Learning robust parameter inference and density reconstruction in flyer plate impact experiments
Evan Bell, Daniel A. Serino, Ben S. Southworth, Trevor Wilcox, Marc L. Klasky

TL;DR
This paper introduces a machine learning method to infer material parameters from radiographic images in flyer plate impact experiments, enabling accurate density reconstructions despite limited data and model uncertainties.
Contribution
It proposes a generative machine learning approach that estimates physical parameters directly from radiographs, addressing challenges of limited data and model mismatch in shock physics experiments.
Findings
High impact velocity data alone is insufficient for accurate parameter inference.
Combining low and high impact velocity data improves parameter estimation.
The method produces physically consistent density reconstructions from simulated experiments.
Abstract
Estimating physical parameters or material properties from experimental observations is a common objective in many areas of physics and material science. In many experiments, especially in shock physics, radiography is the primary means of observing the system of interest. However, radiography does not provide direct access to key state variables, such as density, which prevents the application of traditional parameter estimation approaches. Here we focus on flyer plate impact experiments on porous materials, and resolving the underlying parameterized equation of state (EoS) and crush porosity model parameters given radiographic observation(s). We use machine learning as a tool to demonstrate with high confidence that using only high impact velocity data does not provide sufficient information to accurately infer both EoS and crush model parameters, even with fully resolved density…
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Taxonomy
TopicsHigh-pressure geophysics and materials · Planetary Science and Exploration · Laser-Plasma Interactions and Diagnostics
