Kernel Normalised Least Mean Squares with Delayed Model Adaptation

Nicholas J. Fraser, P. Leong
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Abstract

Kernel adaptive filters (KAFs) are non-linear filters which can adapt temporally and have the additional benefit of being computationally efficient through use of the “kernel trick”. In a number of real-world applications, such as channel equalisation, the non-linear mapping provides significant improvements over conventional linear techniques such as the least mean squares (LMS) and recursive least squares (RLS) algorithms. Prior works have focused mainly on the theory and accuracy of KAFs, with little research on their implementations. This article proposes several variants of algorithms based on the kernel normalised least mean squares (KNLMS) algorithm which utilise a delayed model update to minimise dependencies. Subsequently, this work proposes corresponding hardware architectures which utilise this delayed model update to achieve high sample rates and low latency while also providing high modelling accuracy. The resultant delayed KNLMS (DKNLMS) algorithms can achieve clock rates up to 12× higher than the standard KNLMS algorithm, with minimal impact on accuracy and stability. A system implementation achieves 250 GOps/s and a throughput of 187.4 MHz on an Ultra96 board with 1.8× higher throughput than previous state of the art.
延迟模型自适应核归一化最小均二
核自适应滤波器(KAFs)是一种非线性滤波器,它可以适应时间,并且通过使用“核技巧”具有计算效率的额外好处。在许多现实世界的应用中,例如信道均衡,非线性映射比传统的线性技术(如最小均方(LMS)和递归最小二乘(RLS)算法)提供了显著的改进。以前的工作主要集中在KAFs的理论和准确性上,很少研究它们的实现。本文提出了基于核归一化最小均方(KNLMS)算法的几种变体算法,该算法利用延迟模型更新来最小化依赖关系。随后,本工作提出了相应的硬件架构,利用这种延迟模型更新来实现高采样率和低延迟,同时还提供高建模精度。由此产生的延迟KNLMS (DKNLMS)算法可以实现比标准KNLMS算法高12倍的时钟速率,对精度和稳定性的影响最小。该系统在Ultra96板上实现了250 GOps/s和187.4 MHz的吞吐量,吞吐量比以前的技术水平高1.8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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