A machine learning approach has been implemented to measure the electron temperature directly from the emission spectra of a tokamak plasma. This approach utilized a neural network (NN) trained on a dataset of 1865 time slices from operation of the DIII-D tokamak using extreme ultraviolet/vacuum ultraviolet emission spectroscopy matched with high-accuracy divertor Thomson scattering measurements of the electron temperature, Te. This NN is shown to be particularly good at predicting Te at low temperatures (Te < 10 eV) where the NN demonstrated a mean average error of less than 1 eV. Trained to detect plasma detachment in the tokamak divertor, a NN classifier was able to correctly identify detached states (Te < 5 eV) with a 99% accuracy...
This paper presents results from the first use of neural networks for the real-time feedback control...
We present an electron identification algorithm based on a neural network approach applied to the ZE...
Two methods for fast analysis of Collective Thomson Scattering (CTS) spectra are presented: Function...
We present a non-invasive approach for monitoring plasma parameters such as the electron temperature...
Optical emission spectroscopy (OES) of helium (He) line intensities has been used to measure the ele...
In Thomson scattering diagnostics systems, a combination of the lookup table and the minimum χ2 meth...
International audienceA back-propagation artificial neural network algorithm is applied to a Mo X-pi...
Machine learning, a subfield of artificial intelligence, is being increasingly used in physics and o...
International audienceThe WHISPER (Waves of HIgh frequency and Sounder for Probing Electron density ...
We use machine learning models to predict ion density and electron temperature from visible emission...
LDMX is a fixed target experiment designed to search for light dark matter. The experiment will sear...
We investigate the usage of a Schlieren imaging setup to measure the geometrical dimensions of a pla...
Nuclear fusion is one of the most promising sources of clean and sustainable energy, but it still re...
Data analysis on tokamak plasmas is mainly based on various diagnostic systems, which are usually mo...
The Tokamak is a device that facilitates nuclear fusion via magnetic confinement of Deuterium and tr...
This paper presents results from the first use of neural networks for the real-time feedback control...
We present an electron identification algorithm based on a neural network approach applied to the ZE...
Two methods for fast analysis of Collective Thomson Scattering (CTS) spectra are presented: Function...
We present a non-invasive approach for monitoring plasma parameters such as the electron temperature...
Optical emission spectroscopy (OES) of helium (He) line intensities has been used to measure the ele...
In Thomson scattering diagnostics systems, a combination of the lookup table and the minimum χ2 meth...
International audienceA back-propagation artificial neural network algorithm is applied to a Mo X-pi...
Machine learning, a subfield of artificial intelligence, is being increasingly used in physics and o...
International audienceThe WHISPER (Waves of HIgh frequency and Sounder for Probing Electron density ...
We use machine learning models to predict ion density and electron temperature from visible emission...
LDMX is a fixed target experiment designed to search for light dark matter. The experiment will sear...
We investigate the usage of a Schlieren imaging setup to measure the geometrical dimensions of a pla...
Nuclear fusion is one of the most promising sources of clean and sustainable energy, but it still re...
Data analysis on tokamak plasmas is mainly based on various diagnostic systems, which are usually mo...
The Tokamak is a device that facilitates nuclear fusion via magnetic confinement of Deuterium and tr...
This paper presents results from the first use of neural networks for the real-time feedback control...
We present an electron identification algorithm based on a neural network approach applied to the ZE...
Two methods for fast analysis of Collective Thomson Scattering (CTS) spectra are presented: Function...