DocumentCode
3603535
Title
Capacity-Achieving Input Distributions of Additive Quadrature Gaussian Mixture Noise Channels
Author
Vu, Hung V. ; Tran, Nghi H. ; Gursoy, Mustafa Cenk ; Le-Ngoc, Tho ; Hariharan, S.I.
Author_Institution
Dept. of Electr. & Comput. Eng., McGill Univ., Montréal, QC, Canada
Volume
63
Issue
10
fYear
2015
Firstpage
3607
Lastpage
3620
Abstract
This paper studies the characterization of the optimal input and the computation of the capacity of additive quadrature Gaussian mixture (GM) noise channels under an average power constraint. The considered model can be used to represent a wide variety of channels with impulsive interference, such as the well-known Bernoulli-Gaussian and Middleton class-A impulsive noise channels, as well as multiple-access interference channels and cognitive radio channels under imperfect sensing. At first, we demonstrate that there exists a unique input distribution that achieves the channel capacity, and the capacity-achieving input distribution has a uniformly distributed phase. By examining the Kuhn-Tucker alignment conditions (KTCs), we further show that, if the optimal input amplitude distribution contains an infinite number of mass points on a bounded interval, the channel output must be Gaussian-distributed. However, by using Bernstein´s theorem to examine the completely monotonic condition, it is shown that the assumption of a Gaussian-distributed output is not valid. As a result, there are always a finite number of mass points on any bounded interval in the optimal amplitude distribution. In addition, by applying a novel bounding technique on the KTC and using the envelop theorem, we demonstrate that the optimal amplitude distribution cannot have an infinite number of mass points. This gives us the unique solution of the optimal input having discrete amplitude with a finite number of mass points. Given this discrete nature of the optimal input, we then develop a simple method to compute the discrete optimal input and the corresponding capacity. Our numerical examples show that, in many cases, the capacity-achieving distribution consists of only one or two mass points.
Keywords
AWGN channels; channel capacity; cognitive radio; integration; multi-access systems; radiofrequency interference; wireless channels; Bernoulli-Gaussian noise channel; Kuhn-Tucker alignment conditions; Middleton class-A impulsive noise channel; additive quadrature Gaussian mixture noise channels; average power constraint; bounded interval; bounding technique; capacity-achieving input distributions; channel capacity; cognitive radio channels; envelop theorem; imperfect sensing; impulsive interference; multiple-access interference channels; optimal input amplitude distribution; Additives; Channel capacity; Entropy; Interference; Joints; Mutual information; Noise; Capacity-achieving distribution; Shannon capacity; discrete input; impulsive interference;
fLanguage
English
Journal_Title
Communications, IEEE Transactions on
Publisher
ieee
ISSN
0090-6778
Type
jour
DOI
10.1109/TCOMM.2015.2451096
Filename
7150549
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