A Universal MDO Framework Based on the Adaptive Discipline Surrogate Model

High time-consuming computation has become an obvious characteristic of the modern multidisciplinary design optimization (MDO) solving procedure. To reduce the computing cost and improve solving environment of the traditional MDO solution method, this article introduces a novel universal MDO framewo...

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Main Authors: Hua Su, Chun-lin Gong, Liang-xian Gu
Format: Article
Language:English
Published: Hindawi Limited 2018-01-01
Series:International Journal of Aerospace Engineering
Online Access:http://dx.doi.org/10.1155/2018/9139267
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spelling doaj-ac9cd63f089146d386c438c9c661db8b2020-11-24T21:28:35ZengHindawi LimitedInternational Journal of Aerospace Engineering1687-59661687-59742018-01-01201810.1155/2018/91392679139267A Universal MDO Framework Based on the Adaptive Discipline Surrogate ModelHua Su0Chun-lin Gong1Liang-xian Gu2Shaanxi Aerospace Flight Vehicle Design Key Laboratory, Northwestern Polytechnical University, Xi’an, Shaanxi 710072, ChinaShaanxi Aerospace Flight Vehicle Design Key Laboratory, Northwestern Polytechnical University, Xi’an, Shaanxi 710072, ChinaShaanxi Aerospace Flight Vehicle Design Key Laboratory, Northwestern Polytechnical University, Xi’an, Shaanxi 710072, ChinaHigh time-consuming computation has become an obvious characteristic of the modern multidisciplinary design optimization (MDO) solving procedure. To reduce the computing cost and improve solving environment of the traditional MDO solution method, this article introduces a novel universal MDO framework based on the support of adaptive discipline surrogate model with asymptotical correction by discriminative sampling. The MDO solving procedure is decomposed into three parts: framework level, architecture level, and discipline level. Framework level controls the MDO solving procedure and carries out convergence estimation; architecture level executes the MDO solution method with discipline surrogate models; discipline level analyzes discipline models to establish adaptive discipline surrogate models based on a stochastic asymptotical sampling method. The MDO solving procedure is executed as an iterative way included with discipline surrogate model correcting, MDO solving, and discipline analyzing. These are accomplished by the iteration process control at the framework level, the MDO decomposition at the architecture level, and the discipline surrogate model update at the discipline level. The framework executes these three parts separately in a hierarchical and modularized way. The discipline models and disciplinary design point sampling process are all independent; parallel computing could be used to increase computing efficiency in parallel environment. Several MDO benchmarks are tested in this MDO framework. Results show that the number of discipline evaluations in the framework is half or less of the original MDO solution method and is very useful and suitable for the complex high-fidelity MDO problem.http://dx.doi.org/10.1155/2018/9139267
collection DOAJ
language English
format Article
sources DOAJ
author Hua Su
Chun-lin Gong
Liang-xian Gu
spellingShingle Hua Su
Chun-lin Gong
Liang-xian Gu
A Universal MDO Framework Based on the Adaptive Discipline Surrogate Model
International Journal of Aerospace Engineering
author_facet Hua Su
Chun-lin Gong
Liang-xian Gu
author_sort Hua Su
title A Universal MDO Framework Based on the Adaptive Discipline Surrogate Model
title_short A Universal MDO Framework Based on the Adaptive Discipline Surrogate Model
title_full A Universal MDO Framework Based on the Adaptive Discipline Surrogate Model
title_fullStr A Universal MDO Framework Based on the Adaptive Discipline Surrogate Model
title_full_unstemmed A Universal MDO Framework Based on the Adaptive Discipline Surrogate Model
title_sort universal mdo framework based on the adaptive discipline surrogate model
publisher Hindawi Limited
series International Journal of Aerospace Engineering
issn 1687-5966
1687-5974
publishDate 2018-01-01
description High time-consuming computation has become an obvious characteristic of the modern multidisciplinary design optimization (MDO) solving procedure. To reduce the computing cost and improve solving environment of the traditional MDO solution method, this article introduces a novel universal MDO framework based on the support of adaptive discipline surrogate model with asymptotical correction by discriminative sampling. The MDO solving procedure is decomposed into three parts: framework level, architecture level, and discipline level. Framework level controls the MDO solving procedure and carries out convergence estimation; architecture level executes the MDO solution method with discipline surrogate models; discipline level analyzes discipline models to establish adaptive discipline surrogate models based on a stochastic asymptotical sampling method. The MDO solving procedure is executed as an iterative way included with discipline surrogate model correcting, MDO solving, and discipline analyzing. These are accomplished by the iteration process control at the framework level, the MDO decomposition at the architecture level, and the discipline surrogate model update at the discipline level. The framework executes these three parts separately in a hierarchical and modularized way. The discipline models and disciplinary design point sampling process are all independent; parallel computing could be used to increase computing efficiency in parallel environment. Several MDO benchmarks are tested in this MDO framework. Results show that the number of discipline evaluations in the framework is half or less of the original MDO solution method and is very useful and suitable for the complex high-fidelity MDO problem.
url http://dx.doi.org/10.1155/2018/9139267
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