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An intelligent system using adaptive wavelet entropy for automatic analog modulation identification

机译:利用自适应小波熵的智能模拟调制自动识别系统

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In this paper, an intelligent analog modulation identification system is presented for interpretation of the analog modulated signals. This paper especially deals with combination of the feature extraction and classification for analog modulated signals. The analog modulated signals used in this study are six types (AM, DSB, USB, LSB, FM, and PM). Here, a discrete wavelet neural network-adaptive wavelet entropy (DWNN-ANE) model is used, which consists of two layers: discrete wavelet-adaptive wavelet entropy and multi-layer perceptron neural networks for intelligent analog modulation identification. The discrete wavelet layer is used for adaptive feature extraction in the time-frequency domain and is composed of DWT and adaptive wavelet entropy. The performance of the used system is evaluated by using total 1080 analog modulated signals. These test results show the effectiveness of the used intelligent system presented in this paper. The rate of correct classification is about 98.34% for the sample analog modulated signals.
机译:本文提出了一种智能的模拟调制识别系统,用于解释模拟调制信号。本文特别研究了模拟调制信号的特征提取和分类的组合。本研究中使用的模拟调制信号有六种类型(AM,DSB,USB,LSB,FM和PM)。这里,使用离散小波神经网络自适应小波熵(DWNN-ANE)模型,该模型由两层组成:离散小波自适应小波熵和用于智能模拟调制识别的多层感知器神经网络。离散小波层在时频域用于自适应特征提取,由小波变换和自适应小波熵组成。通过使用总共1080个模拟调制信号来评估所用系统的性能。这些测试结果表明了本文提出的智能系统的有效性。样本模拟调制信号的正确分类率约为98.34%。

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