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Hierarchical recursive signal modeling for multifrequency signals based on discrete measured data

机译:基于离散测量数据的多频信号的分层递归信号建模

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This paper studies the problem of parameter estimation for the multifrequency sine signals, which have multiple characteristic parameters such as the amplitudes, phases, and frequencies. It is noted that the signal output is nonlinear with respect to the phase and frequency parameters while it is linear with respect to the amplitude parameters. This feature inspires us to separate all of the characteristic parameters into a linear parameter set and a nonlinear parameter set, where the linear set is composed of the amplitude parameters and the nonlinear set is composed of the phase parameters and the frequency parameters. After the parameter separation, two identification submodels are constructed for optimizing the linear parameter set and the nonlinear parameter set. Then the nonlinear identification model becomes a linear identification submodel and a nonlinear identification submodel. Therefore, the nonlinear optimization for minimizing the objective function is converted into the combination of the quadratic optimization and nonlinear optimization. Based on the separable identification submodels, a recursive least squares subalgorithm and a recursive gradient subalgorithm are proposed for identifying the linear parameters and nonlinear parameters, respectively. Moreover, an interactive estimation algorithm is designed to remove the related parameter sets between the subalgorithms and a hierarchical identification method is presented by combining the subalgorithms. For the purpose of tracking the time-varying, a forgetting factor is introduced to improve the convergence speed. The numerical examples are provided to qualify the performance of the proposed method based on some performance measures.
机译:本文研究了多频正弦信号的参数估计问题,其具有多个特征参数,例如幅度,阶段和频率。应注意,信号输出相对于相位和频率参数是非线性的,而相对于幅度参数是线性的。该特征激发了我们将所有特征参数分开到线性参数集和非线性参数集中,其中线性集合由幅度参数组成,并且非线性集由相位参数和频率参数组成。参数分离后,构造了两个识别子模型,用于优化线性参数集和非线性参数集。然后,非线性识别模型成为线性识别子模型和非线性识别子模型。因此,将用于最小化目标函数的非线性优化转换为二次优化和非线性优化的组合。基于可分离识别子模型,提出了一种递归最小二乘亚基和递归梯度子介质,用于分别识别线性参数和非线性参数。此外,旨在通过组合亚古镜技术来播放亚基格仪和分层识别方法之间的交互式估计算法。为了跟踪时变的目的,引入了遗忘因子以提高收敛速度。提供了数值示例以资格基于一些性能措施来符合所提出的方法的性能。

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