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TRSWA-BP Neural Network for Dynamic Wind Power Forecasting Based on Entropy Evaluation

机译:基于熵评估的TRSWA-BP神经网络动态风力预测

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摘要

The performance evaluation of wind power forecasting under commercially operating circumstances is critical to a wide range of decision-making situations, yet difficult because of its stochastic nature. This paper firstly introduces a novel TRSWA-BP neural network, of which learning process is based on an efficiency tabu, real-coded, small-world optimization algorithm (TRSWA). In order to deal with the strong volatility and stochastic behavior of the wind power sequence, three forecasting models of the TRSWA-BP are presented, which are combined with EMD (empirical mode decomposition), PSR (phase space reconstruction), and EMD-based PSR. The error sequences of the above methods are then proved to have non-Gaussian properties, and a novel criterion of normalized Renyi’s quadratic entropy (NRQE) is proposed, which can evaluate their dynamic predicted accuracy. Finally, illustrative predictions of the next 1, 4, 6, and 24 h time-scales are examined by historical wind power data, under different evaluations. From the results, we can observe that not only do the proposed models effectively revise the error due to the fluctuation and multi-fractal property of wind power, but also that the NRQE can reserve its feasible assessment upon the stochastic predicted error.
机译:在商业上运行情况下风力预测的性能评估对于广泛的决策情况至关重要,而且由于其随机性质而困难。本文首先介绍了一种新颖的TRSWA-BP神经网络,其中学习过程是基于效率的禁忌,实际编码,小世界优化算法(TRSWA)。为了应对风电序列的强烈波动和随机行为,提出了三种预测模型,其与EMD(实证分解),PSR(相空间重建)和基于EMD的基于EMD PSR。然后证明了上述方法的误差序列具有非高斯性质,提出了归一化仁怡的二次熵(NRQE)的新标准,可以评估其动态预测的准确性。最后,通过在不同的评估下,通过历史风电数据检查下一个1,4,6和24小时时间尺度的说明性预测。从结果来看,我们可以观察到,由于风电的波动和多分形特性,不仅提出的模型不仅有效地修改了误差,还可以在随机预测误差时储备其可行的评估。

著录项

  • 期刊名称 Entropy
  • 作者单位
  • 年(卷),期 2018(20),4
  • 年度 2018
  • 页码 283
  • 总页数 14
  • 原文格式 PDF
  • 正文语种
  • 中图分类
  • 关键词

    机译:风力预测;TRSWA-BP;经验模式分解(EMD);相空间重构(PSR);归一化仁义的二次熵(NRQE);

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