On Power Allocation for Parallel Gaussian Broadcast Channels with Common Information

This paper considers a broadcast system in which a single transmitter sends a common message and (independent) particular messages to K receivers over N unmatched parallel scalar Gaussian subchannels. For this system the set of all rate tuples that can be achieved via superposition coding and Gaussi...

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Main Authors: Ramy H. Gohary, Timothy N. Davidson
Format: Article
Language:English
Published: SpringerOpen 2009-01-01
Series:EURASIP Journal on Wireless Communications and Networking
Online Access:http://dx.doi.org/10.1155/2009/482520
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spelling doaj-f894040b4a20443b8cd2a71423567fdf2020-11-24T20:52:18ZengSpringerOpenEURASIP Journal on Wireless Communications and Networking1687-14721687-14992009-01-01200910.1155/2009/482520On Power Allocation for Parallel Gaussian Broadcast Channels with Common InformationRamy H. GoharyTimothy N. DavidsonThis paper considers a broadcast system in which a single transmitter sends a common message and (independent) particular messages to K receivers over N unmatched parallel scalar Gaussian subchannels. For this system the set of all rate tuples that can be achieved via superposition coding and Gaussian signalling (SPCGS) can be parameterized by a set of power loads and partitions, and the boundary of this set can be expressed as the solution of an optimization problem. Although that problem is not convex in the general case, it will be shown that it can be used to obtain tight and efficiently computable inner and outer bounds on the SPCGS rate region. The development of these bounds relies on approximating the original optimization problem by a (convex) Geometric Program (GP), and in addition to generating the bounds, the GP also generates the corresponding power loads and partitions. There are special cases of the general problem that can be precisely formulated in a convex form. In this paper, explicit convex formulations are given for three such cases, namely, the case of 2 users, the case in which only particular messages are transmitted (in both of which the SPCGS rate region is the capacity region), and the case in which only the SPCGS sum rate is to be maximized. http://dx.doi.org/10.1155/2009/482520
collection DOAJ
language English
format Article
sources DOAJ
author Ramy H. Gohary
Timothy N. Davidson
spellingShingle Ramy H. Gohary
Timothy N. Davidson
On Power Allocation for Parallel Gaussian Broadcast Channels with Common Information
EURASIP Journal on Wireless Communications and Networking
author_facet Ramy H. Gohary
Timothy N. Davidson
author_sort Ramy H. Gohary
title On Power Allocation for Parallel Gaussian Broadcast Channels with Common Information
title_short On Power Allocation for Parallel Gaussian Broadcast Channels with Common Information
title_full On Power Allocation for Parallel Gaussian Broadcast Channels with Common Information
title_fullStr On Power Allocation for Parallel Gaussian Broadcast Channels with Common Information
title_full_unstemmed On Power Allocation for Parallel Gaussian Broadcast Channels with Common Information
title_sort on power allocation for parallel gaussian broadcast channels with common information
publisher SpringerOpen
series EURASIP Journal on Wireless Communications and Networking
issn 1687-1472
1687-1499
publishDate 2009-01-01
description This paper considers a broadcast system in which a single transmitter sends a common message and (independent) particular messages to K receivers over N unmatched parallel scalar Gaussian subchannels. For this system the set of all rate tuples that can be achieved via superposition coding and Gaussian signalling (SPCGS) can be parameterized by a set of power loads and partitions, and the boundary of this set can be expressed as the solution of an optimization problem. Although that problem is not convex in the general case, it will be shown that it can be used to obtain tight and efficiently computable inner and outer bounds on the SPCGS rate region. The development of these bounds relies on approximating the original optimization problem by a (convex) Geometric Program (GP), and in addition to generating the bounds, the GP also generates the corresponding power loads and partitions. There are special cases of the general problem that can be precisely formulated in a convex form. In this paper, explicit convex formulations are given for three such cases, namely, the case of 2 users, the case in which only particular messages are transmitted (in both of which the SPCGS rate region is the capacity region), and the case in which only the SPCGS sum rate is to be maximized.
url http://dx.doi.org/10.1155/2009/482520
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