基于自举法的GLRT检测器对OFDM信号的频谱感知

F. Nugraha, S. Tjondronegoro, F. Y. Suratman
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引用次数: 2

摘要

认知无线电的主要任务是在周围无线电环境中进行频谱感知。为了做到绘图和可以确定的频率,使用空闲频率,从而可以优化使用认知无线电通信。即使在最坏的情况下,探测器系统也不知道信号和噪声。在这种情况下,有几种技术可用于执行频谱传感,其中一些技术是能量检测技术的更简单实现。在噪声条件未知和不确定的情况下,这种方法有缺点。在这种情况下,一种可以使用并且比能量检测更好的技术是GLRT检测器。然而,这种检测器需要根据经验选择阈值。这个过程有一个问题,当我们从一个位置移动到另一个位置时,有必要再次进行经验计算。如果我们在一个新的地方检测到一个已经活跃的信号,就会面临困难,所以有必要知道信号不活跃的确切时间。在这种情况下,自举方法可以帮助阈值检测器直接从接收到的主动信号中确定。因此,检测器可以获得阈值,该阈值总是随任何条件随时随地更新。仿真结果表明,采用自举方法的GLRT检测器在面对不确定性噪声时具有较强的韧性。甚至能够超越能量探测器和GLRT所拥有的性能。在信噪比为-5 dB、不确定度噪声为1 dB的条件下,自举方法的GLRT比普通GLRT提高了近0.030,比能量检测器提高了0.094。
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Spectrum sensing of OFDM signals using GLRT detector with bootstrap approach
Among some of its duties, the cognitive radio's main role is to do spectrum sensing in the surrounding radio environment. In order to do mapping and can determine the frequency of use vacant frequencies which can be optimized for the use of cognitive radio communication. Even to the worst conditions in which the detector system has no knowledge of the signal and noise. There are several techniques that can be used to perform spectrum sensing in this condition, among these techniques are simpler implementation of energy detection techniques. This technique has a weakness at noise conditions are unknown and uncertainty. In this condition, a technique that can be used and better than energy detection is GLRT detector. However, this detector requires choose threshold with empirically. This process has a problem when we move from one location to another, it is necessary to conduct empirical calculations again. And would face difficulties if we do detect a signal that is already active in a new place, so it is necessary to know the exact time the signal was not active. In this condition the bootstrap approach can help determine the threshold detector directly from the active signal is received. So the detector can gain threshold which is always updated with any condition, anytime and anywhere. The simulation result show that GLRT detector with bootstrap approach has a toughness in the face of uncertainty noise. Even able to exceed the performance of which is owned by the energy detector and GLRT. At condition SNR -5 dB and uncertainty noise 1 dB, GLRT with bootstrap approach improve probability of miss detection almost 0.030 than ordinary GLRT and 0.094 than energy detector.
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