We investigate the usage of a Schlieren imaging setup to measure the geometrical dimensions of a plasma channel in atomic vapor. Near resonant probe light is used to image the plasma channel in a tenuous vapor and machine learning techniques are tested for extracting quantitative information from the images. By building a database of simulated signals with a range of plasma parameters for training Deep Neural Networks, we demonstrate that they can extract from the Schlieren images reliably and with high accuracy the location, the radius and the maximum ionization fraction of the plasma channel as well as the width of the transition region between the core of the plasma channel and the unionized vapor. We test several different neural networ...
We train a deep learning artificial neural network model, Spatial Attention U-Net to recover useful ...
We explore the use of Physics-Informed Neural Networks (PINNs) for reconstructing full magnetohydrod...
This work presents the experimental results for the position estimation of the interaction point of...
Optical emission spectroscopy (OES) of helium (He) line intensities has been used to measure the ele...
A machine learning approach has been implemented to measure the electron temperature directly from t...
We investigate the application of deep learning to the retrieval of the internuclear distance in the...
Since their inception, charged-particle imaging techniques have transformed how chemical reactions a...
Proton radiography is a technique extensively used to resolve magnetic field structures in high-ener...
Deep learning is having a profound impact in many fields, especially those that involve some form of...
LDMX is a fixed target experiment designed to search for light dark matter. The experiment will sear...
One of the most reliable devices to measure the transverse beam profile in hadron machines is Ioniza...
Plasma jets are widely investigated both in the laboratory and in nature. Astrophysical objects such...
We present a non-invasive approach for monitoring plasma parameters such as the electron temperature...
Thesis (Ph.D.)--University of Washington, 2021Plasma is the most common state of visible matter in t...
The Epoch of Reionization (EoR) was a phase transition from a neutral state to an ionized state wher...
We train a deep learning artificial neural network model, Spatial Attention U-Net to recover useful ...
We explore the use of Physics-Informed Neural Networks (PINNs) for reconstructing full magnetohydrod...
This work presents the experimental results for the position estimation of the interaction point of...
Optical emission spectroscopy (OES) of helium (He) line intensities has been used to measure the ele...
A machine learning approach has been implemented to measure the electron temperature directly from t...
We investigate the application of deep learning to the retrieval of the internuclear distance in the...
Since their inception, charged-particle imaging techniques have transformed how chemical reactions a...
Proton radiography is a technique extensively used to resolve magnetic field structures in high-ener...
Deep learning is having a profound impact in many fields, especially those that involve some form of...
LDMX is a fixed target experiment designed to search for light dark matter. The experiment will sear...
One of the most reliable devices to measure the transverse beam profile in hadron machines is Ioniza...
Plasma jets are widely investigated both in the laboratory and in nature. Astrophysical objects such...
We present a non-invasive approach for monitoring plasma parameters such as the electron temperature...
Thesis (Ph.D.)--University of Washington, 2021Plasma is the most common state of visible matter in t...
The Epoch of Reionization (EoR) was a phase transition from a neutral state to an ionized state wher...
We train a deep learning artificial neural network model, Spatial Attention U-Net to recover useful ...
We explore the use of Physics-Informed Neural Networks (PINNs) for reconstructing full magnetohydrod...
This work presents the experimental results for the position estimation of the interaction point of...