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Computational Intelligence in Future Wireless and Mobile Communications by Employing Channel Prediction Technology

Authors :
Mohd Fadzli Mohd Salleh
Farid Ghani
Romisuhani Ahmad
Othman Sidek
Khawaja M. Yahya
Abid Yahya
Source :
Next Generation Data Technologies for Collective Computational Intelligence ISBN: 9783642203435, Next Generation Data Technologies for Collective Computational Intelligence
Publication Year :
2011
Publisher :
Springer Berlin Heidelberg, 2011.

Abstract

This work presents a new scheme for channel prediction in multicarrier frequency hopping spread spectrum (MCFH-SS) system. The technique adaptively estimates the channel conditions and eliminates the need for the system to transmit a request message prior to transmit the packet data. The new adaptive MCFH-SS system employs the Quasi-Cyclic low density parity check (QC-LDPC) codes instead of the regular conventional LDPC codes. In this work performance of the proposed MCFH-SS system with adaptive channel prediction scheme is compared with the fast frequency hopping spread spectrum (FFH-SS) system. The proposed system has full control of that spectrum; it plans for the system to keep off unacceptable adjacent channel interference. When an interferer suddenly changes its carrier, the set of appropriate channels has a large return and resultantly the adjacent channel interference between the systems is reduced. It has been shown from results that the signal power in FFH system exceeds the average by at least 6.54 dB while in the proposed MCFH-SS system signal power exceeds the average only 0.84 dB for 1% (correct use) of the time. The proposed MCFH-SS system is more robust to narrow band interference and multipath fading than the FFH-SS system, because such system requires more perfect autocorrelation function.

Details

ISBN :
978-3-642-20343-5
ISBNs :
9783642203435
Database :
OpenAIRE
Journal :
Next Generation Data Technologies for Collective Computational Intelligence ISBN: 9783642203435, Next Generation Data Technologies for Collective Computational Intelligence
Accession number :
edsair.doi...........0149448364af58d1f33c8461ef698c23
Full Text :
https://doi.org/10.1007/978-3-642-20344-2_9