Combination Spectrum Sensing Algorithm for Wireless Sensor Network Based on Random Forest

Chong Tan, Jinshan Chen, Sufang Chen, Chao Li, Hong Liu, Min Zheng
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引用次数: 0

Abstract

In this paper, a multi-conditional spectrum sensing combination algorithm based on random forest is proposed to address the current shortage of spectrum resources in the sensor network. The algorithm combines sensor's velocity, signal energy, the traces, and the average eigenvalue of the covariance matrix as random forest characteristic parameters, which are achieved through the strong multi-classification ability of random forest. To improve the successful rate of spectrum sensing and the utilization rate of the spectrum, we focus on analyzing the selection of parameter in theory as well as the low signal-to-noise ratio caused by channel fading and shadow effect. Meanwhile, the Doppler effective caused by car moving is also our consideration. Under low signal-to-noise ratio, the simulation results show that the proposed algorithm has better detection performance than existing spectrum sensing algorithms.
基于随机森林的无线传感器网络组合频谱感知算法
针对当前传感器网络中频谱资源不足的问题,提出了一种基于随机森林的多条件频谱感知组合算法。该算法将传感器的速度、信号能量、轨迹和协方差矩阵的平均特征值作为随机森林的特征参数,通过随机森林强大的多分类能力来实现。为了提高频谱感知的成功率和频谱利用率,重点从理论上分析了参数的选择以及信道衰落和阴影效应导致的低信噪比。同时,汽车运动引起的多普勒效应也是我们考虑的因素。在低信噪比下,仿真结果表明,该算法比现有的频谱感知算法具有更好的检测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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