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首页> 外文期刊>International Journal of Information Technology and Computer Science >A New Hybrid Grey Neural Network Based on Grey Verhulst Model and BP Neural Network for Time Series Forecasting
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A New Hybrid Grey Neural Network Based on Grey Verhulst Model and BP Neural Network for Time Series Forecasting

机译:基于灰色Verhulst模型和BP神经网络的混合灰色神经网络时间序列预测。

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摘要

The advantages and disadvantages of BP neural network and grey Verhulst model for time series prediction are analyzed respectively, this article proposes a new time series forecasting model for the time series growth in S-type or growth being saturated. From the data fitting's viewpoint, the new model named grey Verhulst neural network is established based on grey Verhulst model and BP neural network. Firstly, the Verhulst model is mapped to a BP neural network, the corresponding relationships between grey Verhulst model parameters and BP network weights is established. Then, the BP neural network is trained by means of BP algorithm, when the BP network convergences, the optimized weights can be extracted, and the optimized grey Verhulst neural network model can be obtained. The experiment results show that the new model is effective with the advantages of high precision, less samples required and simple calculation, which makes full use of the similarities and complementarities between grey system model and BP neural network to settle the disadvantage of applying grey model and neural network separately. It is concluded that grey Verhulst neural network is a feasible and effective modeling method for the time series increasing in the curve with S-type.
机译:分别分析了BP神经网络和灰色Verhulst模型进行时间序列预测的优缺点,为S型或增长饱和的时间序列增长提出了一种新的时间序列预测模型。从数据拟合的角度出发,在灰色Verhulst模型和BP神经网络的基础上建立了新的灰色Verhulst神经网络模型。首先,将Verhulst模型映射到BP神经网络,建立灰色Verhulst模型参数与BP网络权重的对应关系。然后,利用BP算法对BP神经网络进行训练,当BP网络收敛时,可以提取优化权重,得到优化的灰色Verhulst神经网络模型。实验结果表明,该模型具有精度高,所需样本少,计算简单的优点,充分利用了灰色系统模型与BP神经网络的相似性和互补性,解决了应用灰色模型和BP神经网络的缺点。神经网络分开。得出结论,灰色Verhulst神经网络是在S型曲线上增加时间序列的一种可行而有效的建模方法。

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