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Energy-Efficient Cooperative Spectrum Sensing Based on Stochastic Programming in Dynamic Cognitive Radio Sensor Networks

机译:基于动态认知无线电传感器网络中随机编程的节能协作频谱感应

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摘要

Nowadays, Cognitive Radio Sensor Networks (CRSN) arise as an emergent technology to deal with the spectrum scarcity issue and the focus is on devising novel energy-efficient solutions. In static CRSN, where nodes have spatial fixed positions, several reported solutions are implemented via sensor selection strategies to reduce consumed energy during cooperative spectrum sensing. However, energy-efficient solutions for dynamic CRSN, where nodes are able to change their spatial positions due to their movement, are nearly reported despite today’s growing applications of mobile networks. This paper investigates a novel framework to optimally predict energy consumption in cooperative spectrum sensing tasks, considering node mobility patterns suitable to model dynamic CRSN. A solution based on the Kataoka criterion is presented, that allows to minimize the consumed energy. It accurately estimates -with a given probability-the spent energy on the network, then to derive an optimal energy-efficient solution. An algorithm of reduced-complexity is also implemented to determine the total number of active nodes improving the exhaustive search method. Proper performance of the proposed strategy is illustrated by extensive simulation results for pico-cells and femto-cells in dynamic scenarios.
机译:如今,认知无线电传感器网络(CRSN)是一种以应对频谱稀缺问题的新技术,重点是设计新的节能解决方案。在静态CRSN中,其中节点具有空间固定位置,通过传感器选择策略实现了几种报告的解决方案,以减少协同频谱感测期间消耗的能量。然而,尽管今天的移动网络越来越多,但节点能够为动态CRSN的节能解决方案,其中节点能够通过运动而改变其空间位置。本文研究了一种新颖的框架,以最佳地预测协作频谱传感任务中的能量消耗,考虑适合于模型动态CRSN的节点移动模式。提出了一种基于KATAOKA标准的解决方案,其允许最小化消耗的能量。它准确地估计 - 在给定的概率 - 网络上的消费能量,然后导出最佳节能解决方案。还实现了减少复杂性的算法,以确定改善穷举搜索方法的活动节点的总数。所提出的策略的适当性能是通过在动态场景中的微微细胞和毫微微细胞的广泛模拟结果来说明。

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