Background
Type: Article

Joint blind equalization and detection in chaotic communication systems using simulation-based methods

Journal: AEU - International Journal of Electronics and Communications (16180399)Year: 1 October 2015Volume: 69Issue: Pages: 1445 - 1452
Shaahin Varnosfaderani I.Sabahi M.aAtaei M.a
DOI:10.1016/j.aeue.2015.06.013Language: English

Abstract

Abstract In this paper an importance sampling (IS)-based technique is proposed to achieve the blind equalizer and detector for chaotic communication systems. Chaotic signals are generated using nonlinear dynamical systems. These signals have wide applications in communication as a result of their appropriate properties such as pseudo-randomness, large bandwidth, and unpredictability for long time. Based on the different chaotic signal properties, different communication methods such as chaotic modulation, masking, and spread spectrum have been proposed before. In this paper, chaos masking is adopted for transmitting modulated message symbols over an unknown channel, in which the joint demodulation and equalization is a nonlinear problem. Several methods such as extended Kalman filter (EKF), particle filter (PF), minimum nonlinear prediction error (MNPE), have been previously presented for this problem. Here, a new approach, based on Monte Carlo sampling, is proposed to joint channel equalization and demodulation. At the receiver end, importance sampling is used to detect binary symbols according to maximum likelihood (ML) criterion. Simulation results show that the proposed method has better performance, compared to existing methods, especially at low SNR. © 2015 Elsevier GmbH.


Author Keywords

Blind equalizationChaos maskingChaotic communicationDetectionImportance samplingMaximum likelihood receiver

Other Keywords

Chaotic systemsDemodulationError detectionExtended Kalman filtersImportance samplingMaximum likelihoodMonte Carlo methodsNonlinear dynamical systemsOptical variables measurementSignal to noise ratioSpread spectrum communicationApplications in communicationsChaos maskingChaotic communication systemsChaotic communicationsMaximum likelihood criterionMaximum-likelihood receiversNon-linear predictionsSimulation-based methodBlind equalization