用于聚类和无监督特征选择的托卡马克机器通量测量的高级分析

A. Spinosa, M. Iafrati, G. Mazzitelli, P. Arena, A. Buscarino, L. Fortuna
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引用次数: 1

摘要

等离子体物理学是一个研究领域的例子,需要收集和处理在非常特定的工作条件下进行的许多测量。通过查看这些数据的属性,可以探索其隐藏的特征,以解决通常需要高计算努力的挑战性问题,例如层析成像重建。在本文中,显示和讨论了在托卡马克机器中产生的通量测量的初步但重要的分析,目的是介绍一些用于特征选择的算法的应用,以检测给定通道集中隐藏的相关关系。所有的统计细节,以及特征选择过程本身,都是为了进一步深入而引入的,例如前面提到的从通量测量中重建等离子体剖面的层析成像问题,或者根据其输入输出关系对系统进行建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Level Analysis of Flux Measurements in Tokamak Machines for Clustering and Unsupervised Feature Selection
Plasma physics is an example of research field where many measurements carried out at very specific working conditions need to be collected and processed. By looking at the properties of these data, it can be possible to explore their hidden features in order to solve challenging problems that usually require high computational efforts, such as the tomographic reconstruction. In this paper, preliminary but nontrivial analyses of flux measurements produced in a Tokamak machine are shown and discussed, with the aim of introducing an application of some algorithms for feature selection to detect hidden, relevant relationships within given sets of channels. All the statistical details, and therefore the feature selection procedure itself, are introduced in view of further deepenings, such as the aforementioned problem of tomographically reconstructing plasma profiles from flux measurements or modelling the system in terms of its input-output relationship.
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