An overview on robust design hybrid metamodeling: Advanced methodology in process optimization under uncertainty
Nowadays, process optimization has been an interest in engineering design for improving the performance and reducing cost. In practice, in addition to uncertainty or noise parameters, a comprehensive optimization model must be able to attend other circumstances which might be imposed in problems und...
Main Authors: | , , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Growing Science
2018-01-01
|
Series: | International Journal of Industrial Engineering Computations |
Subjects: | |
Online Access: | http://www.growingscience.com/ijiec/Vol9/IJIEC_2017_18.pdf |
id |
doaj-9efd2742283f47beaf8e3987cb249888 |
---|---|
record_format |
Article |
spelling |
doaj-9efd2742283f47beaf8e3987cb2498882020-11-25T01:42:31ZengGrowing ScienceInternational Journal of Industrial Engineering Computations1923-29261923-29342018-01-019113210.5267/j.ijiec.2017.5.003An overview on robust design hybrid metamodeling: Advanced methodology in process optimization under uncertaintyAmir ParnianifardA.S. AzfanizamM.K.A. AriffinM.I.S. IsmailNowadays, process optimization has been an interest in engineering design for improving the performance and reducing cost. In practice, in addition to uncertainty or noise parameters, a comprehensive optimization model must be able to attend other circumstances which might be imposed in problems under real operational conditions such as dynamic objectives, multi-responses, various probabilistic distribution, discrete and continuous data, physical constraints to design parameters, performance cost, computational complexity and multi-process environment. The main goal of this paper is to give a general overview on topics with brief systematic review and concise discussions about the recent development on comprehensive robust design optimization methods under hybrid aforesaid circumstances. Both optimization methods of mathematical programming based on Taguchi approach and robust optimization based on scenario sets are briefly described. Metamodels hybrid robust design is discussed as an appropriate methodology to decrease computational complexity in problems under uncertainty. In this context, the authors’ policy is to choose important topics for giving a systematic picture to those who wish to be more familiar with recent studies about robust design optimization hybrid metamodels, also by attending real circumstances in practice. In particular, production and project management are considered as two important methodologies that could be improved by applications of advanced robust design combining with metamodel methods.http://www.growingscience.com/ijiec/Vol9/IJIEC_2017_18.pdfRobust designMetamodelingUncertaintyProcess optimization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Amir Parnianifard A.S. Azfanizam M.K.A. Ariffin M.I.S. Ismail |
spellingShingle |
Amir Parnianifard A.S. Azfanizam M.K.A. Ariffin M.I.S. Ismail An overview on robust design hybrid metamodeling: Advanced methodology in process optimization under uncertainty International Journal of Industrial Engineering Computations Robust design Metamodeling Uncertainty Process optimization |
author_facet |
Amir Parnianifard A.S. Azfanizam M.K.A. Ariffin M.I.S. Ismail |
author_sort |
Amir Parnianifard |
title |
An overview on robust design hybrid metamodeling: Advanced methodology in process optimization under uncertainty |
title_short |
An overview on robust design hybrid metamodeling: Advanced methodology in process optimization under uncertainty |
title_full |
An overview on robust design hybrid metamodeling: Advanced methodology in process optimization under uncertainty |
title_fullStr |
An overview on robust design hybrid metamodeling: Advanced methodology in process optimization under uncertainty |
title_full_unstemmed |
An overview on robust design hybrid metamodeling: Advanced methodology in process optimization under uncertainty |
title_sort |
overview on robust design hybrid metamodeling: advanced methodology in process optimization under uncertainty |
publisher |
Growing Science |
series |
International Journal of Industrial Engineering Computations |
issn |
1923-2926 1923-2934 |
publishDate |
2018-01-01 |
description |
Nowadays, process optimization has been an interest in engineering design for improving the performance and reducing cost. In practice, in addition to uncertainty or noise parameters, a comprehensive optimization model must be able to attend other circumstances which might be imposed in problems under real operational conditions such as dynamic objectives, multi-responses, various probabilistic distribution, discrete and continuous data, physical constraints to design parameters, performance cost, computational complexity and multi-process environment. The main goal of this paper is to give a general overview on topics with brief systematic review and concise discussions about the recent development on comprehensive robust design optimization methods under hybrid aforesaid circumstances. Both optimization methods of mathematical programming based on Taguchi approach and robust optimization based on scenario sets are briefly described. Metamodels hybrid robust design is discussed as an appropriate methodology to decrease computational complexity in problems under uncertainty. In this context, the authors’ policy is to choose important topics for giving a systematic picture to those who wish to be more familiar with recent studies about robust design optimization hybrid metamodels, also by attending real circumstances in practice. In particular, production and project management are considered as two important methodologies that could be improved by applications of advanced robust design combining with metamodel methods. |
topic |
Robust design Metamodeling Uncertainty Process optimization |
url |
http://www.growingscience.com/ijiec/Vol9/IJIEC_2017_18.pdf |
work_keys_str_mv |
AT amirparnianifard anoverviewonrobustdesignhybridmetamodelingadvancedmethodologyinprocessoptimizationunderuncertainty AT asazfanizam anoverviewonrobustdesignhybridmetamodelingadvancedmethodologyinprocessoptimizationunderuncertainty AT mkaariffin anoverviewonrobustdesignhybridmetamodelingadvancedmethodologyinprocessoptimizationunderuncertainty AT misismail anoverviewonrobustdesignhybridmetamodelingadvancedmethodologyinprocessoptimizationunderuncertainty AT amirparnianifard overviewonrobustdesignhybridmetamodelingadvancedmethodologyinprocessoptimizationunderuncertainty AT asazfanizam overviewonrobustdesignhybridmetamodelingadvancedmethodologyinprocessoptimizationunderuncertainty AT mkaariffin overviewonrobustdesignhybridmetamodelingadvancedmethodologyinprocessoptimizationunderuncertainty AT misismail overviewonrobustdesignhybridmetamodelingadvancedmethodologyinprocessoptimizationunderuncertainty |
_version_ |
1725035799017160704 |