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Using fuzzy clustering and TTSAS algorithm for modulation classification based on constellation diagram

机译:基于星座图的模糊聚类和TTSAS算法的调制分类

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The automatic recognition of the modulation format of a detected signal, the intermediate step between signal detection and demodulation, is a major task of an intelligent receiver, with various civilian and military applications. Obviously, with no knowledge of the transmitted data and many unknown parameters at the receiver, such as the signal power, carrier frequency and phase offsets, timing information, etc., blind identification of the modulation is a difficult task. This becomes even more challenging in real world.rnIn this paper I develop a novel algorithm using Two Threshold Sequential Algorithmic Scheme (TTSAS) algorithm and pattern recognition to identify the modulation types of the communication signals automatically. I have proposed and implemented a technique that casts modulation recognition into shape recognition. Constellation diagram is a traditional and powerful tool for design and evaluation of digital modulations. In this paper, modulation classification is performed using constellation of the received signal by fuzzy clustering and consequently hierarchical clustering algorithms are used for classification of Quadrature-Amplitude Modulation (QAM) and Phase Shift Keying (PSK) modulations and also modulated signal symbols constellation utilizing TTSAS clustering algorithm, and matching with standard templates, is used for classification of QAM modulation. TTSAS algorithm used here is implemented by the Hamming neural network. The simulation results show the capability of this method for modulation classification with high accuracy and appropriate convergence in the presence of noise.
机译:自动识别检测到的信号的调制格式,是信号检测和解调之间的中间步骤,是智能接收器的一项主要任务,具有各种民用和军事应用。显然,由于不了解传输的数据以及接收机处的许多未知参数,例如信号功率,载波频率和相位偏移,时序信息等,盲目地识别调制是一项艰巨的任务。在现实世界中,这甚至变得更具挑战性。在本文中,我开发了一种新颖的算法,该算法使用两个阈值顺序算法方案(TTSAS)算法和模式识别来自动识别通信信号的调制类型。我已经提出并实现了一种将调制识别转换为形状识别的技术。星座图是用于设计和评估数字调制的传统且功能强大的工具。在本文中,通过模糊聚类使用接收信号的星座来执行调制分类,因此,将层次聚类算法用于正交幅度调制(QAM)和相移键控(PSK)调制的分类,以及使用TTSAS的调制信号符号星座聚类算法,并与标准模板匹配,用于QAM调制的分类。此处使用的TTSAS算法由汉明神经网络实现。仿真结果表明,该方法具有很高的精度,并且在存在噪声的情况下具有适当的收敛能力。

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