Abstract Automatic modulation classification of digital modulation signals with stacked autoencoders
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Automatic modulation classification of digital modulation signals with stacked autoencoders

机译:堆叠自动调制信号的自动调制分类

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AbstractModulation identification of the transmitted signals remain a challenging area in modern intelligent communication systems like cognitive radios. The computation of the distinct features from input data set and applying machine learning algorithms has been a well-known method in the classification of such signals. However, recently, deep neural networks, a branch of machine learning, have gained significant attention in the pattern recognition of complex data due to its superior performance. Here, we test the application of deep neural networks to the automatic modulation classification in AWGN and flat-fading channel. Three training inputs were used; mainly 1) In-phase and quadrature (I-Q) constellation points, 2) the centroids of constellation points employing the fuzzy C-means algorithm to I-Q diagrams, and 3) the high-order cumulants of received samples. The unsupervised learning from these data sets was done using the sparse autoencoders and a supervised softmax classifier was employed for the classification. The designing parameters for training single and 2-layer sparse autoencoders are proposed and their performance compared with each other. The results show that a very good classification rate is achieved at a low SNR of 0 dB. This shows the potential of the deep learning model for the application of modulation classification.Highlights?Method for AMC using powerful capability of deep networks.?Comparison between a shallow and deep network in the application of AMC.?2-layered deep neural network model outperforms other networks.?The accuracy of this model converges to results obtained from conventional methods under flat-fading channels.]]>
机译:<![cdata [ Abstract 传输信号的调制识别仍然是现代智能通信系统中的具有挑战性的区域,如认知收音机。从输入数据集和应用机器学习算法的不同特征的计算已经是这种信号的分类中的众所周知的方法。然而,最近,由于其卓越的性能,深度神经网络,机器学习的分支,在复杂数据的模式识别中获得了重大关注。在这里,我们测试深神经网络在AWGN和扁平衰落通道中的自动调制分类中的应用。使用了三种训练输入;主要是1)同相和正交(I-Q)星座点,2)星座点的质心,采用模糊C算法到I-Q图,以及3)所接受样本的高阶累积量。从这些数据集中的无监督学习是使用稀疏的自动码器完成的,并且用于分类。提出了用于训练单层和2层稀疏自动泊车的设计参数及其性能相互比较。结果表明,在0 dB的低SNR处实现了非常好的分类率。这表明了用于应用调制分类的深度学习模型的潜力。 突出显示 使用强大的深网络强大能力的AMC方法。 AMC应用中的浅层和深网络之间的比较。 2层深神经网络模型优于其他网络。 该模型的准确性会聚到从渐进式通道下的传统方法获得的结果。 ]]>

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