基于随机计算的缩放IIR滤波器

N. Onizawa, S. Koshita, T. Hanyu
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引用次数: 8

摘要

本文介绍了一种基于随机计算的缩放IIR滤波器。随机IIR滤波器可以提供一个面积高效的硬件实现,用一个简单的逻辑门取代传统实现中使用的乘法器。然而,由于随机计算在-1到1之间表示有限的实值,因此它严重受到内部值溢出的影响,这大大降低了随机IIR滤波器的性能。为了保持内部值在-1到1之间,所提出的随机IIR滤波器利用基于L∞范数的缩放方法。输入信号按比例系数按比例减小,然后在反馈回路块后按比例增大,以提供所需的信号幅度。作为设计实例,设计了基于随机计算的二阶低通IIR滤波器,并在MATLAB中进行了仿真。所提出的缩放随机IIR滤波器提供了与理想浮点IIR滤波器相似的响应,而没有缩放的随机IIR滤波器使信号幅度降低了19.2 dB,频率低于期望的截止频率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scaled IIR filter based on stochastic computation
This paper introduces a scaled IIR filter based on stochastic computation. The stochastic IIR filter can provide an area-efficient hardware implementation that replaces a multiplier used in a traditional implementation by a simple logic gate. However, it strongly suffers from overflow of internal values as stochastic computation represents limited real values within -1 to 1, which significantly degrades the performance of the stochastic IIR filter. In order to maintain internal values within -1 to 1, the proposed stochastic IIR filter exploits a scaling method based on an L∞ norm. An input signal is scaled down by a scaling coefficient and then is scaled up after a feedback-loop block to provide a signal amplitude desired. As a design example, second-order low-pass IIR filters based on stochastic computation are designed and simulated in MATLAB. The proposed scaled stochastic IIR filter provides a similar response to an ideal floating-point IIR filter while a stochastic IIR filter without scaling degrades a signal amplitude by 19.2 dB with a frequency lower than a desired cutoff frequency.
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