RSS 1.0 Feed
RSS 2.0 Feed
Atom Feed
 

Differential Acquisition of m-Sequences using Recursive Soft Sequential Estimation

Yang, L. L. and Hanzo, L. (2005) Differential Acquisition of m-Sequences using Recursive Soft Sequential Estimation. IEEE Transactions on Wireless Communications, 4 (1). pp. 128-136.

Download

[img]
Preview
PDF
352Kb

Abstract

In this contribution a novel sequential estimation method is proposed for the acquisition of $m$-sequences. This sequential estimation method exploits the principle of iterative soft-in-soft-out (SISO) decoding for enhancing the acquisition performance, and that of differential pre-processing for the sake of achieving an enhanced acquisition performance, when communicating over various communication environments. Hence the advocated acquisition arrangement is referred to as the Differential Recursive Soft Sequential Estimation (DRSSE) acquisition scheme. The DRSSE acquisition scheme exhibits a low complexity, which is similar to that of an $m$-sequence generator, while achieving an acquisition time that is linearly dependent on the number of stages in the $m$-sequence generator. A low acquisition time is achieved with the advent of the property that the proposed DRSSE scheme is capable of determining the real-time reliabilities associated with the decision concerning a set of, say $S$, consecutive chips. This set of consecutive chips constitutes the sufficient initial condition for enabling the local $m$-sequence generator to produce a synchronized local despreading $m$-sequence replica. Owing to these attractive characteristics, the DRSSE acquisition scheme constitutes a promising initial synchronization scheme for acquisition of long $m$-sequences, when communicating over various propagation environments.

Creators:L-L. Yang, L. Hanzo
Item Type:Article
Keywords:Initial synchronization, differential detection, pseudonoise signals, $m$-sequence, acquisition, sequential estimation,SISO decoding, recursive decoding, spread-spectrum signals.
Research Group:Communications Research Group
Deposited On:29 Sep 2005 by Harvey, Denise
ID Code:11274
Last Modified:23 Jan 2010 15:46
Performance Indicator:EZ~02~02~11
Citations:ISI: 5, Google Scholar: 6

Tools

Metadata

Download Statistics

Last month

Last year

Members of ECS may view the download statistics dashboard for this record.

Corrections

Repository Staff Only: item control page

  Welcome from Deputy Head of School (Research) Research Prospectus Industrial Partnerships New Research Students Notes for Guidance New Research Students Notes for Guidance
The ECS EPrints Repository supports OAI 2.0 with a base URL of http://eprints.ecs.soton.ac.uk/cgi/oai2

EPrints is free software developed by the University of Southampton to facilitate Open Access to research.
EPrints