Truthful Auction for Resource Allocation in Cooperative Cognitive Radio Networks

Xinglong Wang, Liusheng Huang, Hongli Xu, He Huang
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引用次数: 11

Abstract

Cooperative cognitive radio network (CCRN) is a promising paradigm to increase spectrum utilization and exploit spatial diversity. The allocation of two related resources, i.e. spectrum and relay nodes, plays a fundamental role in the performance of CCRNs. However, previous works either lack of incentives for both primary users (PUs) and relay nodes to participate in or consider spectrum auction and relay auction separately. In this paper, we consider a static cooperative cognitive radio network scenario with several PUs and multiple secondary user coteries, each of which consists of a set of secondary users who are interested in sharing the same secondary relay node. We model the problem of joint spectrum allocation and relay allocation as a hierarchical auction and propose TERA, which is the first Truthful auction mechanism for Efficient Resource Allocation in CCRNs. We show that TERA satisfies critical economic properties such as truthful, individual rationality, budget balance, supply limits and computational efficiency. Furthermore, we theoretically prove TERA can achieve near-optimal revenue with high probability. Finally, extensive simulation results show that TERA is efficient and able to improve the utility of PUs and relay nodes significantly up to 125% and 151% respectively.
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协作认知无线电网络中资源分配的诚实拍卖
协作认知无线电网络(CCRN)是提高频谱利用率和利用空间多样性的一种有前景的模式。频谱和中继节点这两种相关资源的分配对ccrn的性能起着至关重要的作用。然而,以往的工作要么缺乏对主用户(pu)和中继节点参与的激励,要么分别考虑频谱拍卖和中继拍卖。在本文中,我们考虑了一个具有多个pu和多个辅助用户群的静态协同认知无线网络场景,每个用户群由一组对共享同一辅助中继节点感兴趣的辅助用户组成。我们将联合频谱分配和中继分配问题建模为分层拍卖,并提出了TERA,这是ccrn中第一个用于有效资源分配的诚实拍卖机制。结果表明,TERA满足真实、个体理性、预算平衡、供给限制和计算效率等关键经济属性。此外,我们从理论上证明了TERA可以实现高概率的近最优收益。最后,大量的仿真结果表明,TERA是高效的,能够将pu和中继节点的利用率分别显著提高125%和151%。
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