认知无线网络中最优多信道接入的线性时间算法

Luca Zappaterra, Joseph S. Gomes, Amrinder Arora, Hyeong-Ah Choi
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引用次数: 3

摘要

认知无线网络(crn)的目标是在授权的主用户(pu)不使用相同的信道时,允许辅助用户(su)进行传输,从而最大限度地利用现有的无线信道。SU监控CRN信道,感知PU的存在以避免干扰,并在传输前估计链路质量。当找到一个或多个具有满意链接质量的可用通道时,它将停止。关于何时停止探索信道并开始传输的最佳决策的算法在时间和空间方面都是昂贵的,这在硬件受限的su(如移动设备)中都是稀缺的。在本文中,我们提出了一种低复杂度的算法,该算法利用CRN信道的链路质量和pu活动统计数据来预先计算一组决策阈值,这将有助于信道探索阶段最大化su吞吐量。我们的算法在离线计算时需要二次的时间和空间,在线处理时需要线性的时间和空间,这使得它非常适合空间和能量受限的移动SUs。我们广泛的仿真研究和与仿真结果相匹配的分析模型证明了我们的解决方案的有效性,通过展示吞吐量和延迟性能与最优解以及众所周知的反向归纳法的解的密切关系,该方法通常在指数时间内进行离线计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A linear-time algorithm for optimal multi-channel access in Cognitive Radio Networks
Cognitive Radio Networks (CRNs) aim to maximize the utilization of existing wireless channels by allowing secondary users (SUs) to transmit when licensed primary users (PUs) are not using the same channels. An SU monitors the CRN channels, sensing PU presence to avoid interference and estimating the link quality before transmitting. It stops when one or more available channels with satisfactory link quality are found. Algorithms for making the optimal decision regarding when to stop exploring the channels and start transmitting are expensive in terms of time and space, which are both scarce in hardware-constrained SUs, such as mobile devices. In this paper, we propose a low-complexity algorithm, which utilizes link quality and PU-activity statistics of the CRN channels to pre-compute a set of decision thresholds that will aid the channel exploration phase in maximizing SU-throughput. Our algorithm takes quadratic time and space for offline computations and linear time and space for online processing, which makes it very suitable for space and energy constrained mobile SUs. Our extensive simulation study and analytical model matching the simulation results demonstrate our solution's validity by showing the closeness of throughput and delay performances with the optimum solution as well as solutions by the well-known backward induction method, which often runs in exponential time for offline computations.
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