Title :
Convex primal decomposition for multicarrier linear MIMO transceivers
Author :
Palomar, Daniel Pérez
Author_Institution :
Dept. of Electr. Eng., Princeton Univ., NJ, USA
Abstract :
The design of linear transceivers for multiple-input-multiple-output (MIMO) communication systems with channel state information is particularly challenging for two main reasons. First, since several substreams are established through the MIMO channel, it is not even clear how the quality of the system should be measured. Second, once a cost function has been chosen to measure the quality, the optimization of the system according to such criterion is generally difficult due to the nonconvexity of the problem. Recent results have solved the problem for the wide family of Schur-concave/convex functions, resulting in simple closed-form solutions when the system is modeled as a single MIMO channel. However, with several MIMO channels (such as in multi-antenna multicarrier systems), the solution is generally more involved, leading in some cases to the need to employ general-purpose interior-point methods. This problem is specifically addressed in this paper by combining the closed-form solutions for single MIMO channels with a primal decomposition approach, resulting in a simple and efficient method for multiple MIMO channels. The extension to functions that are not Schur-concave/convex is also briefly considered, relating the present work with a recently proposed method to minimize the average bit error rate (BER) of the system.
Keywords :
MIMO systems; antenna arrays; error statistics; optimisation; transceivers; wireless channels; BER; MIMO channel; bit error rate; channel state information; convex primal decomposition; general-purpose interior-point methods; multiantenna multicarrier systems; multicarrier linear MIMO transceivers; multiple-input-multiple-output communication systems; Bit error rate; Channel state information; Closed-form solution; Communication systems; Cost function; DSL; Employment; MIMO; Transceivers; Transmitters; Convex optimization theory; Schur convexity; linear precoder; majorization theory; multicarrier transceiver; multiple-input–multiple-output (MIMO) channel; primal decomposition technique; waterfilling;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2005.859241