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Prediction of wind speed with non-linear autoregressive (NAR) neural networks

机译:用非线性自回归(NAR)神经网络预测风速

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摘要

In this study, the wind speed prediction model is created that gives a minimum error for different hidden layer neuron numbers and delay step numbers. Using the one-minute time series, the prediction of the next wind speed is performed with the NAR neural network model. The predicted values of wind speed obtained are compared with predicted values of wind speed obtained with filter methods. For different window functions and lengths, wind speed prediction is made using filters with different weight coefficients. For the number of hidden layer neurons is 14 and the number of delay steps is 10, MAE, MSE and RMSE values are calculated as 0.0315, 0.0019, 0.0445, respectively, with NAR neural network. It is seen that the proposed method for the wind speed dataset has a higher prediction performance than thefilter methods.
机译:在这项研究中,创建了风速预测模型,该模型为不同的隐藏层神经元数和延迟步长数提供了最小误差。使用一分钟的时间序列,使用NAR神经网络模型执行下一风速的预测。将获得的风速的预测值与通过滤波方法获得的风速的预测值进行比较。对于不同的窗函数和长度,使用具有不同权重系数的滤波器进行风速预测。对于隐藏层神经元的数量为14,延迟步长的数量为10,使用NAR神经网络分别将MAE,MSE和RMSE值计算为0.0315、0.0019、0.0445。可以看出,所提出的风速数据集方法具有比过滤方法更高的预测性能。

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