Optimization Under Stochastic Uncertainty Optimization Under Stochastic Uncertainty
International Series in Operations Research & Management Science

Optimization Under Stochastic Uncertainty

Methods, Control and Random Search Methods

    • 67,99 €
    • 67,99 €

Description de l’éditeur

This book examines application and methods to incorporating stochastic parameter variations into the optimization process to decrease expense in corrective measures. Basic types of deterministic substitute problems occurring mostly in practice involve i) minimization of the expected primary costs subject to expected recourse cost constraints (reliability constraints) and remaining deterministic constraints, e.g. box constraints, as well as ii) minimization of the expected total costs (costs of construction, design, recourse costs, etc.) subject to the remaining deterministic constraints.


After an introduction into the theory of dynamic control systems with random parameters, the major control laws are described, as open-loop control, closed-loop, feedback control and open-loop feedback control, used for iterative construction of feedback controls. For approximate solution of optimization and control problems with random parameters and involving expected cost/loss-type objective, constraint functions, Taylor expansion procedures, and Homotopy methods are considered, Examples and applications to stochastic optimization of regulators are given. Moreover, for reliability-based analysis and optimal design problems, corresponding optimization-based limit state functions are constructed. Because of the complexity of concrete optimization/control problems and their lack of the mathematical regularity as required of Mathematical Programming (MP) techniques, other optimization techniques, like random search methods (RSM) became increasingly important.


Basic results on the convergence and convergence rates of random search methods are presented. Moreover, for the improvement of the – sometimes very low – convergence rate of RSM, search methods based on optimal stochastic decision processes are presented. In order to improve the convergence behavior of RSM, the random search procedure is embedded into a stochastic decision process for an optimal control of the probability distributions of the search variates (mutation random variables). 

GENRE
Entreprise et management
SORTIE
2020
10 novembre
LANGUE
EN
Anglais
LONGUEUR
407
Pages
ÉDITIONS
Springer International Publishing
DÉTAILS DU FOURNISSEUR
Springer Science & Business Media LLC
TAILLE
12,7
Mo
Leichenreden Leichenreden
2025
Stochastic Optimization Methods Stochastic Optimization Methods
2024
Die Riesin Die Riesin
2023
Hannis Äpfel Hannis Äpfel
2021
Der Alphornpalast Der Alphornpalast
2021
Stochastic Optimization Methods Stochastic Optimization Methods
2015
Handbook of Marketing Decision Models Handbook of Marketing Decision Models
2017
Foreign-Exchange-Rate Forecasting with Artificial Neural Networks Foreign-Exchange-Rate Forecasting with Artificial Neural Networks
2010
Postponement Strategies in Supply Chain Management Postponement Strategies in Supply Chain Management
2010
Outsourcing Using Operations Research and Management Science Methods Outsourcing Using Operations Research and Management Science Methods
2025
Outsourcing Outsourcing
2025
Machine Learning Technologies on Energy Economics and Finance Machine Learning Technologies on Energy Economics and Finance
2025