Title :
Uplink-downlink duality via minimax duality
Author_Institution :
Edward S. Rogers Sr. Dept. of Electr. & Comput. Eng., Univ. of Toronto, Ont.
Abstract :
The sum capacity of a Gaussian vector broadcast channel is the saddle point of a minimax Gaussian mutual information expression where the maximization is over the set of transmit covariance matrices subject to a power constraint and the minimization is over the set of noise covariance matrices subject to a diagonal constraint. This sum capacity result has been proved using two different methods, one based on decision-feedback equalization and the other based on a duality between uplink and downlink channels. This paper illustrates the connection between the two approaches by establishing that uplink-downlink duality is equivalent to Lagrangian duality in minimax optimization. This minimax Lagrangian duality relation allows the optimal transmit covariance and the least-favorable-noise covariance matrices in a Gaussian vector broadcast channel to be characterized in terms of the dual variables. In particular, it reveals that the least favorable noise is not unique. Further, the new Lagrangian interpretation of uplink-downlink duality allows the duality relation to be generalized to Gaussian vector broadcast channels with arbitrary linear constraints. However, duality depends critically on the linearity of input constraints. Duality breaks down when the input constraint is an arbitrary convex constraint. This shows that the minimax representation of the broadcast channel sum capacity is more general than the uplink-downlink duality representation
Keywords :
Gaussian channels; Gaussian noise; MIMO systems; antenna arrays; broadcast channels; channel capacity; convex programming; covariance matrices; decision feedback equalisers; duality (mathematics); minimax techniques; multi-access systems; telecommunication links; Gaussian vector; MIMO; arbitrary convex constraint; broadcast channel; covariance matrix transmission; decision-feedback equalization; least-favorable-noise covariance; minimax Lagrangian duality; multiple-access channel; multiple-antenna; multiple-input multiple-output system; mutual information expression; power constraint; sum capacity; uplink-downlink channel; Broadcasting; Covariance matrix; Decision feedback equalizers; Downlink; Gaussian noise; Lagrangian functions; Linearity; Minimax techniques; Mutual information; Vectors; Broadcast channel; Lagrangian duality; minimax optimization; multiple-access channel; multiple-antenna; multiple-input multiple-output (MIMO);
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2005.862102