This contribution consists of the identification and comparison of different models for a non-linear system: the Cascaded Tanks system. The identification of this system is challenging due to the combination of soft and hard non-linearities. Model structures with different levels of flexibility and prior knowledge are compared. The most simple ones are linear black-box models. They are extended to become non-linear black-box models, whose performances are compared with the linear ones. A second track is the investigation of a series of models with increasing complexity based on physical prior knowledge. Results show that while linear black-box models perform good in prediction, a fairly precise description of the non-linear effects is neede...
The main goal of estimating models for industrial applications is to guarantee the cheapest system i...
This paper presents a new grey-box state space model structure for nonlinear systems together with i...
The identification of non-linear systems using only observed finite datasets has become a mature res...
A common process control application is the cascaded two-tank system, where the level is controlled ...
\u3cp\u3eNonlinear system identification is a fast evolving field of research with contributions fro...
The considered cascaded tanks system is a fluid level control system consisting of two tanks with fr...
The key problem in system identification is to find a suitable model structure, within which a good ...
General black-box system identification techniques such as subspace system identification and FIR/AR...
This work analyzes the performance of several black box nonlinear model identification techniques fo...
This paper presents the modelling and identification procedure applied to a coupled, non-minimum pha...
Abstract—General black-box system identification tech-niques such as subspace system identification ...
Many systems exhibit a quasi linear or weakly nonlinear behavior dur-ing normal operation, and a har...
The paper deals with development of a mathematical model of a hydraulic system. A three tank laborat...
A black-box model of a system is one that does not use any particular prior knowledge of the charact...
International audienceNonlinear mathematical models are essential tools in various engineering and s...
The main goal of estimating models for industrial applications is to guarantee the cheapest system i...
This paper presents a new grey-box state space model structure for nonlinear systems together with i...
The identification of non-linear systems using only observed finite datasets has become a mature res...
A common process control application is the cascaded two-tank system, where the level is controlled ...
\u3cp\u3eNonlinear system identification is a fast evolving field of research with contributions fro...
The considered cascaded tanks system is a fluid level control system consisting of two tanks with fr...
The key problem in system identification is to find a suitable model structure, within which a good ...
General black-box system identification techniques such as subspace system identification and FIR/AR...
This work analyzes the performance of several black box nonlinear model identification techniques fo...
This paper presents the modelling and identification procedure applied to a coupled, non-minimum pha...
Abstract—General black-box system identification tech-niques such as subspace system identification ...
Many systems exhibit a quasi linear or weakly nonlinear behavior dur-ing normal operation, and a har...
The paper deals with development of a mathematical model of a hydraulic system. A three tank laborat...
A black-box model of a system is one that does not use any particular prior knowledge of the charact...
International audienceNonlinear mathematical models are essential tools in various engineering and s...
The main goal of estimating models for industrial applications is to guarantee the cheapest system i...
This paper presents a new grey-box state space model structure for nonlinear systems together with i...
The identification of non-linear systems using only observed finite datasets has become a mature res...