International audienceGiven a linear input/output relationship involving unknown parameters, we propose a hybrid gradient descent algorithm to estimate the unknown parameters when the inputs and the outputs are hybrid signals. These signals are allowed to change continuously during ordinary time - or flow - and to change discretely - or jump - at isolated time instances. To estimate the unknown parameters, we develop a gradient descent algorithm that updates the estimates continuously during flows and instantaneously at jumps. The proposed hybrid gradient algorithm generalizes the existing gradient descent algorithms in the continuous-time and the discrete-time settings. Under a relaxed (hybrid) version of the well-known persistence of exci...
This paper proposes a hybrid evolutionary algorithm. It is based on a normal evolutionary algorithm ...
Abstract. Many structured data-fitting applications require the solution of an optimization problem ...
AbstractThis paper develops two algorithms. Algorithm 1 computes the exact, Gaussian, log-likelihood...
International audienceWe address a classical identification problem that consists in estimating a ve...
Estimating the unknown parameters of a system is critical in many engineering applications, such as ...
Submitted to IEEE Trans. Automat. ControlWe propose a framework of stability analysis for a class of...
AbstractIn this paper we present a new analysis of two algorithms, Gradient Descent and Exponentiate...
International audienceWe propose a hybrid adaptive feed-forward regulator for single-input single-ou...
In this paper, making use of the signal-flow-graph (SFG) representation and its known properties, we...
International audienceIn this paper we propose a new algorithm that estimates on-line the parameters...
An efficient methodology for parameter identification is developed for general multi-degree of freed...
This paper focuses on the adaptation mechanisms in adaptive hybrid controllers. Most adaptive hybrid...
The hybrid conjugate gradient (CG) method is among the efficient variants of CG method for solving o...
A large class of nonlinear dynamic adaptive systems such as dynamic recurrent neural networks can be...
A hybrid algorithm inspired by [1] is given that identifies a parameter for a class of nonlinear sys...
This paper proposes a hybrid evolutionary algorithm. It is based on a normal evolutionary algorithm ...
Abstract. Many structured data-fitting applications require the solution of an optimization problem ...
AbstractThis paper develops two algorithms. Algorithm 1 computes the exact, Gaussian, log-likelihood...
International audienceWe address a classical identification problem that consists in estimating a ve...
Estimating the unknown parameters of a system is critical in many engineering applications, such as ...
Submitted to IEEE Trans. Automat. ControlWe propose a framework of stability analysis for a class of...
AbstractIn this paper we present a new analysis of two algorithms, Gradient Descent and Exponentiate...
International audienceWe propose a hybrid adaptive feed-forward regulator for single-input single-ou...
In this paper, making use of the signal-flow-graph (SFG) representation and its known properties, we...
International audienceIn this paper we propose a new algorithm that estimates on-line the parameters...
An efficient methodology for parameter identification is developed for general multi-degree of freed...
This paper focuses on the adaptation mechanisms in adaptive hybrid controllers. Most adaptive hybrid...
The hybrid conjugate gradient (CG) method is among the efficient variants of CG method for solving o...
A large class of nonlinear dynamic adaptive systems such as dynamic recurrent neural networks can be...
A hybrid algorithm inspired by [1] is given that identifies a parameter for a class of nonlinear sys...
This paper proposes a hybrid evolutionary algorithm. It is based on a normal evolutionary algorithm ...
Abstract. Many structured data-fitting applications require the solution of an optimization problem ...
AbstractThis paper develops two algorithms. Algorithm 1 computes the exact, Gaussian, log-likelihood...