DIPARTIMENTO DI FISICA Luca Sorriso-Valvo Sezione di Cosenza Intermittency in solar wind induced electric field Roberto Bruno Vincenzo Carbone.

Slides:



Advertisements
Similar presentations
NORMAL OR GAUSSIAN DISTRIBUTION Chapter 5. General Normal Distribution Two parameter distribution with a pdf given by:
Advertisements

Fractal-Facies Concept: Motivation, Application and Computer Codes By Fred J. Molz School of the Environment Clemson University
H.N. Wang 1 , H. He 1, X. Huang 1, Z. L. Du 1 L. Y. Zhang 1 and Y. M. Cui 2 L. Y. Zhang 1 and Y. M. Cui 2 1 National Astronomical Observatories 2 National.
Sensitivity Analysis In deterministic analysis, single fixed values (typically, mean values) of representative samples or strength parameters or slope.
Turbulent Heating of the Solar Wind at 1 AU Benjamin T. MacBride 1, Miriam A. Forman 2, and Charles W. Smith 1 1 Physics Department, University of New.
DA/SAT Training Course, March 2006 Variational Quality Control Erik Andersson Room: 302 Extension: 2627
Nanoflares and MHD turbulence in Coronal Loop: a Hybrid Shell Model Giuseppina Nigro, F.Malara, V.Carbone, P.Veltri Dipartimento di Fisica Università della.
CMPT 855Module Network Traffic Self-Similarity Carey Williamson Department of Computer Science University of Saskatchewan.
Non-Linear Statistical Static Timing Analysis for Non-Gaussian Variation Sources Lerong Cheng 1, Jinjun Xiong 2, and Prof. Lei He 1 1 EE Department, UCLA.
Adaptive Rao-Blackwellized Particle Filter and It’s Evaluation for Tracking in Surveillance Xinyu Xu and Baoxin Li, Senior Member, IEEE.
An Optimal Learning Approach to Finding an Outbreak of a Disease Warren Scott Warren Powell
Hybrid simulations of parallel and oblique electromagnetic alpha/proton instabilities in the solar wind Q. M. Lu School of Earth and Space Science, Univ.
V.I. Abramenko, V.B. Yurchyshyn, H. Wang, T.R. Spirock, P.R. Goode Big Bear Solar Observatory, NJIT Crimean Astrophysical Observatory, Ukraine
Self-Similar through High-Variability: Statistical Analysis of Ethernet LAN Traffic at the Source Level Walter Willinger, Murad S. Taqqu, Robert Sherman,
Spectra of Gravity Wave Turbulence in a Laboratory Flume S Lukaschuk 1, P Denissenko 1, S Nazarenko 2 1 Fluid Dynamics Laboratory, University of Hull 2.
MODELING INTRACLUSTER MEDIUM AND DARK MATTER IN GALAXY CLUSTERS Elena Rasia Dipartimento di Astronomia Università di Padova Padova, April 9th, 2002.
Statistical Theory; Why is the Gaussian Distribution so popular? Rob Nicholls MRC LMB Statistics Course 2014.
Lecture II-2: Probability Review
Statistical Methods For Engineers ChE 477 (UO Lab) Larry Baxter & Stan Harding Brigham Young University.
ElectroScience Lab IGARSS 2011 Vancouver Jul 26th, 2011 Chun-Sik Chae and Joel T. Johnson ElectroScience Laboratory Department of Electrical and Computer.
The turbulent cascade in the solar wind Luca Sorriso-Valvo LICRYL – IPCF/CNR, Rende, Italy R. Marino, V. Carbone, R. Bruno, P. Veltri,
Structure functions and cancellation exponent in MHD: DNS and Lagrangian averaged modeling Pablo D. Mininni 1,* Jonathan Pietarila Graham 1, Annick Pouquet.
0 Dissipation element analysis of turbulence Lipo Wang, Norbert Peters Institut für Technische Verbrennung RWTH-Aachen Germany TMBW Trieste,
Intermittency beyond the ecliptic plane Anna Wawrzaszek, Marius Echim, Wiesław M. Macek, Roberto Bruno Mamaia, 6-13 September 2015 (1) Space Research Centre.
1 LES of Turbulent Flows: Lecture 1 Supplement (ME EN ) Prof. Rob Stoll Department of Mechanical Engineering University of Utah Fall 2014.
0 Local and nonlocal conditional strain rates along gradient trajectories from various scalar fields in turbulence Lipo Wang Institut für Technische Verbrennung.
Statistical Fluctuations of Two-dimensional Turbulence Mike Rivera and Yonggun Jun Department of Physics & Astronomy University of Pittsburgh.
Rank-ordered multifractal analysis (ROMA) of magnetic intermittent fluctuations in the solar wind and in the magnetospheric cusps: evidence for global.
1 Solar systemturbulence, intermittency and multifractals from in ‐ situ observations at the minimum and maximum of the solar cycle M. Echim (BIRA-IASB.
Cusp turbulence as revealed by POLAR magnetic field data E. Yordanova Uppsala, November, 2005.
Cynthia López-Portela and Xochitl Blanco-Cano Instituto de Geofísica, UNAM A brief introduction: Magnetic Clouds’ characteristics The study: Event types.
Statistical properties of southward IMF and its geomagnetic effectiveness X. Zhang, M. B. Moldwin Department of Atmospheric, Oceanic, and Space Sciences,
