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01-08-2010

Mutual interference considered power allocation in OFDM-based cognitive networks: the multiple SUs case

Published in: Annals of Telecommunications | Issue 7-8/2010

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Abstract

Power allocation for secondary users (SUs) in cognitive networks is an important issue to ensure the SUs’ quality of service. When the mutual interference between the primary users (PUs) and the SUs is taken into consideration, it is wanted to achieve the conflict-free power allocation while synchronously maximizing the capacity of the secondary network. In this paper, the optimal power allocation problem is considered in orthogonal frequency division multiplexing cognitive networks. The single SU case is primarily formulated as a constrained optimization problem. On this basis, the multiple SUs case is then studied and simulated in detail. During the analysis, the mutual interference among the PUs and the SUs is comprehensively formulated as the restrictions on the SU’s transmission power and the optimization problems are finally resolved by iterative water-filling algorithms. Consequently, the proposed power allocation scheme restrains the interference to the primary network, as well as maximizing the capacity of the secondary network. Specifying the multiple-SUs case, simulation results are exhibited in a simplified scenario to confirm the efficiency of the proposed water-filling algorithm, and the influence of the mutual interference on the power allocation and the system capacity is further illustrated.

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Appendix
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Footnotes
1
However, this does not mean that our model is not suitable if both of two kinds of channel gains are taken into account; the model can be expanded into that case easily.
 
2
In [14], Γ s is defined as Γ s  = − ln(5·BER s,target)/1.5 at low BER level, where coding gain is not considered.
 
3
n L is called the “cut-off” subcarrier if the sorted subcarriers {1,...,n L } are optimally allocated with the power of \(E_n^{\rm max}\), while the sorted subcarriers {n L  + 1,...,N L } are allocated with the power of \(E_0-{\rm CGNR}_n^{-1}\).
 
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Metadata
Title
Mutual interference considered power allocation in OFDM-based cognitive networks: the multiple SUs case
Publication date
01-08-2010
Published in
Annals of Telecommunications / Issue 7-8/2010
Print ISSN: 0003-4347
Electronic ISSN: 1958-9395
DOI
https://doi.org/10.1007/s12243-009-0140-z

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