Shallow Neural Networks to Deep Neural Networks for Probabilistic Wind Forecasting

Parul Arora, B. K. Panigrahi, P. N. Suganthan
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引用次数: 2

Abstract

The uncertainty associated with wind forecasts is quantified through Neural networks. Comparison between Neural Networks from basic (Feed-Forward) to Deep Neural Networks (Auto-regressive Recurrent Neural Networks) is done. These neural networks are different in architecture as in MLP information flows unidirectionally, in RNN the output of the first time step is fed as input to the next time step whereas in Auto-regressive RNN, parameters are shared between multiple time-series. Auto-regressive RNN learns the trend and seasonality automatically with minimum feature extraction. These methods are used for probabilistic forecasting by addition of projection layer with distribution output. The accuracy and efficiency of these methods are tested on Australian wind power data with 5 min frequency. Prediction intervals with the confidence level of 80%, 85% and 90% are generated through quantiles. These methods prove to be better than other classical probabilistic forecasting methods.
浅神经网络到深度神经网络的概率风预报
通过神经网络对风力预报的不确定性进行量化。对基本神经网络(前馈神经网络)和深度神经网络(自回归递归神经网络)进行了比较。这些神经网络在结构上是不同的,因为在MLP中信息流是单向的,在RNN中,第一个时间步的输出作为下一个时间步的输入,而在自回归RNN中,参数在多个时间序列之间共享。自回归RNN以最小的特征提取来自动学习趋势和季节性。这些方法通过增加具有分布输出的投影层来进行概率预测。在澳大利亚5min频率的风电数据上验证了这些方法的准确性和效率。通过分位数生成置信水平分别为80%、85%和90%的预测区间。结果表明,该方法优于其他经典概率预测方法。
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