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引用次数: 7
摘要
软件无线电(Software Defined Radio,简称SDR)是现代无线通信系统的重要技术之一。SDR的愿景是实现一个单一的无线电,可以模拟任何无线电信号的发展或已经存在的无线标准。只需更新软件即可,而无需更换底层硬件平台。同样,不同的空中接口需要不同的基带处理采样率。因此,采样率转换(SRC)是SDR的一个重要功能。SRC包括采样率降低或抽取和采样率增加或插值。但在这两种情况下,梳状积分器梳状(CIC)滤波器作为抗混叠滤波器(在抽取的情况下)或抗成像滤波器(在插值的情况下)发挥重要作用。本文介绍了CIC滤波器的基本结构,并举例说明了表征该滤波器的重要参数。因此重点研究了CIC滤波器在抽取器和插值器中的实现。本文还试图找到一种改进该滤波器特性的技术,并指出了存在的一些问题。
CIC filter for sample rate conversion in software defined radio
Software Defined Radio (SDR) or Software Radio is one of the most important technologies for the modern wireless communication system. The vision of SDR is implementing a single radio that can emulate any radio signal of evolving or already existing wireless standards. It can be done simply by updating software without replacing the underlying hardware platform. Again, different air interface requires different sample rate for baseband processing. So, Sample Rate Conversion (SRC) is an important functionality of SDR. SRC includes both sample rate reduction or decimation and sample rate increase or interpolation. But in both the cases Comb Integrator Comb (CIC) filter plays an important role as anti-aliasing filter (in case of decimation) or anti-imaging filter (in case of interpolation). This paper describes the basic structure of CIC filter and illustrates important parameters to characterize this filter. Consequently it focuses on implementation of CIC filter in decimator and interpolator. This paper also tries to find a technique to improve the characteristics of this filter and point out some problems associated with it.