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首页> 外文期刊>IEEE Transactions on Neural Networks >Gradient radial basis function networks for nonlinear and nonstationary time series prediction
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Gradient radial basis function networks for nonlinear and nonstationary time series prediction

机译:用于非线性和非平稳时间序列预测的梯度径向基函数网络

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We present a method of modifying the structure of radial basis function (RBF) network to work with nonstationary series that exhibit homogeneous nonstationary behavior. In the original RBF network, the hidden node's function is to sense the trajectory of the time series and to respond when there is a strong correlation between the input pattern and the hidden node's center. This type of response, however, is highly sensitive to changes in the level and trend of the time series. To counter these effects, the hidden node's function is modified to one which detects and reacts to the gradient of the series. We call this new network the gradient RBF (GRBF) model. Single and multistep predictive performance for the Mackey-Glass chaotic time series were evaluated using the classical RBF and GRBF models. The simulation results for the series without and with a tine-varying mean confirm the superior performance of the GRBF predictor over the RBF predictor.
机译:我们提出了一种修改径向基函数(RBF)网络的结构以与表现出同质非平稳行为的非平稳序列一起工作的方法。在原始的RBF网络中,隐藏节点的功能是感知时间序列的轨迹,并在输入模式与隐藏节点的中心之间存在很强的相关性时做出响应。但是,这种类型的响应对时间序列的水平和趋势的变化非常敏感。为了应对这些影响,将隐藏节点的功能修改为一种功能,该功能可以检测序列的梯度并对梯度做出反应。我们将此新网络称为梯度RBF(GRBF)模型。使用经典的RBF和GRBF模型评估了Mackey-Glass混沌时间序列的单步和多步预测性能。序列均值和均值均无变化的系列的仿真结果证实了GRBF预测器优于RBF预测器的性能。

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