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首页> 外文期刊>International energy journal >Prediction of Wind Power Generation Through Combining Particle Swarm Optimization and Elman Neural Network (El-PSO)
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Prediction of Wind Power Generation Through Combining Particle Swarm Optimization and Elman Neural Network (El-PSO)

机译:结合粒子群算法和Elman神经网络(El-PSO)预测风力发电量

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摘要

In recent years, rapid advances in wind energy production in many countries have made the prediction of wind power very important. In addition, wind power is a complicated signal for modeling and prediction. According to previous studies in this field, wind power prediction requires an efficient method. In the current survey, a method which is a combination of two intelligent methods of Elman neural network and Particle Swarm Algorithm is proposed to predict wind power. The efficiency of the proposed prediction method is shown for predicting of wind power output of wind farms. Results of El-PSO suggested method and El-GA method were compared and evaluated by analysis of variance method (ANOVA). All the results indicate efficient performance of the proposed method (El-PSO).
机译:近年来,在许多国家,风能生产的迅速发展使得对风能的预测非常重要。此外,风能是用于建模和预测的复杂信号。根据该领域的先前研究,风能预测需要一种有效的方法。在目前的调查中,提出了一种结合Elman神经网络和粒子群算法的两种智能方法来预测风能的方法。显示了所提出的预测方法对风电场风能输出的预测效率。通过方差分析(ANOVA)比较和评估了El-PSO建议方法和El-GA方法的结果。所有结果表明所提出方法(El-PSO)的有效性能。

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