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A Universal Prediction Model Based on Hybrid Neural Network

机译:基于混合神经网络的通用预测模型

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Single neural network is difficult in performing accurate predictions for complex model. A hybrid model, which involves a radial basis function network, a multi-layer perceptron network with back-propagation and a control module, is proposed and used for forecasting complex system. The control module serves as a linear mapping network which combines the outputs of two neural networks to gain the final output value. The prediction methods of the hybrid model are mainly discussed: Firstly taking advantage of the improved algorithm to train two networks respectively and obtain the output values; Secondly, the linear mapping network is optimized by self-adaptive genetic algorithm to gain higher prediction accuracy; Finally, this paper has carried out two experiments to compare the prediction performance of a single network and the proposed model. The experimental results show that the proposed hybrid neural network provides a superior performance in prediction accuracy than other methods and offers a common tool for complex prediction.
机译:单神经网络很难对复杂模型进行准确的预测。提出了一种包含径向基函数网络,带有反向传播的多层感知器网络和控制模块的混合模型,并将其用于复杂系统的预测。控制模块用作线性映射网络,该网络将两个神经网络的输出组合起来以获得最终输出值。主要讨论了混合模型的预测方法:首先利用改进算法分别训练两个网络并获得输出值。其次,采用自适应遗传算法对线性映射网络进行优化,以提高预测精度。最后,本文进行了两个实验,以比较单个网络的预测性能和所提出的模型。实验结果表明,所提出的混合神经网络在预测精度上比其他方法具有更高的性能,并且为复杂的预测提供了通用工具。

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