Burel Gilles, Fiche Anthony, Gautier Roland
Université de Bretagne Occidentale, Lab-STICC, CNRS, UMR 6285, 6 Avenue Le Gorgeu, 29200 Brest, France.
Sensors (Basel). 2022 Sep 28;22(19):7381. doi: 10.3390/s22197381.
In the context of cognitive radio, smart cities and Internet-of-Things, the need for advanced radio spectrum monitoring becomes crucial. However, surveillance of a wide frequency band without using extremely expensive high sampling rate devices is a challenging task. The recent development of compressed sampling approaches offers a promising solution to these problems. In this context, the Modulated Wideband Converter (MWC), a blind sub-Nyquist sampling system, is probably the most realistic approach and was successfully validated in real-world conditions. The MWC can be realized with existing analog components, and there exist calibration methods that are able to integrate the imperfections of the mixers, filters and ADCs, hence allowing its use in the real world. The MWC underlying model is based on signal processing concepts such as filtering, modulation, Fourier series decomposition, oversampling and undersampling, spectrum aliasing, and so on, as well as in-flow data processing. In this paper, we develop an MWC model that is entirely based on linear algebra, matrix theory and block processing. We show that this approach has many interests: straightforward translation of mathematical equations into simple and efficient software programming, suppression of some constraints of the initial model, and providing a basis for the development of an extremely fast system calibration method. With a typical MWC acquisition device, we obtained a speed-up of the calibration computation time by a factor greater than 20 compared with a previous implementation.
在认知无线电、智能城市和物联网的背景下,对先进无线电频谱监测的需求变得至关重要。然而,在不使用极其昂贵的高采样率设备的情况下对宽频带进行监测是一项具有挑战性的任务。压缩采样方法的最新发展为这些问题提供了一个有前景的解决方案。在这种背景下,调制宽带转换器(MWC),一种盲亚奈奎斯特采样系统,可能是最现实的方法,并且已在实际条件下成功得到验证。MWC可以用现有的模拟组件来实现,并且存在能够整合混频器、滤波器和模数转换器(ADC)缺陷的校准方法,因此允许其在现实世界中使用。MWC的基础模型基于诸如滤波、调制、傅里叶级数分解、过采样和欠采样、频谱混叠等信号处理概念,以及流入数据处理。在本文中,我们开发了一个完全基于线性代数、矩阵理论和块处理的MWC模型。我们表明这种方法有许多优点:将数学方程直接转化为简单高效的软件编程,消除初始模型的一些限制,并为开发一种极快速的系统校准方法提供基础。使用典型的MWC采集设备,与之前的实现相比,我们将校准计算时间加快了20倍以上。