BER and NCMSE based Estimation algorithms for Underwater Noisy Channels

Channel estimation and equalization of sparse multipath channels is a real matter of concern for researchers in the recent past. Such type of channel impulse response is depicted by a very few significant non-zero taps that are widely separated in time. A comprehensive comparison of few algorithms i...

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Bibliographic Details
Published in:EAI Endorsed Transactions on Internet of Things
Main Authors: Fahad Khalil Paracha, Sheeraz Ahmed, M. Arshad Jaleel, Hamza Shahid, Umais Tayyab
Format: Article
Language:English
Published: European Alliance for Innovation (EAI) 2017-03-01
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Online Access:https://eudl.eu/pdf/10.4108/eai.26-3-2018.154380
Description
Summary:Channel estimation and equalization of sparse multipath channels is a real matter of concern for researchers in the recent past. Such type of channel impulse response is depicted by a very few significant non-zero taps that are widely separated in time. A comprehensive comparison of few algorithms in this regard has been provided. The algorithms simulated are LS, LMS and MP while simulation results along with observations are also presented in this paper. The metrics used for performance evaluation are Bit error rate (BER) and Normalized channel mean square error (NCMSE). On the basis of obtained simulation results, it is observed that MP algorithm requires shorter training sequence for estimation of channel response at the receiver as compared with LS. Furthermore, it is observed that MP has best performance while LS and LMS stand after respectively.
ISSN:2414-1399