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HMI

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From 2D data arrays, f1(x1,x2) & f2(x1,x2), find vector flow v(x1,x2) consistent ... (2005, in prep): Use (i) 'minium structure' & (ii) 'coplanarity' assumptions, ... – PowerPoint PPT presentation

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Title: HMI


1
HMI Photospheric Flows
  1. Review of methods to determine surface plasma
    flow
  2. Comparisons between methods
  3. Data requirements
  4. Necessary computational resources
  5. Possible improvements to methods.

2
General Approach
  • From 2D data arrays, f1(x1,x2) f2(x1,x2), find
    vector flow v(x1,x2) consistent with
  • Observed evolution, ?f(x1,x2) f2(x1,x2)
    f1(x1,x2)
  • Other possible assumptions
  • Magnetic induction eqn., ?Bn/?t ?t?(vnBt-vtBn)
  • Continuity equation, ?f/?t ?t?(vtf) 0
  • Doppler velocities more later
  • v(x1,x2) might have 2 or 3 components

3
General Approach, contd
  • Ideally, with finite difference equations,
    cadence should beat Courant cadence ? ?tC
    ?x/vmax
  • analog of numerical Courant condition
  • time step limited by propagation speed of
    information
  • ?x ? pixel size vmax ? expected max. flow speed
  • low cadence is ?t gt ?tC
  • ?t ? ?tC very rare in solar physics!
  • (usually, ?t gtgt ?tC)

4
HMI Capabilities
  • Pixels .5 363 km, resolution 1.5 1100
    km
  • Photospheric csound ? (?kT/m)1/2 ? 9 km/s
  • Courant Cadence
  • ?tHMI ? (363 km)/(9 km/s) ? 40 sec.
  • LOS Mag. Field Cadence, ?tLOS 60 sec.
  • Vector Mag. Field ?tVEC 600 sec.
  • Typical v 2 km/s, and resolution 1100 km, so
    ?tPRACTICAL 550 sec.

5
Current Methods
  • Local Correlation Tracking (LCT)
  • Inductive Methods (ILCT, MEF, )
  • Feature Tracking (FT)

6
1. Local Correlation Tracking (LCT)
  • Take subregions, ? pixels wide, of f1 f2, find,
    e.g.,
  • shift ?x that minimizes difference ?f or
  • shift ?x of peak in (Fourier) correlation funcn
  • Sub-pixel shifts found by interpolation SLOW!
  • Most algorithms solve advection equation,
  • ?f/?t (vt??t) f 0
  • Can be used on intensity images, LOS, vector
    magnetograms from HMI.
  • Cadence must be slow enough that ?fnoise lt
    ?fadvection
  • Workable with very low cadence data ?t ? 100?tC

7
LCT applied to magnetograms Démoulin Bergers
(2003) analysis of photospheric flux transport
  • Motion of flux across photosphere, uf, is a
    combination of horizontal vertical flows acting
    on non-vertical fields.

8
LCT, contd
  • Hence, flows uLCT from LCT on magnetograms
  • are not generally identical to plasma velocity v
  • solve advection equation, not continuity equation
  • Given vector B, can assume uf uLCT, and thereby
    find v from uLCT.
  • Q How good does LCT do? A Pretty good!

9
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10
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11
A Comparable Data SetFlare Genesis Experiment
  • Balloon-borne (Antarctic) observations of NOAA
    8844, 25 Jan 2000
  • 54 vector magnetograms, 2.3/5.3 min. per
  • hi-res .18 pixels (130.5 km), 520 x 520 pix
  • LCT differenced over ti /-10, for Dt 85 min.
  • Doppler maps, too! (No info. on method.)
  • Tracking of white light images underway

12
FGE Movie
13
FGE White Light vs. Mag
14
FGE Larger ?
15
Modifications to LCT
  • Near future Improvement in sub-pixel
    interpolation added speed.
  • Future Convert to FORTRAN parallelize.
  • Compute on tiles, not on each pixel.

16
2. Inductive Methods
  • Use finite diff. approx. to magnetic induction
    equations normal comp. as addl constraint.
  • Purely inductive methods need ?t ? ?tC
  • Methods currently available ILCT, MEF, Kusano et
    al. (2002), MSR (Georgoulis et al., 2005, in
    prep.)
  • All methods return (vx, vy, vz) at photosphere,
    where (v?B) 0 parallel flow unconstrained by
    indn eqn.
  • Post-processing with Doppler data can give v B
  • NB NOT Doppler from Stokes I (Chae et al., 2004)

17
Inductively Derived Flows are Consistent with
Induction Eqns Normal Component!
18
What about other components?
Directly measured
Derived by new method?
Derived Inductively
From NLFFF Extrapolation?
at photosphere, z 0
above photosphere, z gt 0
19
A) ILCT Modify LCT solution to match induction
equation
Let
  • Solve for ?,? with 2D divergence and 2D curl
    (n-comp), and the approximation that ufuLCT

NB if only BLOS is known, we can still solve for
?,? !
20
B) Minimum Energy Fit (MEF)
  • Also uses induction equations normal component
    to derive flow, with additional assumption that
    integral of squared velocity is minimized.
  • Applicable to vector magnetograms.
  • More from D. Longcope, shortly!

21
Other Inductive Methods
  • Kusano et al. (2002) get v from LCT flow, derive
    additional flow for consistency with induction
    equation.
  • Georgoulis (2005, in prep) Use (i) minium
    structure (ii) coplanarity assumptions, with
    (iii) induction equation to derive (iv) velocity
    perpendicular to magnetic field. (System
    overconstrained.)

22
Prelim. Comparison of Inductive Methods
  • Used MHD simulations of Magara (2001)
  • Given B(x,y,z0,t), practioners computed
    v(x,y,z0,t), and were then told actual v.

23
Some Prelim Comparisons
24
Some Prelim Comparisons
25
Some Prelim Comparisons
26
Some Prelim Comparisons
27
3. Feature Tracking
  • Useful with WL images magnetograms.
  • Algorithms
  • White Light L. Strous
  • Active region fields B. Welsch, G. Barnes
  • Quiet Sun fields C. DeForest, M. Hagenaar, C.
    Parnell, B. Welsch
  • Does not return v(x,y) rather, gives velocity of
    patches of photosphere.
  • Easily incorporated in pipeline.

28
Feature Tracking in AR 8038
29
Conclusions
  • Planned data cadences are compatible with
    existing velocity inversion algorithms.
  • LCT can be used to derive flows in HMIs
    intensity, LOS, and vector field maps.
  • ILCT, MEF suitable for determining
    three-component photospheric magnetic flows.
  • Doppler data from Stokes profiles (zero crossing
    of V, or central minima of Q,U) desirable.
  • Significant improvement in computational
    performance of LCT algorithms is needed for
    real-time analysis.
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