Interference alignment with frequency-clustering for efficient resource allocation in cognitive radio networks
Mohammed El-Absi,Musbah Shaat,Faouzi Bader,Thomas Kaiser +3 more
- 01 Dec 2014
- Vol. 14, Iss: 12, pp 979-985
TL;DR: Simulation results show that IA with frequency-clustering achieves a significant sum rate increase compared to CR systems with orthogonal multiple access transmission techniques.
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Abstract: In this paper, we investigate the resource management problem in orthogonal frequency division multiplexing (OFDM) based multiple-input multiple-output (MIMO) cognitive radio (CR) systems. We propose performing resource allocation based on interference alignment (IA) in order to improve the spectral efficiency of CR systems without affecting the quality of service of the primary system. IA plays a role in the proposed algorithm to enable the secondary users (SUs) to cooperate and share the available spectrum, which leads to a considerable increase in the spectral efficiency of CR systems. However, IA based spectrum sharing is restricted to a certain number of SUs per subcarrier in order to satisfy the IA feasibility conditions. Accordingly, the resource allocation problem is formulated as a mixed-integer optimization problem, which is considered an $\mathcal{NP}$ -hard problem. To reduce the computational complexity of the problem, a two-phases efficient sub-optimal algorithm is proposed. In the first phase, frequency-clustering is performed in order to satisfy the IA feasibility conditions, where each subcarrier is assigned to a feasible number of SUs. Whenever possible, frequency-clustering stage considers the fairness among the SUs. In the second stage, the available power is allocated among the subcarriers and SUs without violating the constraints that limit the maximum interference induced to the primary system. Simulation results show that IA with frequency-clustering achieves a significant sum rate increase compared to CR systems with orthogonal multiple access transmission techniques.
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Citations
Efficient Resource Allocation in Device-to-Device Communication Using Cognitive Radio Technology
TL;DR: The transmission rate of the D2D users is optimized while simultaneously satisfying five sets of constraints related to power, interference, and data rate, modeling D1D users as cognitive secondary users.
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Interference alignment with frequency-clustering for efficient resource allocation in cognitive radio networks
Mohammed El-Absi,Musbah Shaat,Faouzi Bader,Thomas Kaiser +3 more
- 01 Dec 2014
TL;DR: Simulation results show that IA with frequency-clustering achieves a significant sum rate increase compared to CR systems with orthogonal multiple access transmission techniques.
Multiuser-diversity-based interference alignment in cognitive radio networks
Ying He,Hongxi Yin,Nan Zhao +2 more
TL;DR: This paper studies the problem of SINR decrease and proposes a multiuser-diversity-based IA scheme to make it more practical to be applied to CR networks and presents two schemes targeted at two different scenarios.
21
Artificial Noise-Based Physical-Layer Security in Interference Alignment Multipair Two-Way Relaying Networks
TL;DR: Four transmission models are proposed to manage the artificial noise transmission among the different users to achieve a tradeoff between the users sum-rate and secrecy rate and the efficiency of the proposed algorithms and the transmission models in achieving the transmission security for IA-based multiuser relaying networks is shown.
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QoS-Based Interference Alignment With Similarity Clustering for Efficient Subchannel Allocation in Dense Small Cell Networks
TL;DR: A centralized efficient subchannel allocation scheme based on IA with similarity clustering in dense SCNs underlaying a macrocell, which aims at maximizing the number of QoS guaranteed SUEs performing IA and achieves a performance close to the optimal solution.
20
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