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Confinement Regime Identification Using Artificial Intelligence Methods

机译:使用人工智能方法识别坐月方案

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The L-H transition is a remarkable self-organization phenomenon that occurs in Magnetically Confined Nuclear Fusion (MCNF) devices. For research reasons, it is relevant to create models able to determine the confinement regime the plasma is in by using, from the wide number of measured signals in each discharge, just a reduce number of them. Also desirable is that a general model, applicable not only to one device but to all of them, is reached. From a data-driven modelling point of view it implies the careful -and hopefully, automatic- selection of the phenomenon's related signals to input them into an equation able to determine the confinement mode. Using a supervised machine learning method, it would also require the tuning of some internal parameters. This is an optimization problem, tackled in this study with Genetic Algorithms (GAs). The results prove that reliable and universal laws that describe the L-H transition with more than a ~98,60% classification accuracy can be attained using only 3 input signals.
机译:L-H跃迁是一种显着的自组织现象,发生在磁约束核聚变(MCNF)装置中。出于研究的原因,创建能够通过使用每个放电中大量的测量信号中的少量被测信号来确定等离子体所处的约束状态的模型是有意义的。还期望获得一种不仅适用于一个设备而且适用于所有设备的通用模型。从数据驱动的建模角度来看,这意味着对现象的相关信号进行仔细(希望如此)的自动选择,以将其输入到能够确定限制模式的方程式中。使用监督的机器学习方法,还需要调整一些内部参数。这是一个优化问题,在本研究中使用遗传算法(GA)解决。结果证明,仅使用3个输入信号就可以实现描述L-H跃迁的可靠且通用的定律,其分类精度超过〜98,60%。

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