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Low-Power Hardware Implementation of Least-Mean-Square Adaptive Filters Using Approximate Arithmetic

机译:使用近似算法的最小均方自适应滤波器的低功耗硬件实现

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摘要

Adaptive filters based on least-mean-square (LMS) algorithm are used in several applications in virtue of their good steady-state performance, numerical stability, and acceptable computational complexity. The hardware implementation of LMS filters requires a massive number of multipliers that significantly impact on the power consumption. Approximate computing, a design technique that trades off computation accuracy for better electrical performance, is a way to improve the energy efficiency of LMS filters. In this paper, we implement state-of-the-art approximate multipliers and evaluate their impact on the performance of the LMS algorithm. Moreover, a novel approximate multiplier, whose accuracy can be tuned at design time to better adapt to the application scenario, is proposed. Implementation results in 28-nm CMOS technology allow us to investigate the power versus quality trade-off of the considered LMS approximate filters in two different applications.
机译:基于最小均方(LMS)算法的自适应滤波器因其良好的稳态性能,数值稳定性和可接受的计算复杂性而在多种应用中使用。 LMS滤波器的硬件实现需要大量的乘法器,这些乘法器会严重影响功耗。近似计算是一种权衡计算精度以获得更好电气性能的设计技术,它是提高LMS滤波器能效的一种方法。在本文中,我们实现了最新的近似乘法器,并评估了它们对LMS算法性能的影响。此外,提出了一种新颖的近似乘法器,其精度可以在设计时进行调整以更好地适应应用场景。 28 nm CMOS技术的实施结果使我们能够研究两种不同应用中考虑的LMS近似滤波器的功率与质量之间的权衡。

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