1 Two Functions of Two Random Variables In the spirit of the previous lecture, let us look at an immediate generalization: Suppose X and Y are two random.
1 LES of Turbulent Flows: Lecture 16 (ME EN ) Prof. Rob Stoll Department of Mechanical Engineering University of Utah Fall 2014.
Valentina Zharkova 1 and Olga Khabarova Department of Mathematics, University of Bradford, Bradford BD7 1DP, UK ( ) 2.
M. Onofri, F. Malara, P. Veltri Compressible magnetohydrodynamics simulations of the RFP with anisotropic thermal conductivity Dipartimento di Fisica,
2.There are two fundamentally different approaches to this problem. One can try to fit a theoretical distribution, such as a GEV or a GP distribution,
1 8. One Function of Two Random Variables Given two random variables X and Y and a function g(x,y), we form a new random variable Z as Given the joint.
Turbulence in the magnetosphere studied with CLUSTER data : evidence of intermittency Lamy H. 1, Echim M. 1,2, Darrouzet F. 1, Lemaire J. 3, Décréau P.
Application of rank-ordered multifractal analysis (ROMA) to intermittent fluctuations in 3D turbulent flows, 2D MHD simulation and solar wind data Cheng-chin.
Information Geometry and Model Reduction Sorin Mitran 1 1 Department of Mathematics, University of North Carolina, Chapel Hill, NC, USA Reconstruction.
1 Introduction to Statistics − Day 4 Glen Cowan Lecture 1 Probability Random variables, probability densities, etc. Lecture 2 Brief catalogue of probability.
Intermittency Analysis and Spatial Dependence of Magnetic Field Disturbances in the Fast Solar Wind Sunny W. Y. Tam 1 and Ya-Hui Yang 2 1 Institute of.
MHD Turbulence: influences on transport and acceleration of energetic particles W H Matthaeus Bartol Research Institute, University of Delaware Pablo Dmitruk.
Compressibility and scaling in the solar wind as measured by ACE spacecraft Bogdan A. Hnat Collaborators: Sandra C. Chapman and George Rowlands; University.
Chapter 20 Statistical Considerations Lecture Slides The McGraw-Hill Companies © 2012.
The Power Spectra and Point Distribution Functions of Density Fields in Isothermal, HD Turbulent Flows Korea Astronomy and Space Science Institute Jongsoo.
Statistical Properties (PS, PDF) of Density Fields in Isothermal Hydrodynamic Turbulent Flows Jongsoo Kim Korea Astronomy and Space Science Institute Collaborators:
One Function of Two Random Variables
1 LES of Turbulent Flows: Lecture 2 (ME EN ) Prof. Rob Stoll Department of Mechanical Engineering University of Utah Spring 2011.
CHAPTER 2.3 PROBABILITY DISTRIBUTIONS. 2.3 GAUSSIAN OR NORMAL ERROR DISTRIBUTION  The Gaussian distribution is an approximation to the binomial distribution.
1 Heart rate variability: challenge for both experiment and modelling I. Khovanov, N. Khovanova, P. McClintock, A. Stefanovska Physics Department, Lancaster.
Correlation of magnetic field intensities and solar wind speeds of events observed by ACE. Mathew J. Owens and Peter J. Cargill. Space and Atmospheric.
Electrostatic fluctuations at short scales in the solar-wind turbulent cascade. Francesco Valentini Dipartimento di Fisica and CNISM, Università della.
Turbulence in the Solar Wind
Copyright © Cengage Learning. All rights reserved. 4 Continuous Random Variables and Probability Distributions.
1 Test Particle Simulations of Solar Energetic Particle Propagation for Space Weather Mike Marsh, S. Dalla, J. Kelly & T. Laitinen University of Central.
Exploring reconnection, current sheets, and dissipation in a laboratory MHD turbulence experiment David Schaffner Bryn Mawr College Magnetic Reconnection:
Statistical Decision Making. Almost all problems in statistics can be formulated as a problem of making a decision. That is given some data observed from.
Chapter 4 Basic Estimation Techniques
Introduction to Space Weather Interplanetary Transients
The Probability Distribution of Extreme Geomagnetic Events in the Auroral Zone R.S. Weigel Space Weather Laboratory Department of Computational and Data.
Third-Moment Descriptions of the Interplanetary Turbulent Cascade, Intermittency, and Back Transfer Bernard J. Vasquez1, Jesse T. Coburn1,2, Miriam A.
Wang, X.1, Tu, C. Y.1,3, He, J. S.1, Marsch, E.2, Wang, L. H.1
Igor V. Cadez, Padhraic Smyth, Geoff J. Mclachlan, Christine and E
Introduction to Space Weather
MHD Simulation of Plasmoid-Induced-Reconnection in Solar Flares
8. One Function of Two Random Variables
8. One Function of Two Random Variables
CPSC 641: Network Traffic Self-Similarity
Presentation transcript:

