학술논문

Characterization of optimal input distributions for Gaussian-mixture noise channels
Document Type
Conference
Source
2015 IEEE 14th Canadian Workshop on Information Theory (CWIT) Information Theory (CWIT), 2015 IEEE 14th Canadian Workshop on. :32-35 Jul, 2015
Subject
Communication, Networking and Broadcast Technologies
Signal Processing and Analysis
Noise
Interference
Channel capacity
Additives
Entropy
Conferences
Capacity-achieving distribution
Discrete input
Gaussian-mixture channel
Shannon capacity
Language
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.