Prediction of multifaceted asymmetric radiation from the edge movement in density-limit disruptive plasmas on Experimental Advanced Superconducting Tokamak using random forest

Chinese Physics B(2023)

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Abstract
Multifaceted asymmetric radiation from the edge(MARFE)movement which can cause density limit disruption is often encountered during high density operation on many tokamaks.Therefore,identifying and predicting MARFE move-ment is meaningful to mitigate or avoid density limit disruption for the steady-state high-density plasma operation.A machine learning method named random forest(RF)has been used to predict the MARFE movement based on the density ramp-up experiment in the 2022's first campaign of Experimental Advanced Superconducting Tokamak(EAST).The RF model shows that besides Greenwald fraction which is the ratio of plasma density and Greenwald density limit,dβp/dt,H98 and dWmhd/dt are relatively important parameters for MARFE-movement prediction.Applying the RF model on test discharges,the test results show that the successful alarm rate for MARFE movement causing density limit disruption reaches~85%with a minimum alarm time of~40 ms and mean alarm time of~700 ms.At the same time,the false alarm rate for non-disruptive and non-density-limit disruptive discharges can be kept below 5%.These results provide a reference to the prediction of MARFE movement in high density plasmas,which can help the avoidance or mitigation of density limit disruption in future fusion reactors.
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Key words
experimental advanced superconducting tokamak,disruptive plasmas,asymmetric radiation,density-limit
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