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Wind Prediction Performance of Complex Neural Network with ReLU Activation Function

机译:具有ReLU激活功能的复杂神经网络的风能预测性能

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The complex neural network expands on the complex plane more than the real neural network taking the real axis. So its figure transformation ability and learning speed are very good. However, the neural network needs to determine nonlinear transformation to be used in the hidden neurons, to construct an optimal network structure according to the data to be handled, and to analyze prediction ability and initial value dependency. In this paper, we propose new four kinds of Rectified Linear Unit (ReLU) function on complex plane. Wind speed and direction are simultaneously predicted using the complex neural network with the proposed ReLU function. As a result of the numerical experiments, the optimal number of degrees of freedom was determined, and the complex neural network predicts more accurately than the real neural network does.
机译:复杂的神经网络在复杂平面上的扩展要比包含真实轴的真实神经网络更大。因此其图形转换能力和学习速度都非常好。但是,神经网络需要确定要在隐藏神经元中使用的非线性变换,根据要处理的数据构造最佳的网络结构,并分析预测能力和初始值依赖性。在本文中,我们提出了复杂平面上的四种新的整流线性单元(ReLU)函数。使用具有建议的ReLU函数的复杂神经网络,可以同时预测风速和风向。数值实验的结果是,确定了最佳的自由度数,并且复杂的神经网络比实际的神经网络更准确地预测。

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