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Automatic Digital Modulation Recognition Based on Novel Features and Support Vector Machine

机译:基于新特征和支持向量机的自动数字调制识别

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In this paper a novel algorithm for automatic modulation recognition (AMR) based on pattern recognition approach is proposed. The main focus here remains on feature extraction block and the novel features are introduced in order to identify digital modulation schemes. The modulation types include: BASK, BFSK, BPSK, 4-ASK, 4-FSK, QPSK, and 16-QAM and the channel model is considered as an AWGN channel. The features are extracted from the received signal that is considered in the time, frequency and wavelet domains. Also, to overcome the multiclass problem, a hierarchical structure is investigated based on binary support vector machine (SVM). The simulations demonstrate superior capabilities of the proposed features in accurately separating digitally modulated signals in an extremely noisy environment with very low SNR values. Accordingly, the minimum SNR for the perfect identification is proven to be -5 dB, and a final accuracy percentage of 98.15 has been obtained in -10 dB.
机译:提出了一种新的基于模式识别方法的自动调制识别算法。这里的主要重点仍然放在特征提取模块上,并介绍了新颖的特征以识别数字调制方案。调制类型包括:BASK,BFSK,BPSK,4-ASK,4-FSK,QPSK和16-QAM,并且信道模型被视为AWGN信道。从时域,频域和小波域中考虑的接收信号中提取特征。此外,为了克服多类问题,研究了一种基于二进制支持向量机(SVM)的分层结构。仿真表明,在噪声非常低,SNR值极低的环境中,所提出功能的精确分离数字调制信号的能力超强。因此,完美识别的最小SNR被证明为-5 dB,并且在-10 dB中获得了98.15的最终精度百分比。

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