Title :
Characterization of optimal input distributions for Gaussian-mixture noise channels
Author :
Vu, Hung V. ; Tran, Nghi H. ; Gursoy, Mustafa Cenk ; Le-Ngoc, Tho ; Hariharan, S.I.
Author_Institution :
McGill University
Abstract :
This paper addresses the characterization of optimal input distributions for the general additive quadrature Gaussian-mixture (GM) noise channel under an average power constraint. The considered model can be used to represent a wide variety of communication channels, such as the well-known Bernoulli-Gaussian and Middleton Class-A impulsive noise channels, co-channel interference in cellular communications, and cognitive radio channels under imperfect spectrum sensing. We first demonstrate that there exists a unique input distribution achieving the channel capacity and the optimal input has an uniformly distributed phase. By using the Kuhn-Tucker conditions (KTC) and Bernstein´s theorem, we then demonstrate that there are always a finite number of mass points on any bounded interval in the optimal amplitude distribution. Equivalently, the optimal amplitude input distribution is discrete. Furthermore, by applying a novel bounding technique on the KTC, it is then shown that the optimal amplitude distribution has a finite number of mass points.
Keywords :
Additives; Channel capacity; Conferences; Entropy; Interference; Noise; Capacity-achieving distribution; Discrete input; Gaussian-mixture channel; Shannon capacity;
Conference_Titel :
Information Theory (CWIT), 2015 IEEE 14th Canadian Workshop on
Conference_Location :
St. John´s, NL, Canada
DOI :
10.1109/CWIT.2015.7255146