we infer a flow field, u ( x,y ,) from magnetic evolution over a time interval, assuming:

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We infer a flow field, u ( x,y ,) from magnetic evolution over a time interval, assuming:. Ideality assumed:  t B n = -c (  x E ), but E = -( v x B )/c, so perpendicular flows drive all evolution . - PowerPoint PPT Presentation

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Page 1: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:
Page 2: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:
Page 3: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

We infer a flow field, u(x,y,) from magnetic evolution over a time interval, assuming:

Ideality assumed: tBn = -c( x E), but E = -(v x B)/c, so perpendicular flows drive all evolution.

Démoulin & Berger (2003) argue u = vh – (vz/Bz) Bh, but Schuck (2006, 2008) argues u ≃ vh .

Page 4: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Motivation: What is the optimal Δt? What can we learn from the coherence time of flows?

Caption: Autocorrelation of LOS magnetic field (black) and flow components (ux, uy). Thick: frame-to-frame autocorrelation, at 96 minute lag. Thin: initial-to-nth frame autocorrelation.

Welsch et al. (2009) autocorrelated active region flows in MDI magnetograms and found flow lifetimes of ~6 hours on super-granular scales (c. 15 Mm). But what about other, smaller scales?

Page 5: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

What constrains choice of time interval, Δt?There are two regimes for which inferred flows u do not

accurately reflect plasma velocities v:

1) Noise-dominated: If Δt is very short, then B is ~constant, so ΔBn is due to noise, not flows. But all changes in B are interpreted as flows!

==> estimates of u are noise-dominated.

2) Displacement-dominated: If Δt is too long, then v will evolve significantly over Δt; so u is inferred from displacements due to the average of the velocity over Δt.

Page 6: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

We tracked Stokes’ V/I images at 2 min. cadence, w/0.3’’/pix, from Hinode NFI, over Dec 12-13, 2006.

Left: Initial magnetogram in the ~13 hr. sequence, at full resolution (0.16” pixels) with the saturation level set at ±500 Mx cm−2.

Right: Red (blue) is cumulative frame-to-frame shifts in x (y) removed in image co-registration prior to tracking. Total flux (unsigned in thin black, negative of signed in thick black) is overplotted. Note periodicty similar to Hinode 98-minute orbital freq.

Page 7: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

We estimated flows with several choices of tracking parameters.

• We varied the time interval ∆t between tracked magnetograms, with

∆t ∈ {2,4,8,16,32,64,128,256} minutes.

• We varied the apodization (windowing) parameter, σ ∈ {2,4,8,16} pixels.

• We re-binned the data into macropixels, binning by ∆x ∈ {2,4,8,16,32,64} 0.3’’ pixels.

Page 8: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Histogramming the magnetograms shows a “noise core” consistent with a noise level around 15 G.

Accordingly, we tracked all pixels with |BLOS| > 15 G.

Pixels from “the bubble” in the filter were excluded from all subsequent quantitative analyses.

Page 9: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

We also co-registered a resampled vector magnetogram from the SP instrument, produced by Schrijver et al. (2008).

This enables a crude calibration of |Bz| and |B| for each flow, at least at low spatial resolution.

Page 10: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

To baseline flow coherence times, we investigated magnetic field coherence times.

Colored: autocorrelation coeffs. over a range of lags with 2nx2n binning. Black: frame-to-frame autocorr. coeffs. at full res., linear = dashed, rank-order.

Page 11: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

We autocorrelated field structure in subregions, and fitted decorrelation as e-t/τ ; “lifetime” is τ at e-1.

Red: rank-order autocorrelations of BLOS, in (32 x 32)-binned subregions vs. lag time.

The the vertical range in each cell is [-0.5, 1.0], with a dashed black line at zero correlation.

Blue: one-parameter fits to the decorrelation in each subregion, assuming exponential decay, with the decay constant as the only free parameter.

Only subregions with median occupancy of at least 20% of pixels above our 15 G threshold were fit.

Background gray contours show 50 G and 200 G levels of |BLOS| in full-resolution pixels. As expect-ed, field structures persist longer in stronger-field regions.

Page 12: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Lifetimes of magnetic field structures are longer in subregions with higher field strengths.

This trend is true for B_LOS, B_z, and |B|.

This is entirely consistent with convection reconfiguring fields, but strong fields inhibiting convection.

Page 13: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

For short ∆t, frame-to-frame flow correlations can increase with increasing ∆t’s, and averaging prior to tracking.

