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Hierarchical algorithm for the identification of parameter estimation of linear system

机译:线性系统参数估计辨识的递阶算法

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A novel technique to identification of autoregressive moving average (ARMA)systems is proposed to increase the accuracy and speed of convergence for the system identification. The convergence speed of recursive least square algorithm (RLS) is solved under differential equations that needs all necessary information about the asymptotic behavior. Using RLS estimation, the convergence of parameters is able to the true values if the data of information vector growing to infinite. Therefore, the convergence of the parameters of the RLS algorithm takes time or needs a large number of sampling. In order to improve the accuracy and convergence speed of the estimated parameters, we propose a technique that modifies the QARXNN model by running two steps to identify the system hierarchically. The proposed method performs two steps: first, the system is identified by least square error (LSE) algorithm. Second, performs multi-input multi-output feedforward neural networks (MIMO-NN) to refine the estimated parameters by updating the parameters based on the residual error of LSE. The residual error by using LSE is set as target output to train NN. Finally, we illustrate and verify the proposed technique with an experimental studies. The proposed method can find the estimated parameters faster with = 0.935129 % in tenth sampling. The results is almost consistence which the accuracy of the identified parameters did not change significantly with the increasing number of sampling or the number of data points.
机译:提出了一种识别自回归移动平均(ARMA)系统的新技术,以提高收敛速度和收敛速度。在需要有关渐近行为的所有必要信息的微分方程下,求解最小二乘递归最小二乘算法(RLS)的收敛速度。使用RLS估计,如果信息向量的数据增长到无限,则参数的收敛能够达到真值。因此,RLS算法的参数收敛需要时间或需要大量采样。为了提高估计参数的准确性和收敛速度,我们提出了一种通过运行两个步骤以分级识别系统的方法来修改QARXNN模型的技术。所提出的方法执行两个步骤:首先,通过最小二乘误差(LSE)算法识别系统。其次,执行多输入多输出前馈神经网络(MIMO-NN),以通过基于LSE的残留误差更新参数来优化估计的参数。通过使用LSE的残余误差被设置为训练NN的目标输出。最后,我们通过实验研究来说明和验证所提出的技术。所提出的方法可以在第十次采样中以0.935129%的速度更快地找到估计的参数。结果几乎是一致的,所识别的参数的准确性不会随着采样数量或数据点数量的增加而显着变化。

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