PlumX Metrics
Embed PlumX Metrics

A wind speed forecasting framework for multiple turbines based on adaptive gate mechanism enhanced multi-graph attention networks

Applied Energy, ISSN: 0306-2619, Vol: 372, Page: 123777
2024
  • 3
    Citations
  • 0
    Usage
  • 7
    Captures
  • 1
    Mentions
  • 0
    Social Media
Metric Options:   Counts1 Year3 Year

Metrics Details

  • Citations
    3
  • Captures
    7
  • Mentions
    1
    • News Mentions
      1
      • News
        1

Most Recent News

Investigators at Nanjing University of Posts and Telecommunications Discuss Findings in Networks (A Wind Speed Forecasting Framework for Multiple Turbines Based On Adaptive Gate Mechanism Enhanced Multi-graph Attention Networks)

2024 OCT 17 (NewsRx) -- By a News Reporter-Staff News Editor at Network Daily News -- Data detailed on Networks have been presented. According to

Article Description

Accurately forecasting wind speed is crucial for efficiently utilizing wind energy and scheduling power grids. Recently, Graph Neural Network (GNN) models have been widely utilized to forecast wind speed, which explicitly utilizes the correlation between turbine sites in a wind farm. However, it is challenging to appropriately construct graphs to characterize multiple latent but unknown interdependencies among turbines. This paper proposes a novel multi-site wind speed forecasting framework AG-MGAT, based on an adaptive gate mechanism enhanced multi-graph attention networks. In detail, the contributions of our work are threefold. Firstly, multiple graphs are explicitly constructed, which respectively measure the wind behavioral similarity and the directional causality between turbine sites. Secondly, to calibrate the potential misalignment of spatial-temporal GNNs using these task-agnostic graphs, an adaptive gate mechanism enhanced Graph Attention Network (GAT), AG-GAT, is innovatively designed, which uses a learnable adjacency matrix as gate to adaptively weight the sites' embeddings from the current GAT layer and these directly from the previous AG-GAT layer. At each timestep, the proposed AG-GATs working on the constructed graphs are used to extract the turbine sites' representations that embed the multiple correlations among sites, which are then sent to recurrent neural network for further processing the temporal interdependency. Finally, thorough experiments on real wind speed dataset are conducted and the experimental results show the superiority of our schemes over other state-of-the-art GNN-based forecasting schemes.

Provide Feedback

Have ideas for a new metric? Would you like to see something else here?Let us know