Robust stochastic maximum principle: Complete proof and discussions

This paper develops a version of Robust Stochastic Maximum Principle (RSMP) applied to the Minimax Mayer Problem formulated for stochastic differential equations with the control-dependent diffusion term. The parametric families of first and second order adjoint stochastic processes are introduced t...

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Main Author: Alex S. Poznyak
Format: Article
Language:English
Published: Hindawi Limited 2002-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1080/10241230306722
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spelling doaj-eac3038a887b4210a8c9f7c6ff9c1b6b2020-11-24T22:37:36ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472002-01-0184-538941110.1080/10241230306722Robust stochastic maximum principle: Complete proof and discussionsAlex S. Poznyak0CINVESTAV-IPN, Departimento de Control Automatico, AP 14-740, CP 07300, Mexico D.F., MexicoThis paper develops a version of Robust Stochastic Maximum Principle (RSMP) applied to the Minimax Mayer Problem formulated for stochastic differential equations with the control-dependent diffusion term. The parametric families of first and second order adjoint stochastic processes are introduced to construct the corresponding Hamiltonian formalism. The Hamiltonian function used for the construction of the robust optimal control is shown to be equal to the Lebesque integral over a parametric set of the standard stochastic Hamiltonians corresponding to a fixed value of the uncertain parameter. The paper deals with a cost function given at finite horizon and containing the mathematical expectation of a terminal term. A terminal condition, covered by a vector function, is also considered. The optimal control strategies, adapted for available information, for the wide class of uncertain systems given by an stochastic differential equation with unknown parameters from a given compact set, are constructed. This problem belongs to the class of minimax stochastic optimization problems. The proof is based on the recent results obtained for Minimax Mayer Problem with a finite uncertainty set [14,43-45] as well as on the variation results of [53] derived for Stochastic Maximum Principle for nonlinear stochastic systems under complete information. The corresponding discussion of the obtain results concludes this study.http://dx.doi.org/10.1080/10241230306722
collection DOAJ
language English
format Article
sources DOAJ
author Alex S. Poznyak
spellingShingle Alex S. Poznyak
Robust stochastic maximum principle: Complete proof and discussions
Mathematical Problems in Engineering
author_facet Alex S. Poznyak
author_sort Alex S. Poznyak
title Robust stochastic maximum principle: Complete proof and discussions
title_short Robust stochastic maximum principle: Complete proof and discussions
title_full Robust stochastic maximum principle: Complete proof and discussions
title_fullStr Robust stochastic maximum principle: Complete proof and discussions
title_full_unstemmed Robust stochastic maximum principle: Complete proof and discussions
title_sort robust stochastic maximum principle: complete proof and discussions
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2002-01-01
description This paper develops a version of Robust Stochastic Maximum Principle (RSMP) applied to the Minimax Mayer Problem formulated for stochastic differential equations with the control-dependent diffusion term. The parametric families of first and second order adjoint stochastic processes are introduced to construct the corresponding Hamiltonian formalism. The Hamiltonian function used for the construction of the robust optimal control is shown to be equal to the Lebesque integral over a parametric set of the standard stochastic Hamiltonians corresponding to a fixed value of the uncertain parameter. The paper deals with a cost function given at finite horizon and containing the mathematical expectation of a terminal term. A terminal condition, covered by a vector function, is also considered. The optimal control strategies, adapted for available information, for the wide class of uncertain systems given by an stochastic differential equation with unknown parameters from a given compact set, are constructed. This problem belongs to the class of minimax stochastic optimization problems. The proof is based on the recent results obtained for Minimax Mayer Problem with a finite uncertainty set [14,43-45] as well as on the variation results of [53] derived for Stochastic Maximum Principle for nonlinear stochastic systems under complete information. The corresponding discussion of the obtain results concludes this study.
url http://dx.doi.org/10.1080/10241230306722
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