Radiography is often used to probe complex, evolving density fields in
dynamic systems and in so doing gain insight into the underlying physics. This
technique has been used in numerous fields including materials science, shock
physics, inertial confinement fusion, and other national security applications.
In many of these applications, however, complications resulting from noise,
scatter, complex beam dynamics, etc. prevent the reconstruction of density from
being accurate enough to identify the underlying physics with sufficient
confidence. As such, density reconstruction from static/dynamic radiography has
typically been limited to identifying discontinuous features such as cracks and
voids in a number of these applications.
In this work, we propose a fundamentally new approach to reconstructing
density from a temporal sequence of radiographic images. Using only the robust
features identifiable in radiographs, we combine them with the underlying
hydrodynamic equations of motion using a machine learning approach, namely,
conditional generative adversarial networks (cGAN), to determine the density
fields from a dynamic sequence of radiographs. Next, we seek to further enhance
the hydrodynamic consistency of the ML-based density reconstruction through a
process of parameter estimation and projection onto a hydrodynamic manifold. In
this context, we note that the distance from the hydrodynamic manifold given by
the training data to the test data in the parameter space considered both
serves as a diagnostic of the robustness of the predictions and serves to
augment the training database, with the expectation that the latter will
further reduce future density reconstruction errors. Finally, we demonstrate
the ability of this method to outperform a traditional radiographic
reconstruction in capturing allowable hydrodynamic paths even when relatively
small amounts of scatter are present.Comment: Submitted to Optics Expres