Aerodynamic shape optimization using a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition

Aerodynamic shape optimization based on computational fluid dynamics still has a huge demand for improvement in the optimization effect and efficiency when optimizing the unstable flow of airfoils. This article presents a physics-informed hot-start method combined with modified metric-based proper o...

Ausführliche Beschreibung

Gespeichert in:
Bibliographische Detailangaben
Veröffentlicht in:Physics of fluids (1994) 2024-08, Vol.36 (8)
Hauptverfasser: Zhang, Chenliang, Chen, Hongbo, Xu, Xiaoyu, Duan, Yanhui, Wang, Guangxue
Format: Artikel
Sprache:eng
Schlagworte:
Online-Zugang:Volltext
Tags: Tag hinzufügen
Keine Tags, Fügen Sie den ersten Tag hinzu!
container_end_page
container_issue 8
container_start_page
container_title Physics of fluids (1994)
container_volume 36
creator Zhang, Chenliang
Chen, Hongbo
Xu, Xiaoyu
Duan, Yanhui
Wang, Guangxue
description Aerodynamic shape optimization based on computational fluid dynamics still has a huge demand for improvement in the optimization effect and efficiency when optimizing the unstable flow of airfoils. This article presents a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition (MPOD-ML-Phys). The data-based filtering strategy is a core step in the original metric-based proper orthogonal decomposition method (MPOD), but existing filtering strategies generate a significant amount of additional computational consumption. Therefore, this article applies machine learning methods to data-based filtering strategy in MPOD and establishes a modified MPOD method (MPOD-ML). In addition, during the MPOD-ML process, a lot of hidden physical knowledge that is beneficial for optimization will also be generated. This article combines Bayesian optimization to construct an MPOD-ML-Phys method, which fully utilizes the flow physical knowledge in MPOD-ML. The efficiency and effect of MPOD-ML and MPOD-ML-Phys are validated by two typical cases: inverse and direct design for airfoils. The results indicate that both MPOD-ML and MPOD-ML-Phys methods can effectively improve the overall optimization efficiency. However, the intervention of machine learning models has significantly reduced the robustness of the MPOD-ML method, while the embedding of physical knowledge makes MPOD-ML-Phys more robust. Meanwhile, the optimized airfoil obtained by MPOD-ML-Phys has better drag divergence characteristics, a later flow separation point, and better flow stability.
doi_str_mv 10.1063/5.0224111
format Article
fullrecord <record><control><sourceid>proquest_scita</sourceid><recordid>TN_cdi_proquest_journals_3092452185</recordid><sourceformat>XML</sourceformat><sourcesystem>PC</sourcesystem><sourcerecordid>3092452185</sourcerecordid><originalsourceid>FETCH-LOGICAL-c182t-82f1f0ad384a173017ce29a0ba2f078339d3cb58b37a0218b923598577293d9f3</originalsourceid><addsrcrecordid>eNp9kMtKAzEUhoMoWKsL3yDgSiE1l84kWZbiDQpudD1kcumkdCZjkiL1GXxoU-va1TmH__vPOfwAXBM8I7hm99UMUzonhJyACcFCIl7X9emh5xjVNSPn4CKlDcaYSVpPwPfCxmD2g-q9hqlTo4VhzL73Xyr7MMBd8sMaKjh2--R1Qn5wIfbWwC5klLKKGfY2d8FAHfrWD0X59LmDfTDe-TIVNXqNWpXKMMYw2ghDLI51GNQWGlt8Y0j-cO0SnDm1Tfbqr07B--PD2_IZrV6fXpaLFdJE0IwEdcRhZZiYK8IZJlxbKhVuFXWYC8akYbqtRMu4wpSIVlJWSVFxTiUz0rEpuDnuLf987GzKzSbsYnknNQxLOq-KqSrU7ZHSMaQUrWvG6HsV9w3BzSHspmr-wi7s3ZFN2uff5P6BfwAFM4ET</addsrcrecordid><sourcetype>Aggregation Database</sourcetype><iscdi>true</iscdi><recordtype>article</recordtype><pqid>3092452185</pqid></control><display><type>article</type><title>Aerodynamic shape optimization using a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition</title><source>AIP Journals (American Institute of Physics)</source><creator>Zhang, Chenliang ; Chen, Hongbo ; Xu, Xiaoyu ; Duan, Yanhui ; Wang, Guangxue</creator><creatorcontrib>Zhang, Chenliang ; Chen, Hongbo ; Xu, Xiaoyu ; Duan, Yanhui ; Wang, Guangxue</creatorcontrib><description>Aerodynamic shape optimization based on computational fluid dynamics still has a huge demand for improvement in the optimization effect and efficiency when optimizing the unstable flow of airfoils. This article presents a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition (MPOD-ML-Phys). The data-based filtering strategy is a core step in the original metric-based proper orthogonal decomposition method (MPOD), but existing filtering strategies generate a significant amount of additional computational consumption. Therefore, this article applies machine learning methods to data-based filtering strategy in MPOD and establishes a modified MPOD method (MPOD-ML). In addition, during the MPOD-ML process, a lot of hidden physical knowledge that is beneficial for optimization will also be generated. This article combines Bayesian optimization to construct an MPOD-ML-Phys method, which fully utilizes the flow physical knowledge in MPOD-ML. The efficiency and effect of MPOD-ML and MPOD-ML-Phys are validated by two typical cases: inverse and direct design for airfoils. The results indicate that both MPOD-ML and MPOD-ML-Phys methods can effectively improve the overall optimization efficiency. However, the intervention of machine learning models has significantly reduced the robustness of the MPOD-ML method, while the embedding of physical knowledge makes MPOD-ML-Phys more robust. Meanwhile, the optimized airfoil obtained by MPOD-ML-Phys has better drag divergence characteristics, a later flow separation point, and better flow stability.</description><identifier>ISSN: 1070-6631</identifier><identifier>EISSN: 1089-7666</identifier><identifier>DOI: 10.1063/5.0224111</identifier><identifier>CODEN: PHFLE6</identifier><language>eng</language><publisher>Melville: American Institute of Physics</publisher><subject>Airfoils ; Computational fluid dynamics ; Decomposition ; Efficiency ; Filtration ; Flow separation ; Flow stability ; Machine learning ; Optimization ; Proper Orthogonal Decomposition ; Shape effects ; Shape optimization</subject><ispartof>Physics of fluids (1994), 2024-08, Vol.36 (8)</ispartof><rights>Author(s)</rights><rights>2024 Author(s). Published under an exclusive license by AIP Publishing.</rights><lds50>peer_reviewed</lds50><woscitedreferencessubscribed>false</woscitedreferencessubscribed><cites>FETCH-LOGICAL-c182t-82f1f0ad384a173017ce29a0ba2f078339d3cb58b37a0218b923598577293d9f3</cites><orcidid>0000-0002-5901-6440</orcidid></display><links><openurl>$$Topenurl_article</openurl><openurlfulltext>$$Topenurlfull_article</openurlfulltext><thumbnail>$$Tsyndetics_thumb_exl</thumbnail><link.rule.ids>314,776,780,790,4498,27901,27902</link.rule.ids></links><search><creatorcontrib>Zhang, Chenliang</creatorcontrib><creatorcontrib>Chen, Hongbo</creatorcontrib><creatorcontrib>Xu, Xiaoyu</creatorcontrib><creatorcontrib>Duan, Yanhui</creatorcontrib><creatorcontrib>Wang, Guangxue</creatorcontrib><title>Aerodynamic shape optimization using a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition</title><title>Physics of fluids (1994)</title><description>Aerodynamic shape optimization based on computational fluid dynamics still has a huge demand for improvement in the optimization effect and efficiency when optimizing the unstable flow of airfoils. This article presents a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition (MPOD-ML-Phys). The data-based filtering strategy is a core step in the original metric-based proper orthogonal decomposition method (MPOD), but existing filtering strategies generate a significant amount of additional computational consumption. Therefore, this article applies machine learning methods to data-based filtering strategy