Blind Channel Identi cation for Direct - SequenceSpread - Spectrum
نویسندگان
چکیده
Channel identiication for a binary phase-shift keyed (BPSK) direct-sequence spread-spectrum (DS/SS) system operating over a fading channel with sampling at the chip rate is considered in this work. The system is mapped to a discrete oversampled system, thereby allowing channel identiication via second order statistics under a few nonrestrictive conditions. Using the method of subchannel response matching (SRM), the ooine solution to this channel identiication problem involves the determination of the eigenvector corresponding to the minimum eigenvalue of a matrix that depends on the correlation statistics of the samples of the received signal. A low complexity stochas-tic gradient method for nding this eigenvalue adaptively is derived and a convergence analysis under a few weak assumptions presented. For comparison, a method that utilizes trellis searching for joint data and channel identi-cation when the system is not oversampled is extended in an obvious way to oversampled systems and a diierent adaptive algorithm developed than has been used in the past. Numerical results in the form of channel estimation error are obtained for the case when the spreading code is unknown but periodic with period equal to the symbol period.
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