29 / 2016-08-21 00:34:29
Additive Non-Gaussian Noise Channel Estimation by Using Minimum Error Entropy Criterion
931,5613,10699,1152,11190
摘要录用
Ghosheh Abed Hodtani / Ferdowsi university of mashhad
Ahmad Reza Heravi / Ferdowsi university of mashhad
channel estimation is an important component of wireless communications. This paper deals with the comparison between Mean Square Error (MSE) and Minimum Error Entropy (MEE) methods in additive non-Gaussian noise channel estimation. This essay analyzes MEE and MSE algorithms in several channel models utilizing Neural Networks. The aim of this study is first to compare the performance of an extended MSE algorithm with MEE method. The trained neural networks can be applied as an equalizer in the receiver. Moreover, to do a complete comparison between methods, we compare them in both low and high SNR regimes. The numerical results illustrate that MEE algorithm is more capable than the MSE based algorithm for channel estimation. In fact, with additive non-Gaussian noise the performance of MSE method is approximately as same as the MEE based approach results for high SNR regime, but the MEE outperforms MSE based method obviously for low SNR regime with non-Gaussian noise.
重要日期
  • 会议日期

    09月23日

    2016

    09月25日

    2016

  • 07月20日 2016

    初稿截稿日期

  • 08月21日 2016

    初稿录用通知日期

  • 09月07日 2016

    终稿截稿日期

  • 09月25日 2016

    注册截止日期

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