The linear programming (LP) approach to solve the Bellman equation in dynamic programming is a well-known option for finite state and input spaces to obtain an exact solution. However, with function approximation or continuous state spaces, refinements are necessary. This paper presents a methodology to make approximate dynamic programming via LP work in practical control applications with continuous state and input spaces. There are some guidelines on data and regressor choices needed to obtain meaningful and well-conditioned value function estimates. The work discusses the introduction of terminal ingredients and computation of lower and upper bounds of the value function. An experimental inverted-pendulum application will be used to illu...
Computing the exact solution of an MDP model is generally difficult and possibly intractable for rea...
International audienceIn any complex or large scale sequential decision making problem, there is a c...
Abstract: An approximate dynamic programming (ADP) strategy for a dual adaptive control problem is p...
[EN] The linear programming (LP) approach to solve the Bellman equation in dynamic programming is a ...
Abstract—We consider the linear programming approach to approximate dynamic programming. In the gene...
This thesis studies approximate optimal control of nonlinear systems. Particular attention is given ...
We study both the value function and Q-function formulation of the Linear Programming approach to Ap...
We review the properties of algorithms that characterizethe solution of the Bellman equation of a st...
This paper presents an modification to the method of Bellman Residual Elimination (BRE) for approxim...
The unifying purpose of this paper to introduces basic ideas and methods of dynamic programming. It ...
The curse of dimensionality gives rise to prohibitive computational requirements that render infeasi...
This paper deals with approximate value iteration (AVI) algorithms applied to discounted dynamic pro...
Abstract — We describe an approximate dynamic program-ming method for stochastic control problems on...
Linear Methods are often used to compute approximate solutions to dynamic models, as these models of...
Linear Methods are often used to compute approximate solutions to dynamic models, as these models of...
Computing the exact solution of an MDP model is generally difficult and possibly intractable for rea...
International audienceIn any complex or large scale sequential decision making problem, there is a c...
Abstract: An approximate dynamic programming (ADP) strategy for a dual adaptive control problem is p...
[EN] The linear programming (LP) approach to solve the Bellman equation in dynamic programming is a ...
Abstract—We consider the linear programming approach to approximate dynamic programming. In the gene...
This thesis studies approximate optimal control of nonlinear systems. Particular attention is given ...
We study both the value function and Q-function formulation of the Linear Programming approach to Ap...
We review the properties of algorithms that characterizethe solution of the Bellman equation of a st...
This paper presents an modification to the method of Bellman Residual Elimination (BRE) for approxim...
The unifying purpose of this paper to introduces basic ideas and methods of dynamic programming. It ...
The curse of dimensionality gives rise to prohibitive computational requirements that render infeasi...
This paper deals with approximate value iteration (AVI) algorithms applied to discounted dynamic pro...
Abstract — We describe an approximate dynamic program-ming method for stochastic control problems on...
Linear Methods are often used to compute approximate solutions to dynamic models, as these models of...
Linear Methods are often used to compute approximate solutions to dynamic models, as these models of...
Computing the exact solution of an MDP model is generally difficult and possibly intractable for rea...
International audienceIn any complex or large scale sequential decision making problem, there is a c...
Abstract: An approximate dynamic programming (ADP) strategy for a dual adaptive control problem is p...