4.7 Article

A novel wind speed forecasting model based on moving window and multi-objective particle swarm optimization algorithm

Journal

APPLIED MATHEMATICAL MODELLING
Volume 76, Issue -, Pages 717-740

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.apm.2019.07.001

Keywords

Wind speed forecasting; Multi-objective particle swarm optimization; Echo state network; Moving window; Combined model

Funding

  1. National Natural Science Foundation of China [61672469, 61472370, 61822701]
  2. Program for Science & Technology Innovation Talents in University of Henan Province (HASTIT) [18HASTIT020]
  3. Program for Young Scholar in University of Henan Province [2016GGJS-001]

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Accurate wind speed forecasting is important in power grid security, power system management, operation and market economics. However, most research has focused only on improving either accuracy or stability, with few studies addressing the two issues, simultaneously. Therefore, we proposed a novel combined model based on multi-objective particle swarm optimization, which is applied to optimize the key parameters of the echo state network. Most combined wind speed forecasting methods just use the combination theory to combine individual methods, this paper uses echo state network to combine the intermediate wind speed forecasting results of three artificial neural networks. Moreover, a new dataset division mechanism based on the moving window is applied in this paper. Firstly, the length of the input data is changed from 5 to 15 for 1-step, 2-step and 3-step wind speed forecasting, after that, the optimal length of the input vector can be got. And then we apply this optimal length of the input vector to another dataset for further verifying the proposed method. In order to verify the forecasting effectiveness of the proposed forecasting model, the 80/min wind speed data of M2 tower of the National Wind Power Technology Center of the United States were taken as an example. The experimental results indicate that the proposed algorithm is superior to the other ten comparative models in prediction accuracy and stability, and it also performs better than the combined model that we have proposed before. (C) 2019 Elsevier Inc. All rights reserved.

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