IETE Journal of Research
Home | About us | Search | Current Issue | Past Issues | Guidelines | Subscribe | ContactLogin 
IETE Journal of Research
  Users Online: 8 Print this page  Email this page Small font size Default font size Increase font size
ARTICLE
Year : 2010  |  Volume : 56  |  Issue : 4  |  Page : 193-201

A Novel Semi-blind Channel Estimation Scheme for Rayleigh Flat Fading MIMO channels (joint LS estimation and ML detection)


1 Digital Communications Signal Processing (DCSP) Research Lab., Department of Electrical and Computer Engineering, Shahid Rajaee Teacher Training University (SRTTU), P.O. Box: 16788, Tehran, Iran
2 Telecommunication Infrastructure Company (TIC), Tehran, Iran

Correspondence Address:
Shahriar Shirvani Moghaddam
Digital Communications Signal Processing (DCSP) Research Lab., Department of Electrical and Computer Engineering, Shahid Rajaee Teacher Training University (SRTTU), P.O. Box: 16788, Tehran
Iran
Login to access the Email id

DOI: 10.4103/0377-2063.70629

Get Permissions

In this article, the training-based channel estimation (TBCE) and semi-blind channel estimation (SBCE) schemes in Rayleigh flat fading multiple-input multiple-output (MIMO) channels are investigated. First, least squares (LS), linear minimum mean square error (LMMSE), maximum likelihood (ML), and maximum a posteriori (MAP) channel estimators are presented and simulated. Owing to faster processing and lower bit error rate (BER), the LS estimator is the proper choice for both TBCE and SBCE-ML. It is illustrated that when the number of transmitter and/or receiver antennas increases, the performance of both TBCE and SBCE-ML schemes significantly improves. In addition, Alamouti coding has more effect on the performance of SBCE-ML rather than TBCE. Comparing LS-based TBCE and LS-based SBCE-ML, the simulation results introduce the most appropriate channel estimation method that uses an iterative algorithm. This new proposed method is based on LS estimator and ML detector. Simulation results of this investigation show that LS-based SBCE-ML method compared with LS-based TBCE method in different signal-to-noise ratios (SNRs) offers lower BER, 25% higher processing time, and 100 times lower training bits.


[FULL TEXT] [PDF]*
Print this article     Email this article
 Next article
 Previous article
 Table of Contents

 Similar in PUBMED
   Search Pubmed for
   Search in Google Scholar for
 Related articles
 Citation Manager
 Access Statistics
 Reader Comments
 Email Alert *
 Add to My List *
 * Requires registration (Free)
 

 Article Access Statistics
    Viewed2543    
    Printed139    
    Emailed0    
    PDF Downloaded242    
    Comments [Add]    
    Cited by others 2    

Recommend this journal