Prediction of plasma rotation velocity and ion temperature profiles in EAST Tokamak using artificial neural network models
Zichao Lin,
Hongming Zhang,
Fudi Wang
et al.
Abstract:Artificial neural network models have been developed to predict rotation velocity and ion temperature profiles on the EAST tokamak based on spectral measurements from the X-ray crystal spectrometer. Both Deep Neural Network (DNN) and Convolutional Neural Network (CNN) models have been employed to infer line-integrated ion temperatures. The predicted results from these two models exhibit a strong correlation with the target values, providing an opportunity for cross-validation to enhance prediction accuracy. No… Show more
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