The parameter estimation algorithms based on the dynamical response measurement data

This article studies the parameter estimation to the system response from the discrete measurement data. By constructing the dynamical rolling cost functions and using the nonlinear optimization, the gradient identification method is presented for estimating the parameters of the sine response signal with double frequency. In order to overcome the difficulty for determining the step size and deduce the influence of noises, the stochastic gradient identification method is derived to estimate the signal parameters. For the purpose of improving the accuracy, a multi-innovation stochastic gradient parameter estimation algorithm is presented using the moving window data. Finally, the simulation examples are provided to test the algorithm performance.

[1]  W. R. Witkowski,et al.  Approximation of parameter uncertainty in nonlinear optimization-based parameter estimation schemes , 1993 .

[2]  Sirish L. Shah,et al.  Identification from step responses with transient initial conditions , 2008 .

[3]  Giuseppe Fedele A new method to estimate a first-order plus time delay model from step response , 2009, J. Frankl. Inst..

[4]  Feng Ding,et al.  Several multi-innovation identification methods , 2010, Digit. Signal Process..

[5]  Feng Ding,et al.  Performance analysis of the auxiliary models based multi-innovation stochastic gradient estimation algorithm for output error systems , 2010, Digit. Signal Process..

[6]  Feng Ding,et al.  Multi-innovation Extended Stochastic Gradient Algorithm and Its Performance Analysis , 2010, Circuits Syst. Signal Process..

[7]  Feng Ding,et al.  Parameter estimation with scarce measurements , 2011, Autom..

[8]  Alexander Medvedev,et al.  Laguerre domain identification of continuous linear time delay systems from impulse response data , 2011 .

[9]  F. Ding Hierarchical multi-innovation stochastic gradient algorithm for Hammerstein nonlinear system modeling , 2013 .

[10]  Ling Xu,et al.  A proportional differential control method for a time-delay system using the Taylor expansion approximation , 2014, Appl. Math. Comput..

[11]  Yu Guo,et al.  Robust adaptive parameter estimation of sinusoidal signals , 2015, Autom..

[12]  Yu Guo,et al.  Robust adaptive estimation of nonlinear system with time‐varying parameters , 2015 .

[13]  Feng Ding,et al.  Recursive parameter and state estimation for an input nonlinear state space system using the hierarchical identification principle , 2015, Signal Process..

[14]  Ling Xu,et al.  Parameter estimation and controller design for dynamic systems from the step responses based on the Newton iteration , 2015 .

[15]  Ling Xu,et al.  Application of the Newton iteration algorithm to the parameter estimation for dynamical systems , 2015, J. Comput. Appl. Math..

[16]  Wei Zhang,et al.  Improved least squares identification algorithm for multivariable Hammerstein systems , 2015, J. Frankl. Inst..

[17]  Chunling Fan,et al.  The order recurrence quantification analysis of the characteristics of two-phase flow pattern based on multi-scale decomposition , 2015 .

[18]  Raja Muhammad Asif Zahoor,et al.  Two-stage fractional least mean square identification algorithm for parameter estimation of CARMA systems , 2015, Signal Process..

[19]  F. Ding,et al.  Convergence of the auxiliary model-based multi-innovation generalized extended stochastic gradient algorithm for Box–Jenkins systems , 2015 .

[20]  F. Ding,et al.  Multi-innovation stochastic gradient identification for Hammerstein controlled autoregressive autoregressive systems based on the filtering technique , 2015 .

[21]  Guido Herrmann,et al.  Robust adaptive finite‐time parameter estimation and control for robotic systems , 2015 .

[22]  F. Ding,et al.  Convergence of the recursive identification algorithms for multivariate pseudo‐linear regressive systems , 2016 .

[23]  Dongqing Wang,et al.  Hierarchical parameter estimation for a class of MIMO Hammerstein systems based on the reframed models , 2016, Appl. Math. Lett..

[24]  F. Ding,et al.  Modelling and multi-innovation parameter identification for Hammerstein nonlinear state space systems using the filtering technique , 2016 .

[25]  Wan Xiangkui,et al.  A T-wave alternans assessment method based on least squares curve fitting technique , 2016 .

[26]  Simon X. Yang,et al.  Adaptive Sliding Mode Control for Depth Trajectory Tracking of Remotely Operated Vehicle with Thruster Nonlinearity , 2016, Journal of Navigation.

[27]  Ling Xu,et al.  The damping iterative parameter identification method for dynamical systems based on the sine signal measurement , 2016, Signal Process..

[28]  F. Ding,et al.  Filtering-based iterative identification for multivariable systems , 2016 .

[29]  Cheng Wang,et al.  Novel recursive least squares identification for a class of nonlinear multiple-input single-output systems using the filtering technique , 2016 .

[30]  F. Ding,et al.  Performance analysis of the generalised projection identification for time-varying systems , 2016 .

[31]  Feng Ding,et al.  Combined state and multi-innovation parameter estimation for an input non-linear state-space system using the key term separation , 2016 .

[32]  Qingxia Li,et al.  Array Factor Forming for Image Reconstruction of One-Dimensional Nonuniform Aperture Synthesis Radiometers , 2016, IEEE Geoscience and Remote Sensing Letters.

[33]  Feng Ding,et al.  Novel data filtering based parameter identification for multiple-input multiple-output systems using the auxiliary model , 2016, Autom..

