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Iterative Parameter Estimation for Signal Models Based on Measured Data

机译:基于实测数据的信号模型迭代参数估计

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摘要

This paper studies the modeling of multi-frequency signals based on measured data. With the use of the hierarchical identification principle and the iterative search, several iterative parameter estimation algorithms are derived for the signal models with the known frequencies and the unknown frequencies. For the multi-frequency signals, the hierarchical estimation algorithms are derived by means of parameter decomposition. Through the decomposition, the original optimization problem is transformed into the combination of the nonlinear optimization and the linear optimization problems. The simulation results show that the proposed hierarchical algorithms have better performance than the overall estimation algorithms without parameter decomposition.
机译:本文研究了基于实测数据的多频信号建模。利用分层识别原理和迭代搜索,针对已知频率和未知频率的信号模型,推导了几种迭代参数估计算法。对于多频信号,通过参数分解得出层次估计算法。通过分解,将原来的优化问题转化为非线性优化和线性优化问题的组合。仿真结果表明,所提出的分层算法比不带参数分解的整体估计算法具有更好的性能。

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