Abstract—Expressions for the variance of an estimated fre-quency function are necessary for many issues in model validation and experiment design. A general result is that a simple expression for this variance can be obtained asymptotically as the model order tends to infinity. This expression shows that the variance is inversely proportional to the signal-to-noise ratio frequency by frequency. Still, for low order models the actual variance may be quite different. This has also been pointed out in several recent publications. In this contribution we derive an exact expression for the variance, which is not asymptotic in the model order. This expression applies to a restricted class of models: AR-models, as well as fixed pole models with a ...
The objective of this contribution is to analyze statistical properties of estimated models of casca...
The objective of this contribution is to analyze statistical properties of estimated models of casca...
Abstract: This note discusses how to compute the asymptotic covariance matrix for a forecast error v...
Expressions for the variance of an estimated frequency function are necessary for many issues in mod...
The asymptotic probability distribution of identified black-box transfer function models is studied....
The asymptotic probability distribution of identified black-box transfer function models is studied....
This paper is concerned with the frequency domain quantification of noise induced errors in dynamic ...
This paper is concerned with the frequency domain quantification of noise induced errors in dynamic ...
An expression for the variance of the estimated spectrum based on auto-regressions is developed. Thi...
Abstract. This paper provides asymptotic bias and variance analysis for MIMO system estimates obtain...
This note addresses the problem of quantifying the effect of noise induced error(so called “variance...
This paper deals with the analysis of a frequency domain identication algorithm The algorithm identi...
In this technical note fundamental integral limitations are derived on the variance of estimated par...
This chapter continues on these themes of exposing the links between rational orthonormal bases and ...
Abstract—In this paper fundamental integral limitations are derived on the variance of estimated par...
The objective of this contribution is to analyze statistical properties of estimated models of casca...
The objective of this contribution is to analyze statistical properties of estimated models of casca...
Abstract: This note discusses how to compute the asymptotic covariance matrix for a forecast error v...
Expressions for the variance of an estimated frequency function are necessary for many issues in mod...
The asymptotic probability distribution of identified black-box transfer function models is studied....
The asymptotic probability distribution of identified black-box transfer function models is studied....
This paper is concerned with the frequency domain quantification of noise induced errors in dynamic ...
This paper is concerned with the frequency domain quantification of noise induced errors in dynamic ...
An expression for the variance of the estimated spectrum based on auto-regressions is developed. Thi...
Abstract. This paper provides asymptotic bias and variance analysis for MIMO system estimates obtain...
This note addresses the problem of quantifying the effect of noise induced error(so called “variance...
This paper deals with the analysis of a frequency domain identication algorithm The algorithm identi...
In this technical note fundamental integral limitations are derived on the variance of estimated par...
This chapter continues on these themes of exposing the links between rational orthonormal bases and ...
Abstract—In this paper fundamental integral limitations are derived on the variance of estimated par...
The objective of this contribution is to analyze statistical properties of estimated models of casca...
The objective of this contribution is to analyze statistical properties of estimated models of casca...
Abstract: This note discusses how to compute the asymptotic covariance matrix for a forecast error v...