基于聚类数据(MNCD)的多神经网络获取瞬时频率(if)

S.I. Shah, I. Shafi, J. Ahmad, F. M. Kashif
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引用次数: 3

摘要

在本文中,我们介绍了训练MNCD在获得时间局域频率(也称为IF)方面的优势,时间局域频率是描述时变信号变化的频谱结构的一个有用的概念,在时频分布(TFD)理论中经常出现。人们已经发现,训练并不是每次都能产生同样的结果;这是因为权重被初始化为随机值,高验证误差可能会提前结束训练。此外,一旦使用选定的输入对网络进行了训练,其性能就会比不接受选定输入数据进行训练的网络有显著提高。可以通过计算熵、均方误差(MSE)和收敛时间来比较MNCD的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Neural Networks over Clustered Data (MNCD) to Obtain Instantaneous Frequencies (IFs)
In this paper we present advantage of training MNCD for obtaining time localized frequencies (also called IF), which is one useful concept for describing the changing spectral structure of a time-varying signal, arising so often in time frequency distribution (TFD) theory. It has been found that training does not give the same results every time; this is because the weights are initialized to random values and high validation error may end up training early. Moreover once a network is trained with selected input, its performance improves significantly as opposed to the one that does not receive selected input data for training. The performance of MNCD can be compared by computing the entropy, mean square error (MSE) and time consumed for convergence.
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