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Fletcher-Reeves learning approach for high order MQAM signal modulation recognition

机译:用于高阶MQAM信号调制识别的Fletcher-Reeves学习方法

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A new method of Modulation Recognition of communication signals is proposed based on Clustering Validity Indices. These indices provide a good basis for key feature extraction. To distinguish different modulation schemes, a Fuzzy C-mean (FCM) clustering is used to get the membership matrix of different clusters. Then, a clustering validity measure is applied to extract features. To enhance clustering results at low SNR, a neural network with a conjugate gradient learning algorithm is utilized. Fletcher-Reeves learning approach enhances the recognition rate and widely improves the speed and rate of convergence. Simulation results show the validity of proposed approach compared with other approaches using only clustering or using back propagation neural networks. Misclassification rate is less for low order MQAM signals. This algorithm is applicable in high order MQAM signals. In Non-cooperative Communications, the modulated signal parameters are unknown. Some Modulation Recognition algorithms rely on estimating these parameters first, then applying recognition algorithms. Proposed algorithm doesn't need any prior information to achieve modulation recognition.
机译:提出了一种基于聚类有效性指标的通信信号调制识别新方法。这些索引为关键特征提取提供了良好的基础。为了区分不同的调制方案,使用模糊C均值(FCM)聚类来获得不同聚类的隶属度矩阵。然后,将聚类有效性度量应用于提取特征。为了增强低信噪比下的聚类结果,利用了具有共轭梯度学习算法的神经网络。 Fletcher-Reeves学习方法可提高识别率,并广泛提高收敛速度和收敛速度。仿真结果表明,与仅使用聚类或使用反向传播神经网络的其他方法相比,该方法的有效性。对于低阶MQAM信号,错误分类率较小。该算法适用于高阶MQAM信号。在非合作通信中,调制信号参数未知。一些调制识别算法首先依赖于估计这些参数,然后再应用识别算法。提出的算法不需要任何先验信息即可实现调制识别。

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