利用k-Means聚类对磁重联区域进行分类:能量分区应用

IF 2.6 2区 地球科学 Q2 ASTRONOMY & ASTROPHYSICS
Cara L. Waters, Jonathan P. Eastwood, Naïs Fargette, David L. Newman, Martin V. Goldman
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引用次数: 0

摘要

磁复连是一种基本的等离子体过程,它有助于将磁能转化为粒子能。这一局部过程对更大的系统既有贡献又受其影响,它依赖于等离子体条件,并在系统(如地球磁层)周围传输能量。利用航天器现场数据研究再连接过程时,很难确定航天器与再连接结构的位置关系。在这项工作中,我们使用 k-means 聚类(一种无监督的机器学习技术)来识别对称磁性再连接 2.5-D PIC 模拟中的区域,这些区域的条件与在地球磁尾观测到的条件相当。这样就可以将能量通量密度归因于这些区域。离子焓通量密度是外流中最主要的能量通量密度形式,这与之前的研究一致。波因廷通量密度在外流的某些点可能占主导地位,但在分离区只有波因廷通量密度的一半。外流粒子能量通量的比例随着导场的增加而降低。我们发现 K-均值法有利于分析数据以及比较模拟数据和现场数据。这展示了一种可应用于大量数据的方法,以确定模拟现象中统计上不同的区域,并可扩展到现场观测,适用于未来的多点任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Classifying Magnetic Reconnection Regions Using k-Means Clustering: Applications to Energy Partition

Classifying Magnetic Reconnection Regions Using k-Means Clustering: Applications to Energy Partition

Magnetic reconnection is a fundamental plasma process which facilitates the conversion of magnetic energy to particle energies. This local process both contributes to and is affected by a larger system, being dependent on plasma conditions and transporting energy around the system, such as Earth's magnetosphere. When studying the reconnection process with in situ spacecraft data, it can be difficult to determine where spacecraft are in relation to the reconnection structure. In this work, we use k-means clustering, an unsupervised machine learning technique, to identify regions in a 2.5-D PIC simulation of symmetric magnetic reconnection with conditions comparable to those observed in Earth's magnetotail. This allows energy flux densities to be attributed to these regions. The ion enthalpy flux density is the most dominant form of energy flux density in the outflows, agreeing with previous studies. Poynting flux density may be dominant at some points in the outflows and is only half that of the Poynting flux density in the separatrices. The proportion of outflowing particle energy flux decreases as guide field increases. We find that k-means is beneficial for analyzing data and comparing between simulations and in situ data. This demonstrates an approach which may be applied to large volumes of data to determine statistically different regions within phenomena in simulations and could be extended to in situ observations, applicable to future multi-point missions.

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来源期刊
Journal of Geophysical Research: Space Physics
Journal of Geophysical Research: Space Physics Earth and Planetary Sciences-Geophysics
CiteScore
5.30
自引率
35.70%
发文量
570
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