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Abstract
Active learning (AL) has the potential to accelerate materials discovery. Multi-principle Component Alloys (MPCAs) that maintain their mechanical properties at high temperatures are in high demand for aerospace and aeronautics applications. Coupling AL with physics-based simulations, we created an autonomous workflow to identify potential candidate materials. The workflow can be accessed here: https://nanohub.org/tools/activemeltheas
In this tool, we created a visualization dashboard for the explored MPCAs outlined in our publication:
Farache, D. E., Verduzco, J. C., McClure, Z. D., Desai, S., & Strachan, A. (2021). Active learning and molecular dynamics simulations to find high melting temperature alloys. arXiv preprint arXiv:2110.08136.
This dashboard allows for reproducibility of the results of our paper, in a simple low-dimensional representation of the high-dimensional space.
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This effort was supported by the US National Science Foundation (DMREF-1922316). We acknowledge computational resources from nanoHUB and Purdue University through the Network for Computational Nanotechnology.
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