A method for adaptive identification of reduced-order models for continuous stable SISO and MIMO plants is presented. The method recursively finds a model whose transfer function (matrix) matches that of the plant on a set of frequencies chosen by the designer. The algorithm utilizes the Moving Discrete Fourier Transform (MDFT) to continuously monitor the frequency-domain profile of the system input and output signals. The MDFT is an efficient method of monitoring discrete points in the frequency domain of an evolving function of time. The model parameters are estimated from MDFT data using standard recursive parameter estimation techniques. The algorithm has been shown in simulations to be quite robust to additive noise in the inputs and o...
Several important problems in the fields of signal processing and model identification, such as syst...
The adaptation of causal FIR digital filters in the discrete frequency domain is considered, and it ...
This thesis begins by applying Lagrange interpolation to linear systems theory. More specifically, ...
A new iOFR-MF (iterative orthogonal forward regression--modulating function) algorithm is proposed t...
ABSTRACT: A computer-aided method for simplification and identification of linear discrete systems v...
Weighted least squares (WLS) and adaptive weighted least squares (AWLS) algorithms are initiated for...
AbstractCondensation model reduction theory, a method of degree-of-freedom-elimination for semi-disc...
Linear Multi-Input Multi-Output (MIMO) dynamic models can be identified, with no a priori knowledge ...
Linear Multi-Input Multi-Output (MIMO) dynamic models can be identified, with no a priori knowledge ...
Linear Multi-Input Multi-Output (MIMO) dynamic models can be identified, with no a priori knowledge ...
A novel method for reducing the order of discrete time systems is developed. This model reduction te...
This paper proposes a hybrid adaptive sampling algorithm to automate the generation of reduced order...
Frequency domain methods are known to suffer from a poor numerical conditioning when the frequency s...
This paper presents a technique for automatically extracting analytical behavioral models from the n...
Thesis (S.M.)--Massachusetts Institute of Technology, Computation for Design and Optimization Progra...
Several important problems in the fields of signal processing and model identification, such as syst...
The adaptation of causal FIR digital filters in the discrete frequency domain is considered, and it ...
This thesis begins by applying Lagrange interpolation to linear systems theory. More specifically, ...
A new iOFR-MF (iterative orthogonal forward regression--modulating function) algorithm is proposed t...
ABSTRACT: A computer-aided method for simplification and identification of linear discrete systems v...
Weighted least squares (WLS) and adaptive weighted least squares (AWLS) algorithms are initiated for...
AbstractCondensation model reduction theory, a method of degree-of-freedom-elimination for semi-disc...
Linear Multi-Input Multi-Output (MIMO) dynamic models can be identified, with no a priori knowledge ...
Linear Multi-Input Multi-Output (MIMO) dynamic models can be identified, with no a priori knowledge ...
Linear Multi-Input Multi-Output (MIMO) dynamic models can be identified, with no a priori knowledge ...
A novel method for reducing the order of discrete time systems is developed. This model reduction te...
This paper proposes a hybrid adaptive sampling algorithm to automate the generation of reduced order...
Frequency domain methods are known to suffer from a poor numerical conditioning when the frequency s...
This paper presents a technique for automatically extracting analytical behavioral models from the n...
Thesis (S.M.)--Massachusetts Institute of Technology, Computation for Design and Optimization Progra...
Several important problems in the fields of signal processing and model identification, such as syst...
The adaptation of causal FIR digital filters in the discrete frequency domain is considered, and it ...
This thesis begins by applying Lagrange interpolation to linear systems theory. More specifically, ...