Experiment design for impulse response identification with signal matrix models

This paper formulates an input design approach for impulse response identification in the context of implicit model representations recently used as basis for many data-driven simulation and control methods. Precisely, the FIR model considered consists of a linear combination of the columns of a data matrix. An optimal combination for the case of noisy data was recently proposed using a maximum likelihood approach, and the objective here is to optimize the input entries of the data matrix such that the mean-square error matrix of the estimate is minimized. A least-norm problem is derived, which is shown to solve all the classic A-, D-, and E- optimality criteria typically considered in the experiment design literature. Numerical results finally showcase the improved estimation fit achieved with the optimized input.

[1]  Håkan Hjalmarsson,et al.  Input design via LMIs admitting frequency-wise model specifications in confidence regions , 2005, IEEE Transactions on Automatic Control.

[2]  Tianshi Chen,et al.  On Input Design for Regularized LTI System Identification: Power-constrained Input , 2017, Autom..

[3]  Henrik Ohlsson,et al.  On the estimation of transfer functions, regularizations and Gaussian processes - Revisited , 2012, Autom..

[4]  Raman K. Mehra,et al.  Optimal input signals for parameter estimation in dynamic systems--Survey and new results , 1974 .

[5]  Lennart Ljung,et al.  System Identification: Theory for the User , 1987 .

[6]  Lorenz T. Biegler,et al.  On the implementation of an interior-point filter line-search algorithm for large-scale nonlinear programming , 2006, Math. Program..

[7]  Norman R. Draper,et al.  An overview of design of experiments , 1996 .

[8]  Giuseppe De Nicolao,et al.  A new kernel-based approach for linear system identification , 2010, Autom..

[9]  Mingzhou Yin,et al.  Maximum Likelihood Estimation in Data-Driven Modeling and Control , 2021, IEEE Transactions on Automatic Control.

[10]  Nelson L. C. Chui,et al.  Criteria for informative experiments with subspace identification , 2005 .

[11]  Paolo Rapisarda,et al.  Data-driven simulation and control , 2008, Int. J. Control.

[12]  Graham C. Goodwin,et al.  Dynamic System Identification: Experiment Design and Data Analysis , 2012 .

[13]  Bart De Moor,et al.  A note on persistency of excitation , 2005, 2004 43rd IEEE Conference on Decision and Control (CDC) (IEEE Cat. No.04CH37601).

[14]  J. Willems,et al.  DATA DRIVEN SIMULATION WITH APPLICATIONS TO SYSTEM IDENTIFICATION , 2005 .

[15]  Toshiharu Sugie,et al.  Informative input design for Kernel-Based system identification , 2018, Autom..