Most of the approaches available in the literature for the identification of Linear Parameter-Varying (LPV) systems rely on the assumption that only the measurements of the output signal are corrupted by the noise, while the observations of the scheduling variable are considered to be noise free. However, in practice, this turns out to be an unrealistic assumption in most of the cases, as the scheduling variable is often related to a measured signal and, thus, it is inherently affected by a measurement noise. In this paper, it is shown that neglecting the noise on the scheduling signal, which corresponds to an error-in-variables problem, can lead to a significant bias on the estimated parameters. Consequently, in order to overcome this corr...
© 2015 This paper tackles the problem of identifying linear parameter-varying (LPV) systems by combi...
Set-membership identification algorithms have been recently proposed to derive linear parameter-vary...
This chapter presents an overview of the available methods for identifying input-output LPV models b...
Most of the approaches available in the literature for the identification of Linear Parameter-Varyin...
Most of the approaches available in the literature for the identification of Linear Parameter-Varyin...
The consistency of certain identification methods for Linear Parameter Varying systems is considered...
Identification of Linear Parameter-Varying (LPV) models is often addressed in an Input-Output (IO) s...
We address the identification of discrete-time linear parameter varying systems in the state-space f...
Abstract — In this paper the identification of SISO Linear Parameter Varying (LPV) models when both ...
This paper presents a Gaussian Process (GP) based Bayesian method that takes into account the effect...
The Linear Parameter-Varying (LPV) framework provides a modeling and control design toolchain to add...
The Linear Parameter-Varying (LPV) paradigm represents a natural extension of the classical Linear ...
Controllers in the linear parameter-varying (LPV) framework are commonly designed in continuous time...
© 2015 This paper tackles the problem of identifying linear parameter-varying (LPV) systems by combi...
Set-membership identification algorithms have been recently proposed to derive linear parameter-vary...
This chapter presents an overview of the available methods for identifying input-output LPV models b...
Most of the approaches available in the literature for the identification of Linear Parameter-Varyin...
Most of the approaches available in the literature for the identification of Linear Parameter-Varyin...
The consistency of certain identification methods for Linear Parameter Varying systems is considered...
Identification of Linear Parameter-Varying (LPV) models is often addressed in an Input-Output (IO) s...
We address the identification of discrete-time linear parameter varying systems in the state-space f...
Abstract — In this paper the identification of SISO Linear Parameter Varying (LPV) models when both ...
This paper presents a Gaussian Process (GP) based Bayesian method that takes into account the effect...
The Linear Parameter-Varying (LPV) framework provides a modeling and control design toolchain to add...
The Linear Parameter-Varying (LPV) paradigm represents a natural extension of the classical Linear ...
Controllers in the linear parameter-varying (LPV) framework are commonly designed in continuous time...
© 2015 This paper tackles the problem of identifying linear parameter-varying (LPV) systems by combi...
Set-membership identification algorithms have been recently proposed to derive linear parameter-vary...
This chapter presents an overview of the available methods for identifying input-output LPV models b...