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Integrated computational materials design for high-performance alloys

Published online by Cambridge University Press:  27 November 2015

Wei Xiong
Affiliation:
Department of Materials Science and Engineering, Northwestern University, USA; wxiong@northwestern.edu and xwei@kth.se
Gregory B. Olson
Affiliation:
QuesTek Innovations LLC, USA; and Department of Materials Science and Engineering, Northwestern University, USA; golson@questek.com

Abstract

Major advances have been made over the past 30 years in the development of an integrated computational materials design (ICMD) technology. The hierarchical structure of its methods, tools, and supporting fundamental materials databases is reviewed here, with an emphasis on successful applications of CALPHAD (calculation of phase diagrams)-based tools as an example of ICMD, expressing mechanistic understanding in quantitative form to support science-based materials engineering. Opportunities are identified for rapid expansion of CALPHAD databases, as well as a major restructuring of materials education.

Information

Type
Research Article
Copyright
Copyright © Materials Research Society 2015 
Figure 0

Figure 1. Three-link chain model of the central paradigm of materials science and engineering. Reproduced with permission from Reference 2. © 1997 American Association for the Advancement of Science.

Figure 1

Table I. Compositions of copper–tin alloys for tool manufacturing.

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Figure 2. Comparison of σ-phase boundary prediction between CALPHAD and PHACOMP for the (a) cobalt–nickel–chromium and (b) molybdenum–nickel–chromium systems. The red dashed line is the revised model proposed by Murphy et al.23 Note: bcc, body-centered cubic; fcc, face-centered cubic. σ is the topologically close-packed embrittling phase.

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Figure 3. Time evolution of component-level technology readiness levels (TRLs) and materials development milestones for the two computationally designed landing-gear steels Ferrium S53 and M54 developed by QuesTek Innovations LLC.11 Application of Materials by Design and accelerated insertion of materials technology greatly accelerated the development of Ferrium S53 and M54. Note: MMPDS, Metallic Materials Properties Development and Standardization. Adapted with permission from Reference 11. © 2014 Elsevier.

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Figure 4. Overall hierarchical architecture of QuesTek’s iCMD methods, tools (green), and databases (yellow) for next-generation computational materials design and accelerated qualification.11 Note that iCMD is a toolkit used during application of ICME methods based on the materials genome. Reproduced with permission from Reference 11. © 2014 Elsevier.

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Figure 5. Working flowchart for revealing process–microstructure–property relations.

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Figure 6. Sensitivity analysis with composition variations for Ferrium S53 alloys.35 Results were generated by 1000 runs on a Pentium IV 2.2-GHz CPU for 12 min. Precipitation phases include the M2C carbide phase and intermetallics. Reproduced with permission from Reference 35. © 2006 C. Kuehmann.

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Table II. Computational materials modeling methods and tools.a