Author :
Jiaheng Wang ; Bengtsson, Martin ; Ottersten, Bjorn ; Palomar, Daniel P.
Author_Institution :
National Mobile Communications Research Laboratory, Southeast University, Nanjing, China
Abstract :
The full potential of multi-input multi-output (MIMO) communication systems relies on exploiting channel state information at the transmitter (CSIT), which is, however, often subject to some uncertainty. In this paper, following the worst-case robust philosophy, we consider a robust MIMO precoding design with deterministic imperfect CSIT, formulated as a maximin problem, to maximize the worst-case received signal-to-noise ratio or minimize the worst-case error probability. Given different types of imperfect CSIT in practice, a unified framework is lacking in the literature to tackle various channel uncertainty. In this paper, we address this open problem by considering several classes of uncertainty sets that include most deterministic imperfect CSIT as special cases. We show that, for general convex uncertainty sets, the robust precoder, as the solution to the maximin problem, can be efficiently computed by solving a single convex optimization problem. Furthermore, when it comes to unitarily-invariant convex uncertainty sets, we prove the optimality of a channel-diagonalizing structure and simplify the complex-matrix problem to a real-vector power allocation problem, which is then analytically solved in a waterfilling manner. Finally, for uncertainty sets defined by a generic matrix norm, called the Schatten norm, we provide a fully closed-form solution to the robust precoding design, based on which the robustness of beamforming and uniform-power transmission is investigated.
Keywords :
MIMO communication; array signal processing; channel coding; error statistics; matrix algebra; minimax techniques; precoding; CSIT; Schatten norm; beamforming; channel state information; channel uncertainty; channel-diagonalizing structure; complex-matrix problem; convex optimization problem; generic matrix norm; maximin problem; multiinput multioutput communication system; real-vector power allocation problem; robust MIMO precoding; signal-to-noise ratio; transmitter; uniform-power transmission; unitarily-invariant convex uncertainty sets; worst-case error probability; Convex uncertainty set; MIMO; Schatten norm; imperfect CSIT; maximin; minimax; saddle point; unitarily-invariant uncertainty set; worst-case robustness;