基于分布式算法的块LMS自适应滤波器的功耗优化VLSI结构

Gangadharaiah S. L, C. K Narayanappa, Divya M.N, Navaneet S, Dushyant N
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引用次数: 0

摘要

在本文中,我们提出了一种基于分布式算法(DA)的块最小均方(BLMS)自适应数字滤波器(ADF)。所提出的DA BLMS架构提出了一个共享的面积效率乘法器累积块,该块在同一模块中计算部分滤波器产品和权重增量项。它还使用多路复用器(MUX)和解路复用器(DEMUX),仅将N个输入中的L传递到MAC,其中N和L分别是滤波器长度和选择的块大小,从而有助于实现DA功能并降低功耗。此外,通过能够选择要反馈的信号的非零比特部分,可以有效地截断所获得的误差和权重更新项。整个架构由单个慢时钟驱动,从而进一步降低了设备的功耗。与现有最佳的DA BLMS结构相比,根据ASIC合成,该架构的功耗降低15%,EPS降低14%,滤波器长度为N=16,块大小为L=4。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power Optimized VLSI Architecture of Distributed Arithmetic Based Block LMS Adaptive Filter
In this paper, we are presenting a power-efficient Distributed Arithmetic (DA) based Block Least Mean Square (BLMS) Adaptive Digital Filter (ADF). The proposed DA BLMS architecture proposes a shared area-efficient Multiplier Accumulate Block that calculates both the partial filter products and the weight increment terms in the same module. It also uses Multiplexers (MUX) and Demultiplexers (DEMUX) which passes only L out of N inputs, where N and L are the filter length and chosen block size respectively, into the MAC thus helping in achieving the DA functionality along with reduced power consumption. Also, efficient truncation of the obtained error and weight update terms is performed by being able to select the non-zero-bit part of the signal to be fed back. The entire architecture is driven by a single slow clock which reduces the power consumption of the device further. On comparing with the best existing DA BLMS Structures, the proposed architecture uses 15% lesser power, 14% lesser EPS according to ASIC Synthesis, and for a filter length of N=16 and a block size of L=4 respectively.
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