in MPOD and establishes a modified MPOD method (MPOD-ML). In addition, during the MPOD-ML process, a lot of hidden physical knowledge that is beneficial for optimization will also be generated. This article combines Bayesian optimization to construct an MPOD-ML-Phys method, which fully utilizes the flow physical knowledge in MPOD-ML. The efficiency and effect of MPOD-ML and MPOD-ML-Phys are validated by two typical cases: inverse and direct design for airfoils. The results indicate that both MPOD-ML and MPOD-ML-Phys methods can effectively improve the overall optimization efficiency. However, the intervention of machine learning models has significantly reduced the robustness of the MPOD-ML method, while the embedding of physical knowledge makes MPOD-ML-Phys more robust. Meanwhile, the optimized airfoil obtained by MPOD-ML-Phys has better drag divergence characteristics, a later flow separation point, and better flow stability.</description><subject>Airfoils</subject><subject>Computational fluid dynamics</subject><subject>Decomposition</subject><subject>Efficiency</subject><subject>Filtration</subject><subject>Flow separation</subject><subject>Flow stability</subject><subject>Machine learning</subject><subject>Optimization</subject><subject>Proper Orthogonal Decomposition</subject><subject>Shape effects</subject><subject>Shape optimization</subject><issn>1070-6631</issn><issn>1089-7666</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2024</creationdate><recordtype>article</recordtype><recordid>eNp9kMtKAzEUhoMoWKsL3yDgSiE1l84kWZbiDQpudD1kcumkdCZjkiL1GXxoU-va1TmH__vPOfwAXBM8I7hm99UMUzonhJyACcFCIl7X9emh5xjVNSPn4CKlDcaYSVpPwPfCxmD2g-q9hqlTo4VhzL73Xyr7MMBd8sMaKjh2--R1Qn5wIfbWwC5klLKKGfY2d8FAHfrWD0X59LmDfTDe-TIVNXqNWpXKMMYw2ghDLI51GNQWGlt8Y0j-cO0SnDm1Tfbqr07B--PD2_IZrV6fXpaLFdJE0IwEdcRhZZiYK8IZJlxbKhVuFXWYC8akYbqtRMu4wpSIVlJWSVFxTiUz0rEpuDnuLf987GzKzSbsYnknNQxLOq-KqSrU7ZHSMaQUrWvG6HsV9w3BzSHspmr-wi7s3ZFN2uff5P6BfwAFM4ET</recordid><startdate>202408</startdate><enddate>202408</enddate><creator>Zhang, Chenliang</creator><creator>Chen, Hongbo</creator><creator>Xu, Xiaoyu</creator><creator>Duan, Yanhui</creator><creator>Wang, Guangxue</creator><general>American Institute of Physics</general><scope>AAYXX</scope><scope>CITATION</scope><scope>8FD</scope><scope>H8D</scope><scope>L7M</scope><orcidid>https://orcid.org/0000-0002-5901-6440</orcidid></search><sort><creationdate>202408</creationdate><title>Aerodynamic shape optimization using a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition</title><author>Zhang, Chenliang ; Chen, Hongbo ; Xu, Xiaoyu ; Duan, Yanhui ; Wang, Guangxue</author></sort><facets><frbrtype>5</frbrtype><frbrgroupid>cdi_FETCH-LOGICAL-c182t-82f1f0ad384a173017ce29a0ba2f078339d3cb58b37a0218b923598577293d9f3</frbrgroupid><rsrctype>articles</rsrctype><prefilter>articles</prefilter><language>eng</language><creationdate>2024</creationdate><topic>Airfoils</topic><topic>Computational fluid dynamics</topic><topic>Decomposition</topic><topic>Efficiency</topic><topic>Filtration</topic><topic>Flow separation</topic><topic>Flow stability</topic><topic>Machine learning</topic><topic>Optimization</topic><topic>Proper Orthogonal Decomposition</topic><topic>Shape effects</topic><topic>Shape optimization</topic><toplevel>peer_reviewed</toplevel><toplevel>online_resources</toplevel><creatorcontrib>Zhang, Chenliang</creatorcontrib><creatorcontrib>Chen, Hongbo</creatorcontrib><creatorcontrib>Xu, Xiaoyu</creatorcontrib><creatorcontrib>Duan, Yanhui</creatorcontrib><creatorcontrib>Wang, Guangxue</creatorcontrib><collection>CrossRef</collection><collection>Technology Research Database</collection><collection>Aerospace Database</collection><collection>Advanced Technologies Database with Aerospace</collection><jtitle>Physics of fluids (1994)</jtitle></facets><delivery><delcategory>Remote Search Resource</delcategory><fulltext>fulltext</fulltext></delivery><addata><au>Zhang, Chenliang</au><au>Chen, Hongbo</au><au>Xu, Xiaoyu</au><au>Duan, Yanhui</au><au>Wang, Guangxue</au><format>journal</format><genre>article</genre><ristype>JOUR</ristype><atitle>Aerodynamic shape optimization using a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition</atitle><jtitle>Physics of fluids (1994)</jtitle><date>2024-08</date><risdate>2024</risdate><volume>36</volume><issue>8</issue><issn>1070-6631</issn><eissn>1089-7666</eissn><coden>PHFLE6</coden><abstract>Aerodynamic shape optimization based on computational fluid dynamics still has a huge demand for improvement in the optimization effect and efficiency when optimizing the unstable flow of airfoils. This article presents a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition (MPOD-ML-Phys). The data-based filtering strategy is a core step in the original metric-based proper orthogonal decomposition method (MPOD), but existing filtering strategies generate a significant amount of additional computational consumption. Therefore, this article applies machine learning methods to data-based filtering strategy in MPOD and establishes a modified MPOD method (MPOD-ML). In addition, during the MPOD-ML process, a lot of hidden physical knowledge that is beneficial for optimization will also be generated. This article combines Bayesian optimization to construct an MPOD-ML-Phys method, which fully utilizes the flow physical knowledge in MPOD-ML. The efficiency and effect of MPOD-ML and MPOD-ML-Phys are validated by two typical cases: inverse and direct design for airfoils. The results indicate that both MPOD-ML and MPOD-ML-Phys methods can effectively improve the overall optimization efficiency. However, the intervention of machine learning models has significantly reduced the robustness of the MPOD-ML method, while the embedding of physical knowledge makes MPOD-ML-Phys more robust. Meanwhile, the optimized airfoil obtained by MPOD-ML-Phys has better drag divergence characteristics, a later flow separation point, and better flow stability.</abstract><cop>Melville</cop><pub>American Institute of Physics</pub><doi>10.1063/5.0224111</doi><tpages>21</tpages><orcidid>https://orcid.org/0000-0002-5901-6440</orcidid></addata></record>
fulltext fulltext
identifier ISSN: 1070-6631
ispartof Physics of fluids (1994), 2024-08, Vol.36 (8)
issn 1070-6631
1089-7666
language eng
recordid cdi_proquest_journals_3092452185
source AIP Journals (American Institute of Physics)
subjects Airfoils
Computational fluid dynamics
Decomposition
Efficiency
Filtration
Flow separation
Flow stability
Machine learning
Optimization
Proper Orthogonal Decomposition
Shape effects
Shape optimization
title Aerodynamic shape optimization using a physics-informed hot-start method combined with modified metric-based proper orthogonal decomposition
url https://sfx.bib-bvb.de/sfx_tum?ctx_ver=Z39.88-2004&ctx_enc=info:ofi/enc:UTF-8&ctx_tim=2025-02-07T19%3A42%3A13IST&url_ver=Z39.88-2004&url_ctx_fmt=infofi/fmt:kev:mtx:ctx&rfr_id=info:sid/primo.exlibrisgroup.com:primo3-Article-proquest_scita&rft_val_fmt=info:ofi/fmt:kev:mtx:journal&rft.genre=article&rft.atitle=Aerodynamic%20shape%20optimization%20using%20a%20physics-informed%20hot-start%20method%20combined%20with%20modified%20metric-based%20proper%20orthogonal%20decomposition&rft.jtitle=Physics%20of%20fluids%20(1994)&rft.au=Zhang,%20Chenliang&rft.date=2024-08&rft.volume=36&rft.issue=8&rft.issn=1070-6631&rft.eissn=1089-7666&rft.coden=PHFLE6&rft_id=info:doi/10.1063/5.0224111&rft_dat=%3Cproquest_scita%3E3092452185%3C/proquest_scita%3E%3Curl%3E%3C/url%3E&disable_directlink=true&sfx.directlink=off&sfx.report_link=0&rft_id=info:oai/&rft_pqid=3092452185&rft_id=info:pmid/&rfr_iscdi=true