[34]  Feng Ding,et al.  Recursive Parameter Estimation Algorithms and Convergence for a Class of Nonlinear Systems with Colored Noise , 2016, Circuits Syst. Signal Process..

[35]  Jian Pan,et al.  Image noise smoothing using a modified Kalman filter , 2016, Neurocomputing.

[36]  Feng Ding,et al.  The auxiliary model based hierarchical gradient algorithms and convergence analysis using the filtering technique , 2016, Signal Process..

[37]  Feng Ding,et al.  Recursive least squares algorithm and gradient algorithm for Hammerstein–Wiener systems using the data filtering , 2016 .

[38]  Hao Wu,et al.  An adaptive confidence limit for periodic non-steady conditions fault detection , 2016 .

[39]  Xiang Cao,et al.  Multi-AUV Target Search Based on Bioinspired Neurodynamics Model in 3-D Underwater Environments , 2016, IEEE Transactions on Neural Networks and Learning Systems.

[40]  Feng Ding,et al.  A novel parameter separation based identification algorithm for Hammerstein systems , 2016, Appl. Math. Lett..

[41]  Dongqing Wang,et al.  Recursive maximum likelihood identification method for a multivariable controlled autoregressive moving average system , 2016, IMA J. Math. Control. Inf..

[42]  Feng Ding,et al.  Convergence Analysis of the Hierarchical Least Squares Algorithm for Bilinear-in-Parameter Systems , 2016, Circuits Syst. Signal Process..

[43]  Yide Wang,et al.  Fault diagnosis method based on FFT-RPCA-SVM for Cascaded-Multilevel Inverter. , 2016, ISA transactions.

[44]  Feng Ding,et al.  Joint Estimation of States and Parameters for an Input Nonlinear State-Space System with Colored Noise Using the Filtering Technique , 2016, Circuits Syst. Signal Process..

[45]  Feng Ding,et al.  Parameter estimation algorithms for dynamical response signals based on the multi-innovation theory and the hierarchical principle , 2017, IET Signal Process..

[46]  Jefferson G. Melo,et al.  A Newton conditional gradient method for constrained nonlinear systems , 2016, J. Comput. Appl. Math..

[47]  Zhen Zhang,et al.  Maximum likelihood estimation method for dual-rate Hammerstein systems , 2017 .

[48]  Nan Zhao,et al.  Android-based mobile educational platform for speech signal processing , 2017 .

[49]  Feng Ding,et al.  Recursive Least Squares and Multi-innovation Stochastic Gradient Parameter Estimation Methods for Signal Modeling , 2017, Circuits Syst. Signal Process..

[50]  Jing Na,et al.  Improving transient performance of adaptive control via a modified reference model and novel adaptation , 2017 .

[51]  Feng Ding,et al.  Joint state and multi-innovation parameter estimation for time-delay linear systems and its convergence based on the Kalman filtering , 2017, Digit. Signal Process..

[52]  Feng Ding,et al.  The Gradient-Based Iterative Estimation Algorithms for Bilinear Systems with Autoregressive Noise , 2017, Circuits, Systems, and Signal Processing.

[53]  Jing Chen,et al.  Hierarchical identification for multivariate Hammerstein systems by using the modified Kalman filter , 2017 .

[54]  F. Ding,et al.  Least-squares-based iterative and gradient-based iterative estimation algorithms for bilinear systems , 2017 .

[55]  Feng Ding,et al.  A multi-innovation state and parameter estimation algorithm for a state space system with d-step state-delay , 2017, Signal Process..

[56]  Xiang Cao,et al.  Multi-AUV task assignment and path planning with ocean current based on biological inspired self-organizing map and velocity synthesis algorithm , 2017, Intell. Autom. Soft Comput..

[57]  F. Ding,et al.  Recasted models-based hierarchical extended stochastic gradient method for MIMO nonlinear systems , 2017 .

[58]  Simon X. Yang,et al.  Observer-Based Adaptive Neural Network Trajectory Tracking Control for Remotely Operated Vehicle , 2017, IEEE Transactions on Neural Networks and Learning Systems.

[59]  Wei Xing Zheng,et al.  Parameter estimation algorithms for Hammerstein output error systems using Levenberg-Marquardt optimization method with varying interval measurements , 2017, J. Frankl. Inst..

[60]  Jianqiang Pan,et al.  A filtering based multi-innovation extended stochastic gradient algorithm for multivariable control systems , 2017 .

[61]  Feng Ding,et al.  Hierarchical Stochastic Gradient Algorithm and its Performance Analysis for a Class of Bilinear-in-Parameter Systems , 2017, Circuits Syst. Signal Process..

[62]  Feng Ding,et al.  The maximum likelihood least squares based iterative estimation algorithm for bilinear systems with autoregressive moving average noise , 2017, J. Frankl. Inst..

[63]  T. Hayat,et al.  Parameter estimation for pseudo-linear systems using the auxiliary model and the decomposition technique , 2017 .

[64]  Feng Ding,et al.  Decomposition based least squares iterative identification algorithm for multivariate pseudo-linear ARMA systems using the data filtering , 2017, J. Frankl. Inst..

[65]  Feng Ding,et al.  Multiperiodicity and Exponential Attractivity of Neural Networks with Mixed Delays , 2017, Circuits Syst. Signal Process..