首页> 外文会议>4th International Symposium on Communications, Control and Signal Processing (ISCCSP 2010) >A novel parallelized goodness-of-Fit test based Dynamic Spectrum access technique for Cognitive Radio Networks
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A novel parallelized goodness-of-Fit test based Dynamic Spectrum access technique for Cognitive Radio Networks

机译:一种新颖的基于并行拟合优度测试的认知无线电网络动态频谱接入技术

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Cognitive Radio Networks (CRNs) operate on the principle of opportunistically exploiting unused capacity in the primary network via Dynamic Spectrum Sensing. In this paper we propose a novel suite of transmit opportunity detection methods that effectively exploit the white/gray space in high traffic packet networks. We present a radically different paradigm to exploit the excess Signal-to-Noise ratio regime in which the primary network usually operates via a modification of the Interference Temperature concept. The proposed method is based on robust and rapid detection of changes in the primary network statistics through the use of a novel Parallelized Goodness-of- Fit test. The instantaneous transmit margin afforded by the primary network is dynamically determined and the CRN backs off whenever it detects that it is beginning to interfere with the primary network. We have implemented the proposed method on a CRN testbed that coexists with a large scale IEEE 802.11 primary network and demonstrate its excellent performance through extensive real world experimental results. We show that we can obtain more than 95 % probability of detection of interference while the probability of not detecting a valid transmit opportunity is less than 20 % for detection times of 400–1000 ms.
机译:认知无线电网络(CRN)的工作原理是通过动态频谱感知来机会地利用主网络中未使用的容量。在本文中,我们提出了一套新颖的传输机会检测方法,可有效利用高流量分组网络中的白色/灰色空间。我们提出了一个截然不同的范例,以利用多余的信噪比机制,在该机制中,主要网络通常通过修改干扰温度概念来运行。所提出的方法基于通过使用新颖的并行拟合优度测试对主要网络统计数据中的变化进行的鲁棒而快速的检测。动态确定主网络提供的瞬时传输余量,并且只要CRN检测到它开始干扰主网络,它就会后退。我们已经在与大型IEEE 802.11主网络共存的CRN测试平台上实现了所提出的方法,并通过广泛的实际实验结果证明了其出色的性能。我们表明,对于400–1000 ms的检测时间,我们可以获得大于95%的干扰检测概率,而没有检测到有效传输机会的概率小于20%。

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