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Large signal-to-noise ratio quantification in MLE for ARARMAX models

机译:适用于ARARMAX模型的MLE中的大型信噪比量化

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摘要

It has been shown that closed-loop linear system identification by indirect method can be generally transferred to openloop ARARMAX (AutoRegressive AutoRegressive Moving Average with eXogenous input) estimation. For such models, the gradient-related optimisation with large enough signal-to-noise ratio (SNR) can avoid the potential local convergence in maximum likelihood estimation. To ease the application of this condition, the threshold SNR needs to be quantified. In this paper, we build the amplitude coefficient which is an equivalence to the SNR and prove the finiteness of the threshold amplitude coefficient within the stability region. The quantification of threshold is achieved by the minimisation of an elaborately designed multi-variable cost function which unifies all the restrictions on the amplitude coefficient. The corresponding algorithm based on two sets of physically realisable system input-output data details the minimisation and also points out how to use the gradient-related method to estimate ARARMAX parameters when local minimum is present as the SNR is small. Then, the algorithm is tested on a theoretical AutoRegressive Moving Average with eXogenous input model for the derivation of the threshold and a gas turbine engine real system for model identification, respectively. Finally, the graphical validation of threshold on a two-dimensional plot is discussed.
机译:已经表明,通过间接方法进行的闭环线性系统识别通常可以转换为开环ARARMAX(带有异源输入的AutoRegressive AutoRegressive移动平均)估计。对于此类模型,具有足够大的信噪比(SNR)的梯度相关优化可以避免最大似然估计中的潜在局部收敛。为了简化此条件的应用,需要对阈值SNR进行量化。在本文中,我们建立了与SNR等效的幅度系数,并证明了稳定范围内阈值幅度系数的有限性。阈值的量化是通过最小化精心设计的多变量成本函数实现的,该函数统一了对幅度系数的所有限制。基于两组可物理实现的系统输入输出数据的相应算法详细说明了最小化,并指出了当SNR较小时出现局部最小值时,如何使用梯度相关方法来估计ARARMAX参数。然后,该算法分别在具有自定义阈值推导的外源输入模型和用于模型识别的燃气轮机实际系统的理论自回归移动平均值上进行了测试。最后,讨论了二维图上阈值的图形验证。

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