Energy-Efficient High-Order FIR Filtering through Reconfigurable Stochastic Processing (Abstract Only)

Mohammed Alawad, Mingjie Lin
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Abstract

High-order FIR filtering is widely used in many important DSP applications in order to achieve filtering stability and linear-phase property. This paper presents a hardware- and energy-efficient approach to implementing energy-efficient high-order FIR filtering through reconfigurable stochastic processing. We exploit a basic probabilistic principle of summing independent random variables to achieve approximate FIR filtering without costly multiplications. Our new multiplierless approach has two distinctive advantages when compared with the conventional multiplier-based or DA-based FIR filtering methods. First, our new probabilistic architecture is especially effective for high-order FIR filtering because it bypasses costly multiplications and does not rely on large size of memory to store store pre-computed coefficient products. Second, this new probabilistic convolver is significantly more robust or fault tolerant than the conventional architecture because all signal values will be represented and computed probabilistically, and local signal corruption can not easily destroy the overall probabilistic patterns, therefore achieving much higher error tolerance. For example, our proposed approach allows our proposed FIR architecture, for a standard 128-tap FIR filter, to achieve about 9 times and 4 times less power consumption than the conventional multiplier-based and DA-based design, respectively. Additionally, when compared with the state-of-the-art systolic DA-based design, our design can achieve about 3 times reduction in hardware usage.
基于可重构随机处理的高能效FIR滤波(摘要)
高阶FIR滤波被广泛应用于许多重要的DSP应用中,以实现滤波的稳定性和线性相位特性。本文提出了一种硬件节能的方法,通过可重构随机处理实现高能效FIR滤波。我们利用独立随机变量求和的基本概率原理来实现近似FIR滤波,而不需要昂贵的乘法。与传统的基于乘法器或基于数据的FIR滤波方法相比,我们的无乘法器滤波方法有两个明显的优点。首先,我们的新概率架构对于高阶FIR滤波特别有效,因为它绕过了昂贵的乘法,并且不依赖于大容量的内存来存储预先计算的系数乘积。其次,这种新的概率卷积器比传统架构具有更强的鲁棒性或容错性,因为所有信号值都将以概率方式表示和计算,并且局部信号损坏不会轻易破坏整体概率模式,因此具有更高的容错性。例如,我们提出的方法允许我们提出的FIR架构,对于一个标准的128分接FIR滤波器,实现的功耗分别比传统的基于乘法器和基于数据分析的设计低9倍和4倍。此外,与最先进的基于收缩数据的设计相比,我们的设计可以实现硬件使用减少约3倍。
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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