DIPARTIMENTO DI FISICA Luca Sorriso-Valvo Sezione di Cosenza Intermittency in solar wind induced electric field Roberto Bruno Vincenzo Carbone

INTRODUCTION We analyse PDFs of the solar wind induced electric field e=-vxb We show that the induced electric field is characterized by intermittency. Breech et al. (JGR, 2003) reported on PDFs of the interplanetary induced electric field, using the NSSDC Omnitape database, including 30 years of hourly averaged spacecraft measurements of solar wind fields PDFs of the induced electric field from their data show exponential tails

Data used by Breech et al. include: 1hour averages different solar activity levels fast and slow solar wind (and interfaces between them). Exponential tails for field components has been previously investigated theoretically and using numerical data. If velocity and magnetic field components have gaussian PDFs, and satisfy some hypothesis about their correlations -e z =v x b y -v y b x, P(v i )=P(b i )= gaussian + {hp. on corr.} P(e z ) = exponential tails Milano et al., PRE 65, , 2002 BACKGROUND

SIMULATIONS The current j data: 2×10 7 pts simulations: H. Politano & A. Pouquet, z     v ± B/(4  ) 1/2 are the Elsasser variables,       , F  external forcing, P * total pressure DNS of the 2-dimensional MagnetoHydroDynamics equations R e ~ 1600 Pseudo-spectral method, resolution 1024² induced electric field PDF exponential tails

SOLAR WIND DATA Fast windSlow wind data: ~ 10 4 pts, sampling time:  sec velocity and magnetic field  e=-vxb Separation in fast and slow streams Helios 2 spacecraft: in situ measurements We thus define: fast streams with v 0 > 550 km/sec slow streams with v 0 < 450 km/sec

PDFs of the field components We compute the PDFs of the components and the magnitudes of the fields ( v, b and e ) in the SE frame ( x || V 0 ) using the standardized variables:

xmagnitudezy magnetic field velocity = x induced electric field the only case presenting exponential tails... almost gaussian PDFs! fast wind slow wind (not true in the x || B 0 frame)

Our results are quite different from those by Breech et al. Possible reasons for measured PDFs differences: the different time resolution the mixing of fast and slow wind, as well as the non- steady interstream regions, in OMNITAPE data the widely diffrent solar activity in OMNITAPE data The mixing of different physical conditions could be responsible for the exponential tails found by Breech et al. Possible reasons for differences with respect to theoretical and numerical results: violation of conditions about correlations, anisotropy… Comments...

INTERMITTENCY Look at the Flatness of the field increments at different scales . The gaussian reference value is F=3. F>3 indicates rising tails of the PDFs. The growth of F toward the small scales is the signature of intermittency. We study the intermittency of the induced electric field. Flatness fast windslow wind

xyxy Small scale: stretched exponential Inertial range: raising tails Large scale: nearly Gaussian INTERMITTENCY by PDFs fast windslow wind

A multifractal model for PDFs According to multifractal models, the P(  f) at scale  is obtained as superposition of Gaussians, each one: ...describing the statistics in different regions of space ...with different variance  ...opportunely weighted : We must choose a model for the weight of each gaussian in the convolution. For example: Log-normal distribution of the variances  Castaing et al., Phys. D 46, 177 (1990) As ² increases, L(  ) is wider  more and more Gaussians of different width are summed  the tails of P(  f) become higher  ²= 0, L(  ) is a  - function centered in  0  computing the convolution, the resulting P(  f) at scale  is Gaussian

The parameter ² is found to behave as a power-law of the scale and its scaling properties can be used to characterize the shape of the PDFs   ² max, the maximum value of the parameter ² within its scaling range, representing the non-gaussianity of the PDF  , the ‘slope’ of the power-law, representing the efficiency of the non-linear cascade Relevant parameters of the model

Results for e components 0.09± ±0.03slow 0.06± ±0.04fast  ² max wind 0.20± ±0.03v slow 0.44± ±0.04v fast  ² max field Results for v and b 0.18± ±0.04b slow 0.19± ±0.04b fast y x  ² max wind 0.12± ±0.03slow 0.29± ±0.04fast Results for the induced electric field

CONCLUSIONS From the analysis of the Helios 2 solar wind time series, we find that the induced electric field components have quasi-Gaussian probability distribution function for both fast and slow wind. The model presented by Milano et al. is not reliable to reproduce the solar wind induced electric field features as observed from Helios 2 data. This could be due to the presence of correlations between the field components, which are more complex than cross-helicity type. The induced electric field is shown to be intermittent through the analysis and modeling of the field increments PDFs. Intermittency could in fact be a candidate responsible for long- range correlations characterizing the solar wind fields.