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Materials Informatics at NASA GRC: Machine Learning Surrogate Modeling, Data Management, and Integrated Toolsets for Establishing/Maintaining the Digital ThreadIntegrated Computational Materials Engineering (ICME) has recently received widespread attention due to its promises in reducing dependence on physical testing for engineering design by relying on simulation, reducing both time and cost to market for various applications. ICME however requires validated multiscale material models, which heavily depend on available test data with full material and test pedigree, including material processing, test and measurement equipment, raw data collection, and analysis methodology and results that is findable and usable, along with integrated, efficient toolsets for effectively passing information across various length and time scales across such models. At the NASA Glenn Research Center under the Transformational Tools and Technologies Project, significant recent efforts have been directed towards establishing the required cyberinfrastructure to enable optimized ICME processes and the design of “fit-for-purpose” materials to achieve the goals outlined in the NASA Vision 2040 report. Such efforts include development of multiscale physics-based material models, which can be used to train highly efficient surrogate machine learning models, development of best practices and infrastructure for effective, traceable materials information management, and development of toolsets that integrate with physics-based codes, machine learning models, and an information management system to enable high throughput of materials data collection and analysis, establishment of digital twins and the digital thread, and automation of the ICME design process for material optimization.
Document ID
20240013403
Acquisition Source
Glenn Research Center
Document Type
Presentation
Authors
Brandon Hearley
(Glenn Research Center Cleveland, United States)
Date Acquired
October 22, 2024
Subject Category
Cybernetics, Artificial Intelligence and Robotics
Composite Materials
Meeting Information
Meeting: Machine Learning and Data Science in Materials Research (MLDSMR) Seminar
Location: Akron, OH
Country: US
Start Date: October 29, 2024
Sponsors: University of Akron
Funding Number(s)
WBS: 109492.02.03.05.02
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
Technical Review
Single Expert
Keywords
Machine Learning
Data Science
Information Management
Materials Informatics
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