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A stochastic approach for spectrum sensing and sensor selection in dynamic cognitive radio sensor networks

机译:动态认知无线电传感器网络中用于频谱感测和传感器选择的随机方法

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Cognitive Radio Sensor Networks (CRSN) is currently demanding to deal with spectrum scarcity through opportunistic spectrum access solutions. Opportunistic access to the available spectrum is achieved by determining spectrum holes, which in turn demands to run further signal processing operations on network nodes. Consequently, energy consumption to support these processing algorithms is increased and thus, it remains a major concern in CRSN. Some solutions address this issue via sensor selection during spectrum sensing in static CRSN. In this case, certain nodes participate in cooperative spectrum sensing (CSS) to guarantee proper performance, and the remaining nodes go to sleep to extend network battery lifetime. However, this strategy becomes difficult to apply to mobile sensor networks, where nodes change positions dynamically. This is the case of mobile nodes on Cognitive Radio Internet of Things (CR-IoT) networks, where sensor nodes consume significant energy to support CR operations. Due to the random displacement of nodes, new solutions must be developed in contrast to previous strategies based on on-off nodes from static CRSN, this to cooperate between nodes and also to reduce consumed energy. This paper reports a novel energy-efficient sensor selection technique applicable to dynamic CRSN. Stochastic approaches are developed to describe and determine the minimum total number of awake sensors to participate in CSS. This approach is particularly suited for solutions in which conditions, such as the position of nodes, change randomly. Proposed solution is obtained through the use of "here-and-now" approach considering statistic features of the random distance between each sensor node and a given fusion center. The methodology achieves energy consumption levels comparable to "wait-and-see" approach for networks of reduced size. Additionally, we provide further insights into the statistical nature of the problem to state a proper problem formulation, then to devise solutions accordingly. The analysis and performance of the proposed solution are discussed and illustrated with the aid of simulations. (c) 2019 Elsevier B.V. All rights reserved.
机译:认知无线电传感器网络(CRSN)当前要求通过机会频谱接入解决方案来应对频谱短缺问题。通过确定频谱空洞来实现对可用频谱的机会性访问,这又要求在网络节点上运行进一步的信号处理操作。因此,增加了支持这些处理算法的能耗,因此,在CRSN中仍然是主要关注的问题。一些解决方案通过在静态CRSN中进行频谱感测期间的传感器选择来解决此问题。在这种情况下,某些节点会参与协作频谱感测(CSS)以保证适当的性能,而其余节点会进入睡眠状态以延长网络电池寿命。但是,这种策略难以应用于节点动态更改位置的移动传感器网络。认知无线电物联网(CR-IoT)网络上的移动节点就是这种情况,其中传感器节点消耗大量能量来支持CR操作。由于节点的随机位移,与基于静态CRSN的开关节点的先前策略相比,必须开发新的解决方案,以在节点之间进行协作并减少能耗。本文报道了一种适用于动态CRSN的新型节能传感器选择技术。开发了随机方法来描述和确定参与CSS的清醒传感器的最小总数。此方法特别适用于条件(例如节点的位置)随机变化的解决方案。考虑到每个传感器节点与给定融合中心之间的随机距离的统计特征,可以通过使用“现在和现在”方法来获得建议的解决方案。该方法所达到的能耗水平与小型网络的“观望”方法相当。此外,我们提供有关问题统计性质的进一步见解,以陈述适当的问题表述,然后相应地设计解决方案。通过仿真讨论并说明了所提出解决方案的分析和性能。 (c)2019 Elsevier B.V.保留所有权利。

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