Machine learning for shock compression of solids using scarce data

Author:

Balakrishnan Sangeeth1ORCID,VanGessel Francis G.2ORCID,Barnes Brian C.3ORCID,Doherty Ruth M.4ORCID,Wilson William H.4ORCID,Boukouvalas Zois5ORCID,Fuge Mark D.1ORCID,Chung Peter W.1ORCID

Affiliation:

1. Center for Engineering Concepts Development, Department of Mechanical Engineering, University of Maryland 1 , College Park, Maryland 20742, USA

2. U.S. Naval Surface Warfare Center, Indian Head Division 2 , Indian Head, Maryland 20640, USA

3. U.S. DEVCOM Army Research Laboratory 3 , Aberdeen Proving Ground, Maryland 21005, USA

4. Energetics Technology Center 4 , Indian Head, Maryland 20640, USA

5. American University 5 Department of Mathematics and Statistics, , Washington, DC 20016, USA

Abstract

Data-driven machine learning techniques can be useful for the rapid evaluation of material properties in extreme environments, particularly in cases where direct access to the materials is not possible. Such problems occur in high-throughput material screening and material design approaches where many candidates may not be amenable to direct experimental examination. In this paper, we perform an exhaustive examination of the applicability of machine learning for the estimation of isothermal shock compression properties, specifically the shock Hugoniot, for diverse material systems. A comprehensive analysis is conducted where effects of scarce data, variances in source data, feature choices, and model choices are systematically explored. New modeling strategies are introduced based on feature engineering, including a feature augmentation approach, to mitigate the effects of scarce data. The findings show significant promise of machine learning techniques for design and discovery of materials suited for shock compression applications.

Funder

Office of Naval Research

Energetics Technology Center

DEVCOM Army Research Laboratory

Publisher

AIP Publishing

Subject

General Physics and Astronomy

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