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Recurrent Sigmoid-Wavelet Neurons for Forecasting of Dynamic Systems

机译:递归S形小波神经元的动态系统预测

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In this paper, recurrent neuron models used in feed-forward network are proposed. Each neuron in this model is composed of the Sigmoidal Activation Function (SAF) and Wavelet Activation Function (WAF). The output of the proposed neuron is the product of output from SAF and WAF. In recurrent neuron models delayed output of the sigmoidal and the wavelet activation function is feedback to each other. Performance of the recurrent models is evaluated on two different kind of benchmark problem of dynamical systems and compared with earlier proposed models.
机译:本文提出了用于前馈网络的递归神经元模型。该模型中的每个神经元都由S型激活函数(SAF)和小波激活函数(WAF)组成。所提议的神经元的输出是SAF和WAF的输出的乘积。在递归神经元模型中,乙状结肠和小波激活函数的延迟输出相互反馈。在两种不同类型的动力系统基准问题上评估了递归模型的性能,并与较早提出的模型进行了比较。

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