The parameter estimation algorithms based on the dynamical response measurement data
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[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..