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Short‐Term Wind Speed Forecasting Using Decomposition‐Based Neural Networks Combining Abnormal Detection Method

Author

Listed:
  • Xuejun Chen
  • Jing Zhao
  • Wenchao Hu
  • Yufeng Yang

Abstract

As one of the most promising renewable resources in electricity generation, wind energy is acknowledged for its significant environmental contributions and economic competitiveness. Because wind fluctuates with strong variation, it is quite difficult to describe the characteristics of wind or to estimate the power output that will be injected into the grid. In particular, short‐term wind speed forecasting, an essential support for the regulatory actions and short‐term load dispatching planning during the operation of wind farms, is currently regarded as one of the most difficult problems to be solved. This paper contributes to short‐term wind speed forecasting by developing two three‐stage hybrid approaches; both are combinations of the five‐three‐Hanning (53H) weighted average smoothing method, ensemble empirical mode decomposition (EEMD) algorithm, and nonlinear autoregressive (NAR) neural networks. The chosen datasets are ten‐minute wind speed observations, including twelve samples, and our simulation indicates that the proposed methods perform much better than the traditional ones when addressing short‐term wind speed forecasting problems.

Suggested Citation

  • Xuejun Chen & Jing Zhao & Wenchao Hu & Yufeng Yang, 2014. "Short‐Term Wind Speed Forecasting Using Decomposition‐Based Neural Networks Combining Abnormal Detection Method," Abstract and Applied Analysis, John Wiley & Sons, vol. 2014(1).
  • Handle: RePEc:wly:jnlaaa:v:2014:y:2014:i:1:n:984268
    DOI: 10.1155/2014/984268
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    References listed on IDEAS

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