English

Complementary Set Matrices Satisfying a Column Correlation Constraint

Information Theory 2007-07-13 v1 math.IT

Abstract

Motivated by the problem of reducing the peak to average power ratio (PAPR) of transmitted signals, we consider a design of complementary set matrices whose column sequences satisfy a correlation constraint. The design algorithm recursively builds a collection of 2t+12^{t+1} mutually orthogonal (MO) complementary set matrices starting from a companion pair of sequences. We relate correlation properties of column sequences to that of the companion pair and illustrate how to select an appropriate companion pair to ensure that a given column correlation constraint is satisfied. For t=0t=0, companion pair properties directly determine matrix column correlation properties. For t1t\geq 1, reducing correlation merits of the companion pair may lead to improved column correlation properties. However, further decrease of the maximum out-off-phase aperiodic autocorrelation of column sequences is not possible once the companion pair correlation merit is less than a threshold determined by tt. We also reveal a design of the companion pair which leads to complementary set matrices with Golay column sequences. Exhaustive search for companion pairs satisfying a column correlation constraint is infeasible for medium and long sequences. We instead search for two shorter length sequences by minimizing a cost function in terms of their autocorrelation and crosscorrelation merits. Furthermore, an improved cost function which helps in reducing the maximum out-off-phase column correlation is derived based on the properties of the companion pair. By exploiting the well-known Welch bound, sufficient conditions for the existence of companion pairs which satisfy a set of column correlation constraints are also given.

Keywords

Cite

@article{arxiv.cs/0605010,
  title  = {Complementary Set Matrices Satisfying a Column Correlation Constraint},
  author = {Di Wu and Predrag Spasojevic},
  journal= {arXiv preprint arXiv:cs/0605010},
  year   = {2007}
}