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A class of square root and division free algorithms and architectures for QRD-based adaptive signal processing

机译:基于QRD的自适应信号处理的一类平方根和无除法算法和体系结构

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The least squares (LS) minimization problem constitutes the core of many real-time signal processing problems, such as adaptive filtering, system identification and adaptive beamforming. Recently efficient implementations of the recursive least squares (RLS) algorithm and the constrained recursive least squares (CRLS) algorithm based on the numerically stable QR decomposition (QRD) have been of great interest. Several papers have proposed modifications to the rotation algorithm that circumvent the square root operations and minimize the number of divisions that are involved in the Givens rotation. It has also been shown that all the known square root free algorithms are instances of one parametric algorithm. Recently, a square root free and division free algorithm has also been proposed. In this paper, we propose a family of square root and division free algorithms and examine its relationship with the square root free parametric family. We choose a specific instance for each one of the two parametric algorithms and make a comparative study of the systolic structures based on these two instances, as well as the standard Givens rotation. We consider the architectures for both the optimal residual computation and the optimal weight vector extraction. The dynamic range of the newly proposed algorithm for QRD-RLS optimal residual computation and the wordlength lower bounds that guarantee no overflow are presented. The numerical stability of the algorithm is also considered. A number of obscure points relevant to the realization of the QRD-RLS and the QRD-CRLS algorithms are clarified. Some systolic structures that are described in this paper are very promising, since they require less computational complexity (in various aspects) than the structures known to date and they make the VLSI implementation easier.
机译:最小二乘(LS)最小化问题构成了许多实时信号处理问题的核心,例如自适应滤波,系统识别和自适应波束成形。最近,基于数值稳定QR分解(QRD)的递归最小二乘(RLS)算法和约束递归最小二乘(CRLS)算法的有效实现引起了人们的极大兴趣。几篇论文提出了对旋转算法的修改,这种算法可以绕开平方根运算,并最大程度地减少Givens旋转所涉及的除法数。还已经表明,所有已知的平方根自由算法都是一个参数算法的实例。最近,还提出了平方根无和除法算法。在本文中,我们提出了平方根和无除法算法族,并研究了其与平方根和无参参数族的关系。我们为两种参数算法中的每一种选择一个特定的实例,并基于这两个实例以及标准的Givens旋转对收缩结构进行比较研究。我们考虑用于最优残差计算和最优权向量提取的体系结构。提出了新提出的QRD-RLS最优残差计算算法的动态范围和保证无溢出的字长下限。还考虑了算法的数值稳定性。阐明了许多与QRD-RLS和QRD-CRLS算法的实现有关的模糊点。本文中描述的某些收缩结构非常有前途,因为它们所需的计算复杂度(在各个方面)都比迄今已知的结构少,并且它们使VLSI的实现更加容易。

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