The reliable solution of nonlinear parameter es- timation problems is an important computational problem in many areas of science and engineering, including such applications as real time optimization. Its goal is to estimate accurate model parameters that provide the best fit to measured data, despite small- scale noise in the data or occasional large-scale mea- surement errors (outliers). In general, the estimation techniques are based on some kind of least squares or maximum likelihood criterion, and these require the solution of a nonlinear and non-convex optimiza- tion problem. Classical solution methods for these problems are local methods, and may not be reliable for finding the global optimum, with no guarantee the best model paramete...
International audienceThe bounded-error approach to parameter estimation, mainly developed in the co...
\u3cp\u3eStandard identification techniques usually result in a single point estimate of the system ...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
The reliable solution of nonlinear parameter estimation problems is an important computational prob...
Nonlinear parameter estimation is usually achieved via the minimization of some possibly non-convex ...
International audienceThis paper is about guaranteed parameter estimation in two contexts, namely bo...
Parameter estimation plays an important role in numerous engineering areas such as function estimati...
Interval Analysis is a new tool, well known in Automatic Control, very powerfull for solving estimat...
Abstract. Parameter estimation is the problem of finding the values of the unknowns of a mathematica...
We present a methodology through exemplification to perform parameter estimation subject to possible...
This dissertation consists of three papers written on different aspects of interval estimation. The ...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
AbstractKnowledge-based models are ubiquitous in pure and applied sciences. They often involve unkno...
In most applications in control engineering a measurement of all state variables is either impossibl...
We shall consider two problems related to the equations specifying the nonlinear interval estimator....
International audienceThe bounded-error approach to parameter estimation, mainly developed in the co...
\u3cp\u3eStandard identification techniques usually result in a single point estimate of the system ...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...
The reliable solution of nonlinear parameter estimation problems is an important computational prob...
Nonlinear parameter estimation is usually achieved via the minimization of some possibly non-convex ...
International audienceThis paper is about guaranteed parameter estimation in two contexts, namely bo...
Parameter estimation plays an important role in numerous engineering areas such as function estimati...
Interval Analysis is a new tool, well known in Automatic Control, very powerfull for solving estimat...
Abstract. Parameter estimation is the problem of finding the values of the unknowns of a mathematica...
We present a methodology through exemplification to perform parameter estimation subject to possible...
This dissertation consists of three papers written on different aspects of interval estimation. The ...
Least squares parameter estimation algorithms for nonlinear systems are investigated based on a nonl...
AbstractKnowledge-based models are ubiquitous in pure and applied sciences. They often involve unkno...
In most applications in control engineering a measurement of all state variables is either impossibl...
We shall consider two problems related to the equations specifying the nonlinear interval estimator....
International audienceThe bounded-error approach to parameter estimation, mainly developed in the co...
\u3cp\u3eStandard identification techniques usually result in a single point estimate of the system ...
This thesis presents a class of methods for solving nonlinear least squares problems. A comprehensiv...