In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled as random variables with an infinite support. This results in infinite-dimensional optimization problems that can rarely be solved directly. Therefore, the random variables (stochastic processes) are often approximated by finitely supported ones (scenario trees), which result in finite-dimensional optimization problems that are more likely to be solvable by available optimization tools. This paper presents conditions under which such finite-dimensional optimization problems can be shown to epi-converge to the original infinite-dimensional problem. Epi-convergence implies the convergence of optimal values and solutions as the discretizations ...
We consider scenario approximation of problems given by the optimization of a function over a constr...
Models for long-term planning often lead to infinite horizon stochastic programs that offer signific...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled...
In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled...
In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled...
In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled...
Modern integration quadratures are designed to produce finitely supported approximations of a given ...
Modern integration quadratures are designed to produce finitely supported approximations of a given ...
Modern integration quadratures are designed to produce finitely supported approximations of a given ...
Models for long-term planning often lead to infinite horizon stochastic pro-grams that offer signifi...
We consider scenario approximation of problems given by the optimization of a function over a constr...
We consider scenario approximation of problems given by the optimization of a function over a constr...
We consider scenario approximation of problems given by the optimization of a function over a constr...
We consider scenario approximation of problems given by the optimization of a function over a constr...
We consider scenario approximation of problems given by the optimization of a function over a constr...
Models for long-term planning often lead to infinite horizon stochastic programs that offer signific...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...
In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled...
In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled...
In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled...
In many dynamic stochastic optimization problems in practice, the uncertain factors are best modeled...
Modern integration quadratures are designed to produce finitely supported approximations of a given ...
Modern integration quadratures are designed to produce finitely supported approximations of a given ...
Modern integration quadratures are designed to produce finitely supported approximations of a given ...
Models for long-term planning often lead to infinite horizon stochastic pro-grams that offer signifi...
We consider scenario approximation of problems given by the optimization of a function over a constr...
We consider scenario approximation of problems given by the optimization of a function over a constr...
We consider scenario approximation of problems given by the optimization of a function over a constr...
We consider scenario approximation of problems given by the optimization of a function over a constr...
We consider scenario approximation of problems given by the optimization of a function over a constr...
Models for long-term planning often lead to infinite horizon stochastic programs that offer signific...
We introduce a class of algorithms, called Trajectory Following Dynamic Programming (TFDP) algorithm...