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Forecast of TEXT plasma disruptions using soft X rays as input signal in a neural network

机译:使用软X射线作为神经网络中的输入信号预测TEXT等离子体破坏

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A feedforward neural network with two hidden layers is used to forecast major and minor disruptive instabilities in TEXT tokamak discharges. Using the experimental data of soft X ray signals as input data, the neural network is trained with one disruptive plasma discharge, and a different disruptive discharge is used for validation. After being properly trained, the networks, with the same set of weights, are used to forecast disruptions in two other plasma discharges. It is observed that the neural network is able to predict the occurrence of a disruption more than 3 ms in advance. This time interval is almost 3 times longer than the one already obtained previously when a magnetic signal from a Mirnov coil was used to feed the neural networks. Visually no indication of an upcoming disruption is seen from the experimental data this far back from the time of disruption. Finally, by observing the predictive behaviour of the network for the disruptive discharges analysed and comparing the soft X ray data with the corresponding magnetic experimental signal, it is conjectured about where inside the plasma column the disruption first started.
机译:具有两个隐藏层的前馈神经网络用于预测TEXT托卡马克放电中的主要和次要破坏性不稳定性。使用软X射线信号的实验数据作为输入数据,使用一种破坏性等离子体放电训练神经网络,并使用另一种破坏性放电进行验证。经过适当培训后,具有相同权重的网络将用于预测其他两个等离子体放电的中断。可以观察到,神经网络能够提前3毫秒以上预测中断的发生。这个时间间隔几乎比以前使用Mirnov线圈的磁信号馈入神经网络时已经获得的间隔长3倍。在视觉上,从中断时间开始的实验数据中看不到即将发生中断的迹象。最后,通过观察网络对所分析的破坏性放电的预测行为,并将软X射线数据与相应的磁实验信号进行比较,可以推测破坏在等离子体柱内的何处开始。

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