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Article
Searching For Unknown Material Properties For AM Simulations
Metals
  • Aaron Flood
  • Rachel Boillat
  • Sriram Praneeth Isanaka, Missouri University of Science and Technology
  • Frank W. Liou, Missouri University of Science and Technology
Abstract

Additive manufacturing (AM) simulations are effective for materials that are well characterized and published; however, for newer or proprietary materials, they cannot provide accurate results due to the lack of knowledge of the material properties. This work demonstrates the process of the application of mathematical search algorithms to develop an optimized material dataset which results in accurate simulations for the laser directed energy deposition (DED) process. This was performed by first using a well-characterized material, Ti-64, to show the error in the predicted melt pool was accurate, and the error was found to be less than two resolution steps. Then, for 7000-series aluminum using a generic material property dataset from sister alloys, the error was found to be over 600%. The Nelder–Mead search algorithm was then applied to the problem and was able to develop an optimized dataset that had a combined width and depth error of just 9.1%, demonstrating that it is possible to develop an optimized material property dataset that facilitates more accurate simulation of an under-characterized material.

Department(s)
Mechanical and Aerospace Engineering
Publication Status
Open Access
Comments

National Science Foundation, Grant CMMI 1625736

Keywords and Phrases
  • additive manufacturing (AM),
  • additive manufacturing (AM) simulation,
  • aluminum,
  • input parameter optimization,
  • material properties,
  • mathematical modeling,
  • mathematical search
Document Type
Article - Journal
Document Version
Final Version
File Type
text
Language(s)
English
Rights
© 2023 The Authors, All rights reserved.
Creative Commons Licensing
Creative Commons Attribution 4.0
Publication Date
11-1-2023
Publication Date
01 Nov 2023
Citation Information
Aaron Flood, Rachel Boillat, Sriram Praneeth Isanaka and Frank W. Liou. "Searching For Unknown Material Properties For AM Simulations" Metals Vol. 13 Iss. 11 (2023) ISSN: 2075-4701
Available at: http://works.bepress.com/frank-liou/379/