项目编号: | 1507928
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项目名称: | CDS&E: Formalisms and Tools for Data-enabled Turbulence Modeling |
作者: | Karthikeyan Duraisamy
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承担单位: | University of Michigan Ann Arbor
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批准年: | 2014
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开始日期: | 2015-09-01
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结束日期: | 2018-08-31
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资助金额: | USD399986
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资助来源: | US-NSF
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项目类别: | Standard Grant
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国家: | US
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语种: | 英语
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特色学科分类: | Engineering - Chemical, Bioengineering, Environmental, and Transport Systems
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英文关键词: | tool
; datum
; modeling knowledge
; machine learning
; turbulence
; data-driven physical modeling
; data-driven
; relevant modeling information
; properly-posed data-driven-turbulence-modeling problem
; data-driven modeling
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英文摘要: | The goal of the proposed research is to devise rigorous mathematical techniques that utilize large databases obtained by simulations to develop predictive models of turbulent flow. Even though the proposal is focused on turbulence, the tools to be developed will be of general applicability for data-driven modeling in other areas of science and engineering.
Predictive models have not yet taken full advantage of the massive amounts of data being generated by the fluids community. New strategies are needed to extract information and modeling knowledge from data. Adjoint-driven inverse problems will be invoked to extract relevant modeling information from data. An important aspect of this approach is that the data is processed in the context in which it is needed for prediction. Domain-specific machine learning techniques will be used to convert information to modeling knowledge. In essence, the inverse solution infers functional deficiencies in the model and machine learning is used to reconstruct the missing functional form. The co-PIs plan to investigate how to identify and formulate a properly-posed data-driven-turbulence-modeling problem, the implications that these approaches have in more general data-driven computational physics applications, and the most effective ways to use machine learning in a predictive physics setting. Applications to be explored include transition to turbulence, thermal transport, and near-wall turbulent stress closures. The proposed work is expected to result in improved closure models for Reynolds-Averaged as well as hybrid Reynolds-Averaged/Large Eddy simulations. While the focus of the proposed work is on turbulent flow applications, several aspects of the formulation and tools will be of more general value to the field of data-driven physical modeling. Educational activities that would integrate machine learning into fluid dynamics courses are proposed. Tools and technologies will be shared with the community and the industry |
资源类型: | 项目
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标识符: | http://119.78.100.158/handle/2HF3EXSE/93315
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Appears in Collections: | 影响、适应和脆弱性 气候减缓与适应
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Recommended Citation: |
Karthikeyan Duraisamy. CDS&E: Formalisms and Tools for Data-enabled Turbulence Modeling. 2014-01-01.
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