Adaptive noise tracking for Cognitive Radios under more realistic operation conditions

Lee Gonzales Fuentes, K. Barbé, W. Moer
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引用次数: 2

Abstract

Normal operation conditions of cognitive radio applications require signal processing techniques that can be executed in real time. One of the first steps is to sense the occupied or free frequency channels. Two major drawbacks in the current techniques are that they assume (i) the noise as white and (ii) the measured spectrum as time-invariant. In real world, the noise is (i) colored so it disturbs the signal unevenly and (ii) its spectrum changes over time. Hence, tracking the time-varying noise spectrum can become crucial to remove the noise contributions and enhance the estimate of the received signal. In this paper, we study an auto-regressive model to develop an adaptive noise tracking technique using a Kalman filter such that an extension of Boll's noise subtraction technique, designed for audio noise cancellation, becomes feasible when adjusted to cognitive radio scenarios. Simulation results show the performance of this technique.
认知无线电在实际操作条件下的自适应噪声跟踪
认知无线电应用的正常操作条件需要能够实时执行的信号处理技术。第一步是感知被占用或空闲的频率通道。当前技术的两个主要缺点是它们假设(i)噪声是白色的,(ii)测量的频谱是时不变的。在现实世界中,噪声是(i)有色的,因此它不均匀地干扰信号,(ii)其频谱随时间变化。因此,跟踪随时间变化的噪声频谱对于去除噪声贡献和增强接收信号的估计至关重要。在本文中,我们研究了一种自回归模型,以开发一种使用卡尔曼滤波器的自适应噪声跟踪技术,从而扩展了Boll的噪声减除技术,该技术专为音频噪声消除而设计,当调整到认知无线电场景时变得可行。仿真结果表明了该方法的有效性。
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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