Title :
Capacity of Compound MIMO Gaussian Channels With Additive Uncertainty
Author :
Yin Sun ; Koksal, Can Emre ; Shroff, Ness B.
Author_Institution :
Dept. of ECE, Ohio State Univ., Columbus, OH, USA
Abstract :
This paper considers reliable communications over a multiple-input multiple-output (MIMO) Gaussian channel, where the channel matrix is within a bounded channel uncertainty region around a nominal channel matrix, i.e., an instance of the compound MIMO Gaussian channel. We study the optimal transmit covariance matrix design to achieve the capacity of compound MIMO Gaussian channels, where the channel uncertainty region is characterized by the spectral norm. This design problem is a challenging nonconvex optimization problem. However, in this paper, we reveal that this problem has a hidden convexity property, which can be exploited to map the problem into a convex optimization problem. We first prove that the optimal transmit design is to diagonalize the nominal channel, and then show that the duality gap between the capacity of the compound MIMO Gaussian channel and the min-max channel capacity is zero, which proves and generalizes a conjecture of Loyka and Charalambous. The key tools for showing these results are a new matrix determinant inequality and some unitarily invariant properties.
Keywords :
Gaussian channels; MIMO communication; covariance matrices; optimisation; additive uncertainty; channel matrix; channel uncertainty region; compound MIMO Gaussian channels; duality gap; min-max channel capacity; multiple-input multiple-output Gaussian channel; nominal channel matrix; nonconvex optimization problem; optimal transmit covariance matrix design; Compounds; Convex functions; Covariance matrices; Linear matrix inequalities; MIMO; Uncertainty; Vectors; Channel uncertainty; compound channel; hidden convexity; multiple antennas;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2013.2283222