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...
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Veröffentlicht in: | Physics of fluids (1994) 2024-08, Vol.36 (8) |
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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 |
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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> |
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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 |
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