Matches in SemOpenAlex for { <https://semopenalex.org/work/W4226246182> ?p ?o ?g. }
- W4226246182 endingPage "85" @default.
- W4226246182 startingPage "63" @default.
- W4226246182 abstract "UnderstandingFlow control andMachine learning solving fluid-related problems pose a significant demand for computationally inexpensive flow simulationsSimulation, which the conventional fluid mechanics approach fails to satisfy. Thus, researchers choose to incorporate fluid mechanics with Machine LearningMachine learning (ML) as a possible solution. This technology provides several tools and algorithms that help with prediction-based decision making, building optimized control theories, experience-based learning, and many more, all of which depend upon available data. Since its inception, the field of fluid mechanics has generated a lot in terms of experimental and simulationSimulation data. Hence, we can apply Machine LearningMachine learning to extract meaningful information from fluid flow databases. Complex domains of fluid mechanics such as turbulence modelingTurbulence modeling, active flow controlFlow control, and optimization all seek to gain from such a multidisciplinary approach. However, these domains from the world of fluids pose new problems for the data science world. These newly found complexities encourage engineers to create more robust learning models than conventional ones. Thus, a blend of fluid mechanics and machine learningMachine learning creates a powerful and vastly complex field of study that will help completely revolutionize current research and industrial applications. This paper covers research from the earliest to some of the most recent MLMachine learning algorithms and provides a brief overview of ways these algorithms complement the field of fluid mechanics. Three case studies—turbulence closure modeling using ML, flow controlFlow control and manipulation using MLMachine learning, and aerodynamic shape optimization, are used to explain this. To help better understand these applications, the underlying fundamentals of supervised, semi-supervised, and unsupervised learning models and some of the most widely used algorithms are also under consideration in the paper. The paper, thus, covers in great depth both the fields of fluids and MLMachine learning" @default.
- W4226246182 created "2022-05-05" @default.
- W4226246182 creator A5004994610 @default.
- W4226246182 creator A5080772535 @default.
- W4226246182 date "2022-01-01" @default.
- W4226246182 modified "2023-09-26" @default.
- W4226246182 title "Optimization of Fluid Modeling and Flow Control Processes Using Machine Learning: A Brief Review" @default.
- W4226246182 cites W117455490 @default.
- W4226246182 cites W1498436455 @default.
- W4226246182 cites W1504641618 @default.
- W4226246182 cites W1879942928 @default.
- W4226246182 cites W1970419827 @default.
- W4226246182 cites W1977556410 @default.
- W4226246182 cites W1983406208 @default.
- W4226246182 cites W1985702473 @default.
- W4226246182 cites W2003357516 @default.
- W4226246182 cites W2009405650 @default.
- W4226246182 cites W2040870580 @default.
- W4226246182 cites W2042457194 @default.
- W4226246182 cites W2050195777 @default.
- W4226246182 cites W2058825523 @default.
- W4226246182 cites W2064675550 @default.
- W4226246182 cites W2067619114 @default.
- W4226246182 cites W2076110561 @default.
- W4226246182 cites W2078626246 @default.
- W4226246182 cites W2082477605 @default.
- W4226246182 cites W2089597980 @default.
- W4226246182 cites W2093748812 @default.
- W4226246182 cites W2113640817 @default.
- W4226246182 cites W2117130368 @default.
- W4226246182 cites W2121317260 @default.
- W4226246182 cites W2122861381 @default.
- W4226246182 cites W2127412976 @default.
- W4226246182 cites W2128830598 @default.
- W4226246182 cites W2130259898 @default.
- W4226246182 cites W2131537960 @default.
- W4226246182 cites W2135443979 @default.
- W4226246182 cites W2137983211 @default.
- W4226246182 cites W2138668808 @default.
- W4226246182 cites W2140405352 @default.
- W4226246182 cites W2145339207 @default.
- W4226246182 cites W2147492008 @default.
- W4226246182 cites W2161608691 @default.
- W4226246182 cites W2161872510 @default.
- W4226246182 cites W2167815629 @default.
- W4226246182 cites W2168479071 @default.
- W4226246182 cites W2534240011 @default.
- W4226246182 cites W2618530766 @default.
- W4226246182 cites W2625219738 @default.
- W4226246182 cites W2765811365 @default.
- W4226246182 cites W2766447205 @default.
- W4226246182 cites W2787894218 @default.
- W4226246182 cites W2914919122 @default.
- W4226246182 cites W2963470893 @default.
- W4226246182 cites W2964027982 @default.
- W4226246182 cites W2964198579 @default.
- W4226246182 cites W2967095864 @default.
- W4226246182 cites W2979543333 @default.
- W4226246182 cites W2981246174 @default.
- W4226246182 cites W2982316857 @default.
- W4226246182 cites W2984353870 @default.
- W4226246182 cites W3047006557 @default.
- W4226246182 cites W3048239163 @default.
- W4226246182 cites W3090502885 @default.
- W4226246182 cites W3098678593 @default.
- W4226246182 cites W3102140816 @default.
- W4226246182 cites W3105245152 @default.
- W4226246182 cites W3106241571 @default.
- W4226246182 cites W3106462682 @default.
- W4226246182 cites W3193897267 @default.
- W4226246182 cites W4233518571 @default.
- W4226246182 cites W4241430235 @default.
- W4226246182 cites W4244340606 @default.
- W4226246182 doi "https://doi.org/10.1007/978-981-19-0676-3_6" @default.
- W4226246182 hasPublicationYear "2022" @default.
- W4226246182 type Work @default.
- W4226246182 citedByCount "0" @default.
- W4226246182 crossrefType "book-chapter" @default.
- W4226246182 hasAuthorship W4226246182A5004994610 @default.
- W4226246182 hasAuthorship W4226246182A5080772535 @default.
- W4226246182 hasConcept C119857082 @default.
- W4226246182 hasConcept C121332964 @default.
- W4226246182 hasConcept C154945302 @default.
- W4226246182 hasConcept C196558001 @default.
- W4226246182 hasConcept C202444582 @default.
- W4226246182 hasConcept C33923547 @default.
- W4226246182 hasConcept C38349280 @default.
- W4226246182 hasConcept C41008148 @default.
- W4226246182 hasConcept C43133876 @default.
- W4226246182 hasConcept C57879066 @default.
- W4226246182 hasConcept C90278072 @default.
- W4226246182 hasConcept C9652623 @default.
- W4226246182 hasConceptScore W4226246182C119857082 @default.
- W4226246182 hasConceptScore W4226246182C121332964 @default.
- W4226246182 hasConceptScore W4226246182C154945302 @default.
- W4226246182 hasConceptScore W4226246182C196558001 @default.
- W4226246182 hasConceptScore W4226246182C202444582 @default.
- W4226246182 hasConceptScore W4226246182C33923547 @default.