Chaotic signal emulation using a recurrent time delay neural network

M. Davenport, S. P. Day
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引用次数: 3

Abstract

The authors describe a method for training a dispersive neural network to imitate a chaotic signal without using any knowledge of how the signal was generated. In a dispersive network, each connection has both an adaptable time delay and an adaptable weight. The network was first trained as a feedforward signal predictor and then connected recurrently for signal synthesis. The authors evaluate the performance of a network with twenty hidden nodes, using the Mackey-Glass (1977) chaotic time series as a training signal, and then compare it to a similar network without internal time delays. The fidelity of the synthesized signal is investigated for progressively longer training times, and for networks trained with and without momentum.<>
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混沌信号的递归时延神经网络仿真
作者描述了一种训练色散神经网络来模拟混沌信号的方法,而不需要知道信号是如何产生的。在分散网络中,每个连接都具有自适应时延和自适应权值。该网络首先作为前馈信号预测器进行训练,然后进行递归连接进行信号合成。作者使用Mackey-Glass(1977)混沌时间序列作为训练信号,评估了具有20个隐藏节点的网络的性能,然后将其与没有内部时间延迟的类似网络进行比较。研究了越来越长的训练时间下合成信号的保真度,以及带动量和不带动量训练的网络。
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