Neural network evaluation of tokamak current profiles for real time control (abstract)

Wroblewski, Dariusz
January 1997
Review of Scientific Instruments;Jan1997, Vol. 68 Issue 1, p930
Academic Journal
Presents the abstract for an article describing the use of a neural network to provide a mapping from the magnetic measurements of the poloidal magnetic field. Distribution of toroidal current in a tokamak; Database; Parameters of safety factor profile estimated by the neural network.


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