A class of stochastic optimization problems is analyzed that cannot be solved by deterministic and standard stochastic approximation methods. We consider risk-control problems, optimization of stochastic networks and discrete event systems, screening irreversible changes, and pollution control. The results of Ermoliev et al. are extended to the case of stochastic systems and general constraints. It is shown that the concept of stochastic mollifier gradient leads to easily implementable computational procedures for systems with Lipschitz and discontinuous objective functions. New optimality conditions are formulated for designing stochastic search procedures for constrained optimization of discontinuous systems
Abstract. We study a stochastic control problem for the optimization of observations in a partially ...
Optimization methods are of a great practical importance in systems analysis. They allow us to find ...
This book presents the latest findings on stochastic dynamic programming models and on solving optim...
In this paper stochastic programming techniques are adapted and further developed for applications t...
Different classes of nonconvex nonsmooth stochastic optimization problems are analyzed, their genera...
In this article we approach a class of stochastic reachability problems with state constraints from ...
The focus of the present volume is stochastic optimization of dynamical systems in discrete time whe...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
This document is devoted to theoretical and practical aspects of two subelds of the mathematical pro...
Abstract. We develop a novel framework for formulating a class of stochastic reachability problems w...
The special issue of Mathematical Problems in Engineering deals with the issues of modeling, optimiz...
This paper provides new insights into the solution of optimal stochastic control problems by means o...
The optimal control of problems that are constrained by partial differential equations with uncertai...
AbstractIn a previous paper we gave a new, natural extension of the calculus of variations/optimal c...
We consider structural topology optimization problems including unilateral constraints arising from,...
Abstract. We study a stochastic control problem for the optimization of observations in a partially ...
Optimization methods are of a great practical importance in systems analysis. They allow us to find ...
This book presents the latest findings on stochastic dynamic programming models and on solving optim...
In this paper stochastic programming techniques are adapted and further developed for applications t...
Different classes of nonconvex nonsmooth stochastic optimization problems are analyzed, their genera...
In this article we approach a class of stochastic reachability problems with state constraints from ...
The focus of the present volume is stochastic optimization of dynamical systems in discrete time whe...
Stochastic Optimization Algorithms have become essential tools in solving a wide range of difficult ...
This document is devoted to theoretical and practical aspects of two subelds of the mathematical pro...
Abstract. We develop a novel framework for formulating a class of stochastic reachability problems w...
The special issue of Mathematical Problems in Engineering deals with the issues of modeling, optimiz...
This paper provides new insights into the solution of optimal stochastic control problems by means o...
The optimal control of problems that are constrained by partial differential equations with uncertai...
AbstractIn a previous paper we gave a new, natural extension of the calculus of variations/optimal c...
We consider structural topology optimization problems including unilateral constraints arising from,...
Abstract. We study a stochastic control problem for the optimization of observations in a partially ...
Optimization methods are of a great practical importance in systems analysis. They allow us to find ...
This book presents the latest findings on stochastic dynamic programming models and on solving optim...