论文标题
电流表中充电粒子动态的制度:机器学习方法
Regimes of charged particle dynamics in current sheets: the machine learning approach
论文作者
论文摘要
当前的床单是具有强烈等离子体电流的空间定位的几乎1D结构。它们在储存磁场能量中起着关键作用,并且在行星磁层,太阳风和太阳电晕中分离不同的等离子体种群。电流表是负责等离子体加热和带电颗粒加速的磁场线重新连接的主要区域。最有趣,最广泛观察到的1D电流表的类型之一是旋转不连续性,可以无力或包括等离子体压缩。这种1D电流表的理论模型基于离子绝热运动的假设,即保守离子绝热不变性。我们专注于三种当前的材料配置,这些配置在地球磁磁带和磁尾和近地太阳风中广泛观察到。这种电流板中的磁场由瞬态离子携带的电流支撑,只有在有足够数量的不变性时才存在。在本文中,我们采用一种新型的机器学习方法AI Poincar'e来确定保守绝热不变的参数域。对于所有三种当前表配置,这些域都非常狭窄,并且不涵盖观察到的电流表的整个参数范围。我们讨论了对获得的结果的可能解释,表明1D电流是动态的,而不是静态等离子体平衡。
Current sheets are spatially localized almost-1D structures with intense plasma currents. They play a key role in storing the magnetic field energy and they separate different plasma populations in planetary magnetospheres, the solar wind, and the solar corona. Current sheets are primary regions for the magnetic field line reconnection responsible for plasma heating and charged particle acceleration. One of the most interesting and widely observed type of 1D current sheets is the rotational discontinuity, that can be force-free or include plasma compression. Theoretical models of such 1D current sheets are based on the assumption of adiabatic motion of ions, i.e. ion adiabatic invariants are conserved. We focus on three current sheet configurations, widely observed in the Earth magnetopause and magnetotail and in the near-Earth solar wind. Magnetic field in such current sheets is supported by currents carried by transient ions, which exist only when there is a sufficient number of invariants. In this paper, we apply a novel machine learning approach, AI Poincar'e, to determine parametrical domains where adiabatic invariants are conserved. For all three current sheet configurations, these domains are quite narrow and do not cover the entire parametrical range of observed current sheets. We discuss possible interpretation of obtained results indicating that 1D current sheets are dynamical rather than static plasma equilibria.