{"title":"太阳风和磁流体动力湍流中间歇概率分布函数的参数描述","authors":"J. C. Palacios, Jean C. Perez, S. Bourouaine","doi":"10.1093/mnras/stae1065","DOIUrl":null,"url":null,"abstract":"\n In this work, we find empirical evidence that the scale-dependent statistical properties in solar wind and Magnetohydrodynamic (MHD) turbulence can be described in terms of a family of parametric probability distribution functions (PDFs) known as Normal Inverse Gaussian (NIG). Understanding these PDFs is one of the most important goals in turbulence theory, as they are inherently connected to the intermittent properties of solar wind turbulence. We investigate the properties of PDFs of Elsasser increments based on a large statistical sample from solar wind observations and high-resolution numerical simulations of MHD turbulence. In order to measure the PDFs and their corresponding properties, three experiments are presented: fast and slow solar wind for experimental data and a simulation of reduced MHD (RMHD) turbulence. Conditional statistics on a 23-year-long sample of WIND data near 1 au and high-resolution pseudo-spectral simulation of steadily driven RMHD turbulence on a 20483 mesh are used to construct scale-dependent PDFs. The empirical PDFs are fitted to NIG distributions, which depend on four free parameters. Our analysis shows that NIG distributions accurately capture the evolution of the PDFs, with scale-dependent parameters, from large scales characterized by a Gaussian distribution, turning to exponential tails within the inertial range and stretched exponentials at dissipative scales. We also show that empirically-measured NIG parameters exhibit well-defined scaling properties that are similar across the three empirical data sets, which may be indicative of universal behavior.","PeriodicalId":506975,"journal":{"name":"Monthly Notices of the Royal Astronomical Society","volume":"27 11","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2024-04-24","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Parametric description of intermittent probability distribution functions in solar wind and magnetohydrodynamic turbulence\",\"authors\":\"J. C. Palacios, Jean C. Perez, S. 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引用次数: 0
摘要
在这项工作中,我们找到了经验证据,证明太阳风和磁流体动力学(MHD)湍流中与尺度相关的统计特性可以用被称为正态反高斯(NIG)的参数概率分布函数(PDF)族来描述。理解这些概率分布函数是湍流理论最重要的目标之一,因为它们与太阳风湍流的间歇特性有着内在联系。我们基于太阳风观测和高分辨率 MHD 湍流数值模拟的大量统计样本,研究了埃尔萨塞增量的 PDF 特性。为了测量埃尔萨塞增量及其相应的属性,我们进行了三项实验:实验数据的快速和慢速太阳风以及还原 MHD(RMHD)湍流模拟。对 1 au 附近长达 23 年的 WIND 数据样本进行条件统计,并在 20483 个网格上对稳定驱动的 RMHD 湍流进行高分辨率伪谱模拟,以构建随尺度变化的 PDF。经验 PDF 与 NIG 分布相拟合,NIG 分布取决于四个自由参数。我们的分析表明,NIG 分布准确捕捉了随尺度变化的参数的 PDF 演变,从大尺度的高斯分布到惯性范围内的指数尾部,再到耗散尺度的拉伸指数。我们还表明,根据经验测量的 NIG 参数表现出明确的缩放特性,这在三个经验数据集中是相似的,这可能表明了普遍行为。
Parametric description of intermittent probability distribution functions in solar wind and magnetohydrodynamic turbulence
In this work, we find empirical evidence that the scale-dependent statistical properties in solar wind and Magnetohydrodynamic (MHD) turbulence can be described in terms of a family of parametric probability distribution functions (PDFs) known as Normal Inverse Gaussian (NIG). Understanding these PDFs is one of the most important goals in turbulence theory, as they are inherently connected to the intermittent properties of solar wind turbulence. We investigate the properties of PDFs of Elsasser increments based on a large statistical sample from solar wind observations and high-resolution numerical simulations of MHD turbulence. In order to measure the PDFs and their corresponding properties, three experiments are presented: fast and slow solar wind for experimental data and a simulation of reduced MHD (RMHD) turbulence. Conditional statistics on a 23-year-long sample of WIND data near 1 au and high-resolution pseudo-spectral simulation of steadily driven RMHD turbulence on a 20483 mesh are used to construct scale-dependent PDFs. The empirical PDFs are fitted to NIG distributions, which depend on four free parameters. Our analysis shows that NIG distributions accurately capture the evolution of the PDFs, with scale-dependent parameters, from large scales characterized by a Gaussian distribution, turning to exponential tails within the inertial range and stretched exponentials at dissipative scales. We also show that empirically-measured NIG parameters exhibit well-defined scaling properties that are similar across the three empirical data sets, which may be indicative of universal behavior.