Abstract

Microstructures encountered in the various metal additive manufacturing (AM) processes are unique because these form under rapid solidification conditions not frequently experienced elsewhere. Some of these highly nonequilibrium microstructures are subject to self-tempering or even forced to undergo recrystallisation when extra energy is supplied in the form of heat as adjacent layers are deposited. Further complexity arises from the fact that the same microstructure may be attained via more than one route—since many permutations and combinations available in terms of AM process parameters give rise to multiple phase transformation pathways. There are additional difficulties in obtaining insights into the underlying phenomena. For instance, the unstable, rapid and dynamic nature of the powder-based AM processes and the microscopic scale of the melt pool behaviour make it difficult to gather crucial information through in-situ observations of the process. Therefore, it is unsurprising that many of the mechanisms responsible for the final microstructures—including defects—found in AM parts are yet to be fully understood. Fortunately, however, computational modelling provides a means for recreating these processes in the virtual domain for testing theories—thereby discovering and rationalising the potential influences of various process parameters on microstructure formation mechanisms. In what is expected to be fertile ground for research and development for some time to come, modelling and experimental efforts that go hand in glove are likely to provide the fastest route to uncovering the unique and complex physical phenomena that determine metal AM microstructures. In this short Editorial, we summarise the status quo and identify research opportunities for modelling microstructures in AM. The vital role that will be played by machine learning (ML) models is also discussed.

Highlights

  • Interdisciplinary Centre for Advanced Materials Simulation (ICAMS), Ruhr-Universität Bochum, Abstract: Microstructures encountered in the various metal additive manufacturing (AM) processes are unique because these form under rapid solidification conditions not frequently experienced elsewhere

  • An example of the distinctive AM microstructures around the microscopic melt pools is given in Figure 2 for the AlSi10Mg alloy solidifying in an L-powder bed fusion (PBF) setting

  • We provide a brief overview of the status quo in modelling efforts aimed at AM-related microstructure and discuss challenges and research gaps

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Summary

Introduction with regard to jurisdictional claims in

The strategy of depositing metallic material layer by layer to make components bestows additive manufacturing (AM) with numerous advantages (e.g., [1,2,3]) and creates several challenges (e.g., [4,5,6]). Due to the rapid freezing rates and other factors mentioned above, the AM microstrucMicrostructures resulting from solidification are a function of the heat extraction tures significantly differ from those obtained in traditional processes (e.g., casting) in grain alloy chemistry, and defect nucleation conditions. They determine the properties morphology distributions, populations and crystallographic texture [14,15]—a commechanical, thermophysical) of the AM partTi6Al4V.

Modelling Methods
Temperature of the powder calculated by SPH following a laser
Modelling of Nonequilibrium Microstructures Encountered in AM
Machine Learning Models
Research Gaps and Opportunities
Accounting for Two-Way Coupling between Temperature and Microstructure
Impact of Melt Flow at the Mesoscopic Level
Improved Models for Grain Nucleation
Improved Strategies to Account for Multi-Component Diffusion
The Need for Reliable Material Data for AM Materials
Improved Strategies to Account for Solid-State Precipitation
6.10. Predictive Modelling of Hot Tearing
6.11. Accounting for Novel AM Mechanisms at the Microscopic Level
6.13. Heat Treatment of AM Microstructures
6.14. High Entropy Alloys
Future Perspectives
Findings
Methods
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