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Preconditioned projection methods for recursive least-squares computations

机译:递归最小二乘计算的预处理投影方法

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Abstract: Recursive least square (RLS) estimations are used extensively in many signal processing and control applications. The least squares estimator w(t) can be found by solving a linear matrix system A(t)w(t) $EQ d(t) at each adaptive time step t. In this paper, we consider block RLS computations. Our approach is to employ Galerkin projection methods to solve the linear systems. The method generates a Krylov subspace from a set of direction vectors obtained by solving one of the systems and then projects the residuals of other systems orthogonally onto the generated Krylov subspace to get the approximate solutions. The whole process is repeated until all the systems are solved. Both the exponential data weighting infinite memory method and finite memory sliding data window method are used to formulate the equations. In order to speed up the convergence rate of the method, FFT-based preconditioners are also employed. Numerical results are reported to illustrate the effectiveness of the Galerkin projection method for RLS computations. !20
机译:摘要:递归最小二乘(RLS)估计广泛用于许多信号处理和控制应用中。最小二乘估计量w(t)可以通过在每个自适应时间步长t求解线性矩阵系统A(t)w(t)$ EQ d(t)来找到。在本文中,我们考虑了块RLS计算。我们的方法是采用Galerkin投影方法来求解线性系统。该方法从通过求解一个系统获得的一组方向矢量中生成一个Krylov子空间,然后将其他系统的残差正交投影到生成的Krylov子空间上以获得近似解。重复整个过程,直到解决了所有系统。指数数据加权无限存储方法和有限存储滑动数据窗口方法均用于公式。为了加快该方法的收敛速度,还采用了基于FFT的预处理器。报告了数值结果,以说明Galerkin投影方法对RLS计算的有效性。 !20

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