We consider the nonlinear, grey-box system identification problem. We establish an approximation of the covariance of a parameter estimate in this context, with several attractive theoretical properties. Our approximation is analogous to the inverse Fisher Information matrix, which approximates the covariance through the Cramer-Rao Lower bound. Indeed, it agrees asymptotically with the Cramer-Rao based covariance estimate in the limit of increasing data, where the theoretical assumptions necessary for both methods hold. However, our approximation requires fewer assumptions. In particular, it can be applied when the process is undermodelled, and does not require consideration of either the magnitude or form of the undermodelling. Thus our co...
Kalman filtering for linear systems is known to provide the minimum variance estimation error, under...
This thesis is concerned with drawing out high-level insight from otherwise complex mathematical mod...
In prediction error identification, the information matrix plays a central role. Specifically, when ...
Calculation of the Cramer-Rao lower bound, i.e., the inverse of the Fisher information matrix, for o...
This paper addresses the variance quantification problem for system identification based on the pred...
Estimation of parameters of linear systems is a problem often encountered in applications. The Crame...
Grey box model identification preserves known physical structures in a model but with limits to the ...
An exact formula of the inverse covariance matrix of an autoregressive stochastic process is obtaine...
The Gohberg-Heinig explicit formula for the inversion of a block-Toeplitz matrix is used to build an...
It is known that the least-squares class of algorithms produce unbiased estimates providing certain ...
Stochastic approximation methods for the identification of parameters of nonlinear systems without d...
In state reconstruction problems, the statistics of the noise affecting the state equations is often...
In prediction error identification, the information matrix plays a central role. Specifically, when ...
Estimation of the unknown parameters that characterize a bilinear system is of primary importance in...
In this paper a system identification method is described for the case of measurement errors on inpu...
Kalman filtering for linear systems is known to provide the minimum variance estimation error, under...
This thesis is concerned with drawing out high-level insight from otherwise complex mathematical mod...
In prediction error identification, the information matrix plays a central role. Specifically, when ...
Calculation of the Cramer-Rao lower bound, i.e., the inverse of the Fisher information matrix, for o...
This paper addresses the variance quantification problem for system identification based on the pred...
Estimation of parameters of linear systems is a problem often encountered in applications. The Crame...
Grey box model identification preserves known physical structures in a model but with limits to the ...
An exact formula of the inverse covariance matrix of an autoregressive stochastic process is obtaine...
The Gohberg-Heinig explicit formula for the inversion of a block-Toeplitz matrix is used to build an...
It is known that the least-squares class of algorithms produce unbiased estimates providing certain ...
Stochastic approximation methods for the identification of parameters of nonlinear systems without d...
In state reconstruction problems, the statistics of the noise affecting the state equations is often...
In prediction error identification, the information matrix plays a central role. Specifically, when ...
Estimation of the unknown parameters that characterize a bilinear system is of primary importance in...
In this paper a system identification method is described for the case of measurement errors on inpu...
Kalman filtering for linear systems is known to provide the minimum variance estimation error, under...
This thesis is concerned with drawing out high-level insight from otherwise complex mathematical mod...
In prediction error identification, the information matrix plays a central role. Specifically, when ...