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Aadaptive signal de-noising based on feedback networks and counterpropagation network

机译:基于反馈网络和抵制网络的Aadaptive信号去噪

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The main purpose of this paper is to realize adaptive signal denoising simulation of some kind of feedback neural network models. The bidirectional associative memory (BAM) neural network, the discrete Hopfield feedback network (DHN), and the counterpropagation network (CPN) are discussed under the conditions of outside and within the maximal memory capacity. The experimental simulations of the three kind of networks are realized to data de-noise, the experimental results are compared and analyzed, show that both BAM network and discrete Hopfield network within the maximal memory capacity have all good de-noise effect, fewer iterations, less training time, and operation stability. The CPN is sensitive to initial weight values, good de-noising effect, but more iterations. When noise is increased and outside the maximal memory capacity of BAM network or DHN, we find that the CPN is of better de-noise performance than discrete Hopfield networks and Kosko's BAM net under the condition of overstepping the maximal memory capacity. Full CPN is of better de-noise performance than one-way CPN, but the former takes a longer training time.
机译:本文的主要目的是实现某种反馈神经网络模型的自适应信号去噪模拟。双向关联存储器(BAM)神经网络,离散Hopfield反馈网络(DHN)和反向解网络(CPN)在外部和最大内存容量内讨论。三种网络的实验模拟实现数据噪音,实验结果进行了比较和分析,表明BAM网络和最大内存容量内的离散Hopfield网络都具有所有良好的噪音效果,更少的迭代效果,较少的训练时间和操作稳定性。 CPN对初始重量值敏感,良好的去噪效果,但更多的迭代。当噪声增加并超出BAM网络或DHN的最大内存容量时,我们发现CPN比离散Hopfield网络和Kosko的BAM网在超出最大内存容量的条件下具有更好的噪声性能。完整的CPN具有比单向CPN更好的噪音性能,但前者需要更长的培训时间。

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