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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers >Combined high-order algorithms in robust least-squares estimation with harmonic regressor and strictly diagonally dominant information matrix
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Combined high-order algorithms in robust least-squares estimation with harmonic regressor and strictly diagonally dominant information matrix

机译:谐波回归和严格对角占优信息矩阵的鲁棒最小二乘估计的组合高阶算法

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摘要

This article describes new high-order algorithms in the least-squares problem with harmonic regressor and strictly diagonally dominant information matrix. Estimation accuracy and the number of steps to achieve this accuracy are controllable in these algorithms. Simplified forms of the high-order matrix inversion algorithms and the high-order algorithms of direct calculation of the parameter vector are found. The algorithms are presented as recursive procedures driven by estimation errors multiplied by the gain matrices, which can be seen as preconditioners. A simple and recursive (with respect to order) algorithm for update of the gain matrix, which is associated with Neumann series, is found. It is shown that the limiting form of the algorithm (algorithm of infinite order) provides perfect estimation. A new form of the gain matrix is also a basis for unification method of high-order algorithms. New combined and fast convergent high-order algorithms of recursive matrix inversion and algorithms of direct calculation of the parameter vector are presented. The stability of algorithms is proved and explicit transient bound on estimation error is calculated. New algorithms are simple, fast and robust with respect to round-off error accumulation.
机译:本文介绍了在最小二乘问题中具有谐波回归和严格对角占优信息矩阵的新高阶算法。在这些算法中,估计精度和达到该精度的步骤数是可控制的。找到了高阶矩阵求逆算法的简化形式和直接计算参数向量的高阶算法。该算法以递归程序的形式表示,该程序由估计误差乘以增益矩阵驱动,可以看作是前置条件。找到了一种与Neumann级数关联的简单且递归(相对于阶数)的增益矩阵更新算法。结果表明,该算法的限制形式(无穷次算法)提供了理想的估计。增益矩阵的一种新形式也是高阶算法统一方法的基础。提出了递归矩阵求逆的新的组合快速收敛高阶算法和参数向量直接计算算法。证明了算法的稳定性,并计算了估计误差的显式瞬态边界。关于舍入误差累积,新算法简单,快速且健壮。

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