Stochastic Optimization Methods Applications in Engineering and Operations Research

This book examines optimization problems that in practice involve random model parameters. It outlines the computation of robust optimal solutions, i.e., optimal solutions that are insensitive to random parameter variations, where appropriate deterministic substitute problems are needed. Based on th...

Full description

Bibliographic Details
Main Author: Marti, Kurt
Format: eBook
Language:English
Published: Cham Springer International Publishing 2024, 2024
Edition:4th ed. 2024
Subjects:
Online Access:
Collection: Springer eBooks 2005- - Collection details see MPG.ReNa
LEADER 03829nmm a2200337 u 4500
001 EB002210450
003 EBX01000000000000001347650
005 00000000000000.0
007 cr|||||||||||||||||||||
008 240603 ||| eng
020 |a 9783031400599 
100 1 |a Marti, Kurt 
245 0 0 |a Stochastic Optimization Methods  |h Elektronische Ressource  |b Applications in Engineering and Operations Research  |c by Kurt Marti 
250 |a 4th ed. 2024 
260 |a Cham  |b Springer International Publishing  |c 2024, 2024 
300 |a XII, 384 p. 30 illus., 2 illus. in color  |b online resource 
505 0 |a Stochastic Optimization Methods -- Solution of Stochastic Linear Programs by Discretization Methods -- Optimal Control under Stochastic Uncertainty -- Random Search Procedures for Global Optimization -- Controlled Random Search under Uncertainty -- Controlled Random Search Procedures for Global Optimization -- Random Search Methods with Multiple Search Points -- Approximation of Feedback Control Systems -- Stochastic Optimal Open-Loop Feedback Control -- Adaptive Optimal Stochastic Trajectory Planning and Control (AOSTPC) -- Machine Learning under stochastic uncertainty -- Stochastic Structural Optimization with quadratic loss functions -- Maximum Entropy Techniques 
653 |a Operations research 
653 |a Optimization 
653 |a Computational intelligence 
653 |a Computational Intelligence 
653 |a Mathematical optimization 
653 |a Operations Research and Decision Theory 
041 0 7 |a eng  |2 ISO 639-2 
989 |b Springer  |a Springer eBooks 2005- 
028 5 0 |a 10.1007/978-3-031-40059-9 
856 4 0 |u https://doi.org/10.1007/978-3-031-40059-9?nosfx=y  |x Verlag  |3 Volltext 
082 0 |a 658.403 
520 |a This book examines optimization problems that in practice involve random model parameters. It outlines the computation of robust optimal solutions, i.e., optimal solutions that are insensitive to random parameter variations, where appropriate deterministic substitute problems are needed. Based on the probability distribution of the random data and using decision theoretical concepts, optimization problems under stochastic uncertainty are converted into corresponding deterministic problems. Due to the probabilities and expectations involved, the book also shows how to apply approximative solution techniques.  
520 |a For the computation of optimal feedback controls under stochastic uncertainty, besides the open-loop feedback procedures, a new method based on Taylor expansions with respect to the gain parameters is presented. The book is intended for researchers and graduate students who are interested in stochastics, stochastic optimization, and control. It will also benefit professionals and practitioners whose work involves technical, economic and/or operations research problems under stochastic uncertainty 
520 |a Several deterministic and stochastic approximation methods are provided: Taylor expansion methods, regression and response surface methods (RSM), probability inequalities, multiple linearization of survival/failure domains, discretization methods, convex approximation/deterministic descent directions/efficient points, stochastic approximation and gradient procedures, and differentiation formulas for probabilities and expectations. The fourth edition of this classic text has been carefully and thoroughly revised. It includes new chapters on the solution of stochastic linear programs by discretization of the underlying probability distribution, and on solving deterministic optimization problems by means of controlled random search methods and multiple random search procedures. It also presents a new application of stochastic optimization methods to machine learning problems with different loss functions.