Weighted least squares (WLS) and adaptive weighted least squares (AWLS) algorithms are initiated for continuous-time system identification using Fourier type modulating function techniques. Two stochastic signal models are examined using the mean square properties of the stochastic calculus: an equation error signal model with white noise residuals, and a more realistic white measurement noise signal model. The covariance matrices in each model are shown to be banded and sparse, and a joint likelihood cost function is developed which links the real and imaginary parts of the modulated quantities. The superior performance of above algorithms is demonstrated by comparing them with the LS/MFT and popular predicting error method (PEM) through 2...
This valuable volume offers a systematic approach to flight vehicle system identification and covers...
The ultimate goal of system identification is the identification of possibly nonlinear systems in th...
This work studies the framework of systems with subsystems, which has numerous practical application...
Parameter estimation algorithms are developed in the frequency domain for systems modeled by input/o...
Continuing work on frequency analysis for transfer function identification is discussed. A new study...
Identification criteria are presented for linear dynamic systems with and without process noise. Wit...
System identification methods have extensive application in the aerospace industry’s experimental st...
Information is given in the form of outlines, graphs, tables and charts. Topics include system ident...
This dissertation presents closed-loop identification algorithms of an unstable system in the time a...
This dissertation presents closed-loop identification algorithms of an unstable system in the time a...
Several important problems in the fields of signal processing and model identification, such as syst...
This dissertation presents closed-loop identification algorithms of an unstable system in the time a...
Identification is a powerful technique used to build accurate models of system from noisy data. The ...
A method for adaptive identification of reduced-order models for continuous stable SISO and MIMO pla...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 1998.In...
This valuable volume offers a systematic approach to flight vehicle system identification and covers...
The ultimate goal of system identification is the identification of possibly nonlinear systems in th...
This work studies the framework of systems with subsystems, which has numerous practical application...
Parameter estimation algorithms are developed in the frequency domain for systems modeled by input/o...
Continuing work on frequency analysis for transfer function identification is discussed. A new study...
Identification criteria are presented for linear dynamic systems with and without process noise. Wit...
System identification methods have extensive application in the aerospace industry’s experimental st...
Information is given in the form of outlines, graphs, tables and charts. Topics include system ident...
This dissertation presents closed-loop identification algorithms of an unstable system in the time a...
This dissertation presents closed-loop identification algorithms of an unstable system in the time a...
Several important problems in the fields of signal processing and model identification, such as syst...
This dissertation presents closed-loop identification algorithms of an unstable system in the time a...
Identification is a powerful technique used to build accurate models of system from noisy data. The ...
A method for adaptive identification of reduced-order models for continuous stable SISO and MIMO pla...
Thesis (S.M.)--Massachusetts Institute of Technology, Dept. of Aeronautics and Astronautics, 1998.In...
This valuable volume offers a systematic approach to flight vehicle system identification and covers...
The ultimate goal of system identification is the identification of possibly nonlinear systems in th...
This work studies the framework of systems with subsystems, which has numerous practical application...