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Joint QoS-aware Admission Control, Channel Assignment, and Power Allocation for Cognitive Radio Cellular Networks

机译:关节认知无线电蜂窝网络的联合QoS感知访问,渠道分配和功率分配

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In cognitive radio cellular networks (CogCells), primary users (PUs) rarely utilize all the assigned frequency bands at a certain time and a location. The spectral inefficiency caused by the spectrum holes motivated cognitive radio technology (CR) that presents unlicensed secondary users (SUs) an opportunity for using spectrum holes. CR makes the SUs to find and use the spectrum holes without interrupting the operation of PUs. The SUs are allowed to access the channel licensed to the PUs which consist of primary transmitters (PTs) and primary receivers (PRs) when the interference to the PRs is less than acceptable value (i.e., predefined system threshold), and the quality of service (QoS) required by PTs are also guaranteed. According to different levels of QoS required by SUs, the network operator can achieve different secondary revenues by providing different QoS levels to SUs. Due to the high density, the mobility of SUs, the interference limitation at PRs and the QoS requirements from PTs, not all SUs can be supported. The problem we investigated in this paper is to select the maximum subset of SUs to maximize the total secondary revenue of the CogCell, meanwhile the QoS requirements from both PTs and admitted SUs must be guaranteed. Moreover, the interference caused by the admitted SUs and the PTs at the PRs (due to access the same channel) has to be less than the predefined system threshold. In this paper, we formulate such a joint QoS-aware admission control, channel assignment, and power allocation scheme as a non-linear NP-hard optimization problem. This is a very challenging problem and the NP-hardness has been shown in the literature even for the single-channel scenario, In this paper, we propose a new polynomial-time joint QoS-aware admission control, channel assignment and power allocation scheme which has a O(1/log n_(p~r)+log n_(ro)) approximation guarantee, e.g., the total secondary revenue achieved by our algorithm is at least Ω(1/log n_(p~r)+log n_(ro)) of the optimum, where n_(p~r) is the number of PRs and n_(ro) is the number of available channels in the CogCell. Note that Our algorithm also significantly improves the current best known solution with a O(1/n_(p~r)) approximation guarantee for the single-channel scenario [11]. in this paper, we also propose a greedy heuristic approximation algorithm and an exact solution. The simulation results show that the approximation algorithms we proposed can achieve significantly higher secondary revenue than the currently best known approximation approach for this problem, an extension of the minimal SINR removal algorithm in [15]. Indeed, quite surprisingly, the simulation results also demonstrate that the secondary revenue achieved by our approximation approaches is very close to the optimum in practice, specially for the O(1/log n_(p~r)+log n_(ro))-approximation algorithm.
机译:在认知无线电蜂窝网络(Cogcells)中,主用户(PU)很少利用一定时间和位置处的所有指定的频带。光谱孔引起的频谱效率,其具有呈现未许可的二级用户(SUS)使用光谱孔的机会的认知无线电技术(CR)引起的认知无线电技术(CR)。 CR使得SUS发现并使用光谱孔而不会中断PU的操作。当对PRS的干扰小于可接受的值(即预定义系统阈值)和服务质量时,允许使用主发射器(PTS)和主接收器(PRS)组成的频道。 (QoS)也得到保证。根据SUS所需的不同QoS,网络运营商可以通过向SUS提供不同的QoS水平来实现不同的二级收入。由于高密度,SUS的移动性,PRS的干扰限制和来自PTS的QoS要求,并非所有SUS都可以得到支持。我们在本文中调查的问题是选择最大的SUS的最大子集,以最大限度地提高COGCELL的总收入,同时必须保证PTS和录取SU的QoS要求。此外,由录取的SUS和PRS处的PTS(由于接入相同的通道)引起的干扰必须小于预定义的系统阈值。在本文中,我们制定了这种关节QoS感知的准入控制,通道分配和功率分配方案,作为非线性NP-Hard优化问题。这是一个非常具有挑战性的问题,并且在文献中已经显示了NP硬度即使是单通道场景,在本文中,我们提出了一种新的多项式关节QoS感知准备控制,通道分配和功率分配方案有一个(1 / log n_(p〜r)+ log n_(ro))近似保证,例如,我们的算法实现的总二级收入至少ω(1 / log n_(p〜r)+ log n_ (RO))最佳,其中N_(P〜R)是PRS和N_(RO)的数量是COGCELL中的可用通道数。请注意,我们的算法还显着改善了单通道场景的O(1 / N_(P〜R))近似保证的当前最着名的解决方案[11]。在本文中,我们还提出了一种贪婪的启发式近似算法和精确的解决方案。仿真结果表明,我们提出的近似算法可以实现比目前最着名的近似方法的显着更高的次要收入,这是[15]中最小的SINR去除算法的扩展。实际上,令人惊讶的是,模拟结果还表明,通过我们的近似方法实现的二级收入非常接近实际上的最佳,特别是O(1 / log n_(p〜r)+ log n_(ro)) - 近似算法。

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