatiotemporal coupling relationship and global temporal correlation between data can be computed by performing spatiotemporal cross-attention and temporal self-attention, respectively. Finally, a novel hybrid loss function is proposed to optimize the prediction model accurately. In a case study, compared with other benchmark methods, the proposed method shows excellent overall performance in predicting wind power.
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spelling doaj.art-b03c3d8983784a14a925a8996f2aa87b2024-02-08T00:00:36ZengIEEEIEEE Access2169-35362023-01-011113141813143410.1109/ACCESS.2023.333562910325487A Spatiotemporal Coupling Calculation-Based Short-Term Wind Farm Cluster Power Prediction MethodHaochen Li0Liqun Liu1https://orcid.org/0009-0007-9444-2545Qiusheng He2School of Electronic Information Engineering, Taiyuan University of Science and Technology, Taiyuan, ChinaSchool of Electronic Information Engineering, Taiyuan University of Science and Technology, Taiyuan, ChinaSchool of Electronic Information Engineering, Taiyuan University of Science and Technology, Taiyuan, ChinaAccurate short-term wind power prediction is of great significance to the real-time dispatching of power systems and the development of wind power generation plans. However, existing methods for wind power prediction have the following problems: 1) some studies aim at predicting wind power for a single wind farm, ignoring the correlations of the adjacent wind farms; 2) many studies tend to convert wind speed forecast results to wind power, increasing the conversion error; 3) almost all studies place emphasis on the capture of spatiotemporal features, neglecting the influence of spatiotemporal coupling. Therefore, to solve the above questions, this work proposes an adaptive graph neural network based on spatiotemporal attention calculation for short-term wind farm cluster power prediction, using only wind power data. Firstly, a dynamic undirected graph is established to sufficiently learn prior knowledge of spatial relationships. Next, the spatiotemporal coupling relationship and global temporal correlation between data can be computed by performing spatiotemporal cross-attention and temporal self-attention, respectively. Finally, a novel hybrid loss function is proposed to optimize the prediction model accurately. In a case study, compared with other benchmark methods, the proposed method shows excellent overall performance in predicting wind power.https://ieeexplore.ieee.org/document/10325487/Short-term wind power predictionspatiotemporal couplingadaptive graph neural networkattention calculation
spellingShingle Haochen Li
Liqun Liu
Qiusheng He
A Spatiotemporal Coupling Calculation-Based Short-Term Wind Farm Cluster Power Prediction Method
IEEE Access
Short-term wind power prediction
spatiotemporal coupling
adaptive graph neural network
attention calculation
title A Spatiotemporal Coupling Calculation-Based Short-Term Wind Farm Cluster Power Prediction Method
title_full A Spatiotemporal Coupling Calculation-Based Short-Term Wind Farm Cluster Power Prediction Method
title_fullStr A Spatiotemporal Coupling Calculation-Based Short-Term Wind Farm Cluster Power Prediction Method
title_full_unstemmed A Spatiotemporal Coupling Calculation-Based Short-Term Wind Farm Cluster Power Prediction Method
title_short A Spatiotemporal Coupling Calculation-Based Short-Term Wind Farm Cluster Power Prediction Method
title_sort spatiotemporal coupling calculation based short term wind farm cluster power prediction method
topic Short-term wind power prediction
spatiotemporal coupling
adaptive graph neural network
attention calculation
url https://ieeexplore.ieee.org/document/10325487/
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AT haochenli spatiotemporalcouplingcalculationbasedshorttermwindfarmclusterpowerpredictionmethod
AT liqunliu spatiotemporalcouplingcalculationbasedshorttermwindfarmclusterpowerpredictionmethod
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