An optimization based state and parameter estimation method is presented where the required Jacobian matrix of the cost function is computed via automatic differentiation. Automatic differentiation evaluates the programming code of the cost function and provides exact values of the derivatives. In contrast to numerical differentiation it is not suffering from approximation errors and compared to symbolic differentiation it is more convenient to use, because no closed analytic expressions are required. Furthermore, we demonstrate how to generalize the parameter estimation scheme to delay differential equations, where estimating the delay time requires attention
This thesis is concerned with the problem of identifying and controlling linear continuous systems. ...
International audienceThe investigation of network dynamics is a major issue in systems and syntheti...
In comparison to symbolic differentiation and numerical differencing, the chain rule based technique...
An optimization based state and parameter estimation method is presented where the required Jacobian...
Automatic Differentiation is a computational technique that allows the evaluation of derivatives of ...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/1...
A large number of physical phenomena are modeled by a system of ODEs or a system of implicit ODEs. ...
International audienceAbstract—Simulation is ubiquitous in many scientific areas. Applied for dynami...
AbstractWe consider a parametric linear system a(s)·x(s) = b(s) where a(s) is a regular matrix, b(s)...
In this article, we propose automatic differentiation based methods for parameter estimation in non-...
Abstract: The computational burden, which obstacles Nonlinear Model Predictive Control techniques to...
International audienceSimulation is ubiquitous in many scientific areas. Applied for dynamic systems...
Many processes in biology, chemistry, physics, medicine, and engineering are modeled by a system of ...
In this work, methods for on-line identification of discrete-time systems and for parameter tracking...
Abstract. Simulation of many physical phenomena requires the numerical solution of non-linear partia...
This thesis is concerned with the problem of identifying and controlling linear continuous systems. ...
International audienceThe investigation of network dynamics is a major issue in systems and syntheti...
In comparison to symbolic differentiation and numerical differencing, the chain rule based technique...
An optimization based state and parameter estimation method is presented where the required Jacobian...
Automatic Differentiation is a computational technique that allows the evaluation of derivatives of ...
This work was also published as a Rice University thesis/dissertation: http://hdl.handle.net/1911/1...
A large number of physical phenomena are modeled by a system of ODEs or a system of implicit ODEs. ...
International audienceAbstract—Simulation is ubiquitous in many scientific areas. Applied for dynami...
AbstractWe consider a parametric linear system a(s)·x(s) = b(s) where a(s) is a regular matrix, b(s)...
In this article, we propose automatic differentiation based methods for parameter estimation in non-...
Abstract: The computational burden, which obstacles Nonlinear Model Predictive Control techniques to...
International audienceSimulation is ubiquitous in many scientific areas. Applied for dynamic systems...
Many processes in biology, chemistry, physics, medicine, and engineering are modeled by a system of ...
In this work, methods for on-line identification of discrete-time systems and for parameter tracking...
Abstract. Simulation of many physical phenomena requires the numerical solution of non-linear partia...
This thesis is concerned with the problem of identifying and controlling linear continuous systems. ...
International audienceThe investigation of network dynamics is a major issue in systems and syntheti...
In comparison to symbolic differentiation and numerical differencing, the chain rule based technique...