Abstract
Broadband reflectometry is a diagnostic that is able to measure the density profile with high spatial and temporal resolutions, therefore it can be used to improve the performance of advanced tokamak operation modes and to supplement or correct the magnetics for plasma position control. To perform these tasks real-time processing is needed. Here we present a method that uses a neural network to make a fast evaluation of radial positions for selected density layers. Typical ASDEX Upgrade density profiles were used to generate the simulated network training and test sets. It is shown that the method has the potential to meet the tight timing requirements of control applications with the required accuracy. The network is also able to provide an accurate estimation of the position of density layers below the first density layer which is probed by an O-mode reflectometer, provided that it is trained with a realistic density profile model. © 1999 American Institute of Physics.
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CITATION STYLE
Santos, J., Nunes, F., Manso, M., & Nunes, I. (1999). Neural network evaluation of reflectometry density profiles for control purposes. Review of Scientific Instruments, 70(1 II), 521–524. https://doi.org/10.1063/1.1149379
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