Automatic Particle Trajectory Classification in Plasma Simulations

IF 65.3 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Foundations and Trends in Machine Learning Pub Date : 2020-10-11 DOI:10.1109/MLHPCAI4S51975.2020.00014
S. Markidis, I. Peng, Artur Podobas, Itthinat Jongsuebchoke, Gabriel Bengtsson, Pawel Herman
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引用次数: 5

Abstract

Numerical simulations of plasma flows are crucial for advancing our understanding of microscopic processes that drive the global plasma dynamics in fusion devices, space, and astrophysical systems. Identifying and classifying particle trajectories allows us to determine specific on-going acceleration mechanisms, shedding light on essential plasma processes.Our overall goal is to provide a general workflow for exploring particle trajectory space and automatically classifying particle trajectories from plasma simulations in an unsupervised manner. We combine pre-processing techniques, such as Fast Fourier Transform (FFT), with Machine Learning methods, such as Principal Component Analysis (PCA), k-means clustering algorithms, and silhouette analysis. We demonstrate our workflow by classifying electron trajectories during magnetic reconnection problem. Our method successfully recovers existing results from previous literature without a priori knowledge of the underlying system.Our workflow can be applied to analyzing particle trajectories in different phenomena, from magnetic reconnection, shocks to magnetospheric flows. The workflow has no dependence on any physics model and can identify particle trajectories and acceleration mechanisms that were not detected before.
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等离子体模拟中的粒子轨迹自动分类
等离子体流动的数值模拟对于提高我们对推动聚变装置、空间和天体物理系统中全球等离子体动力学的微观过程的理解至关重要。识别和分类粒子轨迹使我们能够确定特定的正在进行的加速机制,揭示基本的等离子体过程。我们的总体目标是提供一个通用的工作流程,用于探索粒子轨迹空间,并以无监督的方式从等离子体模拟中自动分类粒子轨迹。我们将预处理技术,如快速傅里叶变换(FFT),与机器学习方法,如主成分分析(PCA), k均值聚类算法和轮廓分析相结合。我们通过对磁重联过程中的电子轨迹进行分类来演示我们的工作流程。我们的方法成功地从以前的文献中恢复现有的结果,而不需要先验地了解底层系统。我们的工作流程可以应用于分析不同现象下的粒子轨迹,从磁重联、冲击到磁层流动。该工作流程不依赖于任何物理模型,可以识别以前未检测到的粒子轨迹和加速机制。
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来源期刊
Foundations and Trends in Machine Learning
Foundations and Trends in Machine Learning COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
108.50
自引率
0.00%
发文量
5
期刊介绍: Each issue of Foundations and Trends® in Machine Learning comprises a monograph of at least 50 pages written by research leaders in the field. We aim to publish monographs that provide an in-depth, self-contained treatment of topics where there have been significant new developments. Typically, this means that the monographs we publish will contain a significant level of mathematical detail (to describe the central methods and/or theory for the topic at hand), and will not eschew these details by simply pointing to existing references. Literature surveys and original research papers do not fall within these aims.
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