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Pattern recognition in probability spaces for visualization and identification of plasma confinement regimes and confinement time scaling

机译:概率空间中的模式识别,用于可视化和识别等离子体约束机制和约束时间缩放

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Pattern recognition is becoming an increasingly important tool for making inferences from the massive amounts of data produced in fusion experiments. The purpose is to contribute to physics studies and plasma control. In this work, we address the visualization of plasma confinement data, the (real-time) identification of confinement regimes and the establishment of a scaling law for the energy confinement time. We take an intrinsically probabilistic approach, modeling data from the International Global H-mode Confinement Database with Gaussian distributions. We show that pattern recognition operations working in the associated probability space are considerably more powerful than their counterparts in a Euclidean data space. This opens up new possibilities for analyzing confinement data and for fusion data processing in general. We hence advocate the essential role played by measurement uncertainty for data interpretation in fusion experiments.
机译:模式识别正变得越来越重要,可以用来从融合实验中产生的大量数据中进行推断。目的是为物理研究和等离子体控制做出贡献。在这项工作中,我们解决了等离子体约束数据的可视化,约束机制的(实时)识别以及能量约束时间的定标定律的建立。我们采用一种内在的概率方法,使用高斯分布对来自国际全局H模式限制数据库的数据进行建模。我们证明,在相关概率空间中工作的模式识别操作比在欧几里得数据空间中的模式识别操作强大得多。通常,这为分析限制数据和融合数据处理开辟了新的可能性。因此,我们主张测量不确定性在融合实验中对数据解释的重要作用。

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