Optimization for Prediction-Driven Cooperative Spectrum Sensing in Cognitive Radio Networks

Dawei Nie, Wenjuan Yu, Q. Ni, H. Pervaiz
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引用次数: 1

Abstract

Empirical studies have observed that the spec-trum usage in practice follows regular patterns. Machine learning (ML)-based spectrum prediction techniques can thus be used jointly with cooperative sensing in cognitive radio networks (CRNs). In this paper, we propose a novel cluster-based sensing-after-prediction scheme and aim to reduce the total energy consumption of a CRN. An integer programming problem is formulated that minimizes the cluster size and optimizes the decision threshold, while guaranteeing the system accuracy requirement. To solve this challenging optimization problem, the relaxation technique is used which transforms the optimization problem into a tractable problem. The solution to the relaxed problem serves as a foundation for the solution to the original integer programming. Finally, a low-complexity search algorithm is proposed which achieves the global optimum, as it obtains the same performance with exhaustive search. Simulation results demonstrate that the total energy consumption of CRN is greatly reduced by applying our clustered sensing-after-prediction scheme.
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认知无线电网络中预测驱动的协同频谱感知优化
实证研究发现,在实践中,频谱的使用遵循一定的规律。因此,基于机器学习(ML)的频谱预测技术可以与认知无线电网络(crn)中的协同感知联合使用。在本文中,我们提出了一种新的基于聚类的感知后预测方案,旨在降低CRN的总能耗。在保证系统精度要求的前提下,提出了最小化聚类大小和优化决策阈值的整数规划问题。为了解决这一具有挑战性的优化问题,采用松弛技术将优化问题转化为一个可处理的问题。松弛问题的解是原整数规划解的基础。最后,提出了一种低复杂度的搜索算法,该算法可以获得与穷举搜索相同的性能,从而达到全局最优。仿真结果表明,采用聚类感知后预测方案后,CRN的总能耗大大降低。
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