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      Optimal joint modulation classification and symbol decoding

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      Author
      Kazıklı, Ertan
      Dulek, Berkan
      Gezici, Sinan
      Date
      2019-05
      Source Title
      IEEE Transactions on Wireless Communications
      Print ISSN
      1536-1276
      Electronic ISSN
      1558-2248
      Publisher
      IEEE
      Volume
      18
      Issue
      5
      Pages
      2623 - 2638
      Language
      English
      Type
      Article
      Item Usage Stats
      59
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      51
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      Abstract
      In this paper, modulation classification and symbol decoding problems are jointly considered and optimal strategies are proposed under various settings. In the considered framework, there exist a number of candidate modulation formats and the aim is to decode a sequence of received signals with an unknown modulation scheme. To that aim, two different formulations are proposed. In the first formulation, the prior probabilities of the modulation schemes are assumed to be known and a formulation is proposed under the Bayesian framework. This formulation takes a constrained approach in which the objective function is related to symbol decoding performance whereas the constraint is related to modulation classification performance. The second formulation, on the other hand, addresses the case in which the prior probabilities of the modulation schemes are unknown, and provides a method under the minimax framework. In this case, a constrained approach is employed as well; however, the introduced performance metrics differ from those in the first formulation due to the absence of the prior probabilities of the modulation schemes. Finally, the performance of the proposed methods is illustrated through simulations. It is demonstrated that the proposed techniques improve the introduced symbol detection performance metrics via relaxing the constraint(s) on the modulation classification performance compared with the conventional techniques in a variety of system configurations.
      Keywords
      Modulation classification
      Demodulation
      Bayes
      Minimax
      Permalink
      http://hdl.handle.net/11693/53086
      Published Version (Please cite this version)
      https://doi.org/ 10.1109/TWC.2019.2906185
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      • Department of Electrical and Electronics Engineering 3524
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