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Estimation Aspects of Signal Spectral Components Using Neural Networks

机译:使用神经网络估计信号光谱分量的方面

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Many neural network models have been mathematically demonstrated to be universal approximators. For accurate function approximation, the number of samples in the training data set must be high enough to cover the entire input data space. But this number increases exponentially with the dimension of the input space, increasing the space- and time-complexity of the learning process. Hence, the neural function approximation is a complex task for problems with high dimension of the input space, like those based on signal spectral analysis. In this paper, some aspects of neural estimation of signal spectral components are discussed. The goal is to find a feed-forward neural network (FFNN) model for estimating spectral components of a signal, with computational complexity comparable with Fast Fourier Transform (FFT) algorithm, but easier to implement in hardware. Different FFNN architectures, with different data sets and training conditions, are analyzed. A butterfly-like FFNN (BFFNN) was proposed, which has much less weight connections and better performance than FFNN.
机译:许多神经网络模型已经数学上被证明是普遍的近似器。为了精确函数近似,训练数据集中的样本数必须足够高,以覆盖整个输入数据空间。但此数字随着输入空间的尺寸,增加了学习过程的空间和时间复杂性的尺寸呈指数级增长。因此,神经函数近似是对输入空间的高维度的问题的复杂任务,例如基于信号光谱分析的问题。本文讨论了信号光谱分量的神经估计的一些方面。目标是找到一种用于估计信号的光谱分量的前馈神经网络(FFNN)模型,具有与快速傅里叶变换(FFT)算法相当的计算复杂性,但在硬件中更容易实现。分析了不同的FFNN架构,具有不同的数据集和培训条件。提出了一种蝴蝶状FFNN(BFFNN),其重量较小,性能比FFNN更低。

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