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Identification of Confinement Regimes in Tokamak Plasmas by Conformal Prediction on a Probabilistic Manifold

机译:通过概率流形的适形预测确定托卡马克血浆中的局限型

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Pattern recognition is becoming an increasingly important tool for making inferences from the massive amounts of data produced in magnetic confinement fusion experiments. However, the measurements obtained from the various plasma diagnostics are typically affected by a considerable statistical uncertainty. In this work, we consider the inherent stochastic nature of the data by modeling the measurements by probability distributions in a metric space. Information geometry permits the calculation of the geodesic distances on such manifolds, which we apply to the important problem of the classification of plasma confinement regimes. We use a distance-based conformal predictor, which we first apply to a synthetic data set. Next, the method yields an excellent classification performance with measurements from an international database. The conformal predictor also returns confidence and credibility measures, which are particularly important for interpretation of pattern recognition results in stochastic fusion data.
机译:模式识别正在成为一种越来越重要的工具,用于从磁约束融合实验中产生的大量数据进行推断。但是,从各种等离子体诊断程序获得的测量值通常会受到相当大的统计不确定性的影响。在这项工作中,我们通过根据度量空间中的概率分布对度量进行建模来考虑数据的固有随机性。信息几何允许在此类歧管上计算测地距离,这适用于等离子约束制度分类的重要问题。我们使用基于距离的保形预测器,我们首先将其应用于合成数据集。接下来,通过国际数据库的测量,该方法可产生出色的分类性能。保形预测器还返回置信度和可信度度量,这对于解释随机融合数据中的模式识别结果特别重要。

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