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Set-theoretic estimation based on a priori knowledge of the noise distribution

机译:基于噪声分布的先验知识的集合理论估计

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摘要

A new algorithm for estimation of a linear-in-parameters model is developed and tested by simulation. The method is based on the assumption of independent, identically distributed noise samples with a triangular density function. Such a noise model well approximates the symmetrically distributed sources of noise frequently encountered in practice, and the inclusion of a distribution assumption allows the computation of a pseudo-mean estimate to complement the set solution. The proposed algorithm recursively incorporates incoming observations with decreasing computational complexity as the number of updates increases. Simulations demonstrate that the algorithm has very favorable convergence rates and estimation accuracy and is very robust to deviations from the assumed noise properties. Comparisons with other set-theoretic algorithms and with conventional RLS are given.
机译:开发了一种用于估计参数线性模型的新算法,并通过仿真对其进行了测试。该方法基于具有三角密度函数的独立,相同分布的噪声样本的假设。这样的噪声模型很好地逼近了实践中经常遇到的对称分布的噪声源,并且通过包含分布假设,可以计算伪均值估计值以补充设置的解决方案。所提出的算法以递归方式并入了随着更新次数增加而具有降低的计算复杂度的输入观测值。仿真表明,该算法具有非常好的收敛速度和估计精度,并且对于偏离假定噪声特性的偏差非常鲁棒。给出了与其他集合理论算法和常规RLS的比较。

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