近似乘法器在LMS自适应滤波器中的应用

D. Esposito, G. Meo, D. Caro, N. Petra, E. Napoli, A. Strollo
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引用次数: 7

摘要

近似计算放宽了算法精度的限制,提高了数字电路的性能。基于最小均方(LMS)算法的自适应滤波器是许多DSP应用的标准。LMS算法是维纳滤波器的近似值,本质上是不精确的,并且为采用近似硬件技术提供了肥沃的土壤,并且存在与系数更新反馈路径相关的额外挑战。本文首次利用近似乘法器对近似LMS自适应滤波器进行了探索。采用系统识别场景对算法行为进行评估。分析表明,近似乘法器拓扑的选择应慎重考虑,否则会影响算法的稳定性和收敛性能。我们提出了一种新的近似乘法器,能够在可容忍的收敛误差退化下将自适应LMS滤波器的功耗降低到29%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Use of Approximate Multipliers in LMS Adaptive Filters
Approximate computing relaxes algorithm precision constraints to improve digital circuit performance. Adaptive filters based on least-mean-square (LMS) algorithm constitute a standard in many DSP applications. The LMS algorithm, being an approximation of the Wiener filter, is inherently imprecise, and constitutes a fertile ground to employ approximate hardware techniques with the additional challenge related to the presence of a feedback path for coefficients update. In this paper, approximate LMS adaptive filters are explored for the first time, by employing approximate multipliers. A system identification scenario is adopted to assess the algorithm behavior. The analysis reveals that the choice of the approximate multiplier topology should be carefully examined, otherwise the stability and convergence performance of the algorithm can be compromised. We propose a novel approximate multiplier able to reduce the power dissipation in adaptive LMS filters up to 29% with tolerable convergence error degradation.
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