Ensemble learning for wind profile prediction with missing values

@article{He2011EnsembleLF,
  title={Ensemble learning for wind profile prediction with missing values},
  author={Haibo He and Yuan Cao and Yi Cao and Jinyu Wen},
  journal={Neural Computing and Applications},
  year={2011},
  volume={22},
  pages={287-294}
}
In this paper, we aim to develop computational intelligence approaches for wind profile prediction. Specifically, we focus on two aspects in this work. First, we investigate the missing value recovery for wind data. Due to the complexity of data collection in such processes, wind data normally include missing values. Therefore, how to effectively recover such missing values for learning and prediction is an important aspect for wind profile prediction. Second, we develop an ensemble learning… CONTINUE READING

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