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   Relevance vector machines for enhanced BER probability in DMT-based systems  
   
نویسنده tahat a.a. ,galatsanos n.p.
منبع journal of electrical and computer engineering - 2010 - شماره : 0
چکیده    A new channel estimation method for discrete multitone (dmt) communication system based on sparse bayesian learning relevance vector machine (rvm) method is presented. the bayesian frame work is used to obtain sparse solutions for regression tasks with linear models. by exploiting a probabilistic bayesian learning framework,sparse bayesian learning provides accurate models for estimation and consequently equalization. we consider frequency domain equalization (feq) using the proposed channel estimate at both the transmitter (preequalization) and receiver (postequalization) and compare the resulting bit error rate (ber) performance curves for both approaches and various channel estimation techniques. simulation results show that the proposed rvm-based method is superior to the traditional least squares technique. © 2010 a. a. tahat and n. p. galatsanos.
آدرس school of electrical engineering,princess sumaya university for technology, Jordan, electrical and computer engineering department,university of patras, Greece
 
     
   
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