2013 IEEE 11th International Conference on Electronic Measurement &Amp; Instruments 2013
DOI: 10.1109/icemi.2013.6743041
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Modulation recognition based on constellation diagram for M-QAM signals

Abstract: This paper proposed a modulation recognition algorithm for M-QAM signals by the constellation diagram which does not require the prior information. Firstly, this scheme estimates the modulation parameters. Secondly, it reconstructs the received signals' constellation and uses kmeans cluster algorithm to compute the number of the signal constellation points which are as a recognition feature used for classification. The experimental simulation results proves that this method is effective for M-QAM signals, and … Show more

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Cited by 20 publications
(10 citation statements)
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“…Each location has distinct distance and phase with respect to the origin point and is used by Mobasseri [83] to transfer the phase-amplitude distribution to 1D distribution. In [84,85], the authors adopted constellation features to identify M-QAM. However, the shortcomings of this method were its sensitivity to noise and high SNR requirement in identifying higher-order modulation.…”
Section: Constellation Shape Features For Mrmentioning
confidence: 99%
See 3 more Smart Citations
“…Each location has distinct distance and phase with respect to the origin point and is used by Mobasseri [83] to transfer the phase-amplitude distribution to 1D distribution. In [84,85], the authors adopted constellation features to identify M-QAM. However, the shortcomings of this method were its sensitivity to noise and high SNR requirement in identifying higher-order modulation.…”
Section: Constellation Shape Features For Mrmentioning
confidence: 99%
“…Several common approaches, such as decision tree (DT), artificial neural networks (ANNs), support vector machine (SVM), k-nearest neighbor, and combinations of artificial intelligence techniques, have been used for classification. ANN and SVM are supervised machine learning, whereas clustering classifier belongs to unsupervised machine learning [83][84][85]. Researchers have used optimization techniques to select the dominant or significant features from the extracted features for improving the recognition accuracy of classifiers.…”
Section: Overview Of the Type Of Classifiers Used For Mrmentioning
confidence: 99%
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“…To support this heterogeneity, OPM technology is expected to have modulation format identification function to identify different modulation formats. MFI techniques for optical network include identification based on artificial neural networks (ANN) [6], [7], K-means-based constellation diagram identification technique [8], stokes space-based methods [9], [10] and newly proposed nonlinear power transformation [11], etc. K-means-based constellation diagram identification need ideal constellation diagrams which is hard to acquire under practical circumstances.…”
Section: Introductionmentioning
confidence: 99%