Dashed lines show frame-to-frame correlation coeffs for un-averaged magnetograms.

Solid lines show correlations for averaged magnetograms.

Note complete lack of correlation at ∆t = 2 min.

Page 14: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Rapid decorrelation of noise-dominated flows can be seen by comparing overlain flow vectors from successive flow maps with short ∆t.

Note: these magnetograms were not averaged prior to tracking.

Page 15: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Flows are much more consistent from one frame to the next for longer ∆t, and averaging magneto-grams prior to tracking.

Page 16: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Flow lifetimes can be estimated via autocorrelation of flow maps.

Flows decorrelate on longer timescales when a larger apodization window, σ, is used.

Page 17: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Rebinning the data mimics use of a larger σ --- compare solid black with dashed blue.

Rebinning speeds tracking; using a larger σ slows it.

The product of macropixel size ∆x and σ defines a spatial scale of the flow, (∆x *σ) .

The decorrelation time is longer for longer ∆t, but saturates at ∆t = 128 min.

Page 18: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

We also fitted exponentials to autocorrelations of flows to determine flow lifetimes in subregions.

Red & Blue: rank-order autocorrelations of ux and uy, in (32 x 32)-binned subregions vs. lag time.

The the vertical range in each cell is [-0.5, 1.0], with a dashed black line at zero correlation.

Only subregions with median occupancy of at least 20% of pixels above our 15 G threshold were fit.

Background gray contours show 50 G and 200 G levels of |BLOS| in full-resolution pixels. As expected, field structures persist longer in stronger-field regions.

Page 19: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Lifetimes of flows are also longer in subregions with higher field strengths.

This trend is true for BLOS, Bz, and |B|.

This is consistent with the influence of Lorentz forces active region flows.

Lorentz forces such as buoyancy (e.g., Parker 1957) and torques (e.g., Longcope & Welsch 2000) can be longer-lived than convective effects.

Lifetimes for ux in subregions are shown with red +’s, uy are blue x’s, and fits to these are red and blue solid lines.

The red ∆’s (green ∇’s) are lifetimes of ux versus subregion-averaged |Bz| (|B|) from the SP data, and the

red dashed (green solid) line is a fit.

Page 20: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Black numerals correspond to log2(binsize), and show that average speed decreases with increasing ∆t and spatial scale (∆x *σ).

Red and blue numerals correspond to curl and divergences, which behave similarly.

Page 21: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Flow lifetimes for ux (+) and uy (x) as a function of ∆t and spatial scale (∆x*σ).

Power-laws were fit over a limited range of spatial scales for each ∆t.

Page 22: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Averaged over all spatial scales (∆x*σ) at a given ∆t, speeds decrease with ∆t.

Fitted slope: -0.34

Error bars are standard deviations in ∆t over all spatial scales (∆x*σ).

Lifetimes of faster flows tend to be shorter, for all spatial scales.

For a given average speed <s>, peak lifetime scales approximately as <s>-2 .

Page 23: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Lifetimes of flow divergences and curls are also longer in subregions with higher field strengths.

This trend is true for BLOS, Bz, and |B|, and the correlation is independent of the number of tracked pixels in each subregion (the “occupancy”). This is entirely consistent with Lorentz forces driving curls and divergences in magnetized regions.

Page 24: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

We also fitted power laws to the lifetimes of curls and divergences as function of spatial scale for each value of ∆t we used.

Lifetimes scale less than linearly with spatial scale.

Page 25: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Practical Conclusions, for tracking:

• Flow estimates with a given choice of tracking parameters (∆t, ∆x, σ) are sensitive to flows on particular length and time scales.

• Long-lived magnetic structures imply ∆t is less constrained in tracking magnetograms than intensities.

• It’s unwise to track with a ∆t that’s either too short (noise dominated) or too long (displacement dominated).

• Average speeds are lower for longer ∆t.

Page 26: We infer a flow field,  u ( x,y ,) from magnetic evolution over a time interval, assuming:

Scientific Conclusions:

• Flows operate over a range of length and time scales; the term “the flow” is imprecise.

• Magnetic structures, flows, and curls/divergences are longer-lived in stronger-field regions. This is consistent with both:– magnetic fields inhibiting convection, and – Lorentz forces driving photospheric flows.

• Flows with faster average speeds typically exhibit shorter peak lifetimes. The product of mean speed squared and peak lifetime is approximately constant, with units of a diffusion coefficient, cm2/sec.