The utilization of machine learning techniques has become commonplace in the analysis of optical emission spectra. These methods are often limited to variants of principal components analysis (PCA),partial-least squares (PLS), and artificial neural networks (ANNs). A plethora of other techniques exist and are well established in the world of data science, yet are seldom investigated for their use in spectroscopic problems. In this study, machine learning techniques were used to analyze optical emission spectra of laser-induced plasma from ceria pellets doped with silicon in order to predict silicon content. A boosted regression ensemble model was created, and its predictive accuracy was compared to that of traditional PCA, PLS, and ANN regr...
Optical emission spectroscopy from a small-volume, 5 uL, atmospheric pressure RF-driven helium plasm...
Machine learning, a subfield of artificial intelligence, is being increasingly used in physics and o...
The characterization of irradiated actinide materials is a complex multi-variate problem that is rel...
This work investigates and applies machine learning paradigms seldom seen in analytical spectroscopy...
Optical emission spectroscopy (OES) of helium (He) line intensities has been used to measure the ele...
We present the first reported quantification of trace elements in plutonium via a portable laser-ind...
We use machine learning models to predict ion density and electron temperature from visible emission...
The nonlinear modeling capabilities of artificial neural networks (ANN’s) are renowned in the field ...
The quality of the spectral data collected by radiological survey systems depends on many factors in...
AN ABSTRACT OF THE THESIS OFChristopher T. Mandrell, for the Master of Science degree in Physics, pr...
We present a non-invasive approach for monitoring plasma parameters such as the electron temperature...
Optical absorption spectroscopy is an important characterization of materials for applications such ...
Despite the breadth of scientific literature on micro- and nanoplastics (MNPs), a standardized proce...
In this thesis we present a solution for the problem of predicting the chemical and physical propert...
I have for this thesis worked on automating the steps in evaluating wavelength spectra from quartz. ...
Optical emission spectroscopy from a small-volume, 5 uL, atmospheric pressure RF-driven helium plasm...
Machine learning, a subfield of artificial intelligence, is being increasingly used in physics and o...
The characterization of irradiated actinide materials is a complex multi-variate problem that is rel...
This work investigates and applies machine learning paradigms seldom seen in analytical spectroscopy...
Optical emission spectroscopy (OES) of helium (He) line intensities has been used to measure the ele...
We present the first reported quantification of trace elements in plutonium via a portable laser-ind...
We use machine learning models to predict ion density and electron temperature from visible emission...
The nonlinear modeling capabilities of artificial neural networks (ANN’s) are renowned in the field ...
The quality of the spectral data collected by radiological survey systems depends on many factors in...
AN ABSTRACT OF THE THESIS OFChristopher T. Mandrell, for the Master of Science degree in Physics, pr...
We present a non-invasive approach for monitoring plasma parameters such as the electron temperature...
Optical absorption spectroscopy is an important characterization of materials for applications such ...
Despite the breadth of scientific literature on micro- and nanoplastics (MNPs), a standardized proce...
In this thesis we present a solution for the problem of predicting the chemical and physical propert...
I have for this thesis worked on automating the steps in evaluating wavelength spectra from quartz. ...
Optical emission spectroscopy from a small-volume, 5 uL, atmospheric pressure RF-driven helium plasm...
Machine learning, a subfield of artificial intelligence, is being increasingly used in physics and o...
The characterization of irradiated actinide materials is a complex multi-variate problem that is rel...