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Stochastic Optimization with Simulation Based Optimization
Details
Stochastic optimization is vital to making sound
engineering and business decisions under uncertainty.
While the limited capability of handling complex
domain structures and random variables renders
analytic methods helpless in many circumstances,
stochastic optimization based on simulation is widely
applicable. This work extends the traditional
response surface methodology into a surrogate model
framework to address high dimensional stochastic
problems. The framework integrates Latin hypercube
sampling (LHS), domain reduction techniques, least
square support vector machine (LSSVM) and design &
analysis of computer experiment (DACE) to build
surrogate models that effectively captures domain
structures. In comparison with existing simulation
based optimization methods, the proposed framework
leads to better solutions especially for problems
with high dimensions and high uncertainty. The
surrogate model framework also demonstrates the
capability of addressing the curse-of-dimensionality
in stochastic dynamic risk optimization problems,
where several important modification of the classical
Bellman equation for stochastic dynamic problems
(SDP) is also proposed.
Autorentext
Xiaotao Wan, Ph.D: Studied Chemical Engineering at TsinghuaUniversity and Purdue University with Focus on Supply ChainOptimization in Postgraduate Study. Supply Chain Consultant atBayer Technology & Engineering (Shanghai) Co. Ltd.
Klappentext
Stochastic optimization is vital to making soundengineering and business decisions under uncertainty.While the limited capability of handling complexdomain structures and random variables rendersanalytic methods helpless in many circumstances,stochastic optimization based on simulation is widelyapplicable. This work extends the traditionalresponse surface methodology into a surrogate modelframework to address high dimensional stochasticproblems. The framework integrates Latin hypercubesampling (LHS), domain reduction techniques, leastsquare support vector machine (LSSVM) and design &analysis of computer experiment (DACE) to buildsurrogate models that effectively captures domainstructures. In comparison with existing simulationbased optimization methods, the proposed frameworkleads to better solutions especially for problemswith high dimensions and high uncertainty. Thesurrogate model framework also demonstrates thecapability of addressing the curse-of-dimensionalityin stochastic dynamic risk optimization problems,where several important modification of the classicalBellman equation for stochastic dynamic problems(SDP) is also proposed.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783639140156
- Sprache Englisch
- Größe H8mm x B220mm x T150mm
- Jahr 2009
- EAN 9783639140156
- Format Kartonierter Einband (Kt)
- ISBN 978-3-639-14015-6
- Titel Stochastic Optimization with Simulation Based Optimization
- Autor Xiaotao Wan
- Untertitel A Surrogate Model Framework
- Gewicht 221g
- Herausgeber VDM Verlag
- Anzahl Seiten 136
- Genre Wirtschaft