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An adaptive LS algorithm based on orthogonal Householder transformations

机译:基于正交Householder变换的自适应LS算法

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This paper presents an adaptive exponentially weighted algorithm for least squares (LS) system identification. The algorithm updates an inverse "square root" factor of the input data correlation matrix, by applying numerically robust orthogonal Householder transformations. The scheme avoids, almost entirely, costly square roots and divisions (present in other numerically well behaved adaptive LS schemes) and provides directly the estimates of the unknown system coefficients. Furthermore, it offers enhanced parallelism, which leads to efficient implementations. A square array architecture for implementing the new algorithm, which comprises simple operating blocks, is described. The numerically robust behaviour of the algorithm is demonstrated through simulations.
机译:本文提出了一种用于最小二乘(LS)系统识别的自适应指数加权算法。该算法通过应用数值鲁棒的正交Householder变换来更新输入数据相关矩阵的逆“平方根”因子。该方案几乎完全避免了昂贵的平方根和除法(存在于其他数值上表现良好的自适应LS方案中),并直接提供了未知系统系数的估计值。此外,它提供了增强的并行性,从而导致了高效的实现。描述了一种用于实现新算法的方阵架构,该架构包括简单的操作块。通过仿真证明了该算法在数值上的鲁棒性。

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