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Published byFrøydis Møller Modified over 6 years ago
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Matrix Template Matching Reloaded Third ATNF Gravitational Wave Workshop 2009 Willem van Straten
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Synopsis “The Matrix”: polarisation and pulsar timing
invariant interval & matrix template matching “The One”: PSR J use bright source to calibrate itself “The Reload”: PSR J use bright source to calibrate weak sources “The Future”
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The Matrix Statistical definition of polarisation in terms of the second moments of the electric field, variance on diagonal, covariance off diagonal Rho = coherency matrix E = column vector Outer product is implied, Hermitian transpose, ensemble average … Rho is Hermitian -> 4 degrees of freedom
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Stokes Parameters S_k = four Stokes parameters (Einstein notation is used) Sigma_0 = 2x2 identity matrix; Sigma_1-3 are the Pauli matrices, Tr is the matrix trace operator. Coherency matrix is a linear combination of hermitian basis matrices; Stokes parameters are projections onto those basis matrices
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Stokes 4-vector Total intensity (time-like) S0 = I
Polarization vector (space-like) S = (S1, S2, S3)
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Transformations Jones matrix, J Mueller matrix, M
Linear transformations of electric field Congruence transformation of coherency matrix Lorentz transformation of Stokes parameters
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Rotations and Boosts Rotations: Boosts:
rotate S about an axis by an angle leave S0 unchanged Boosts: boost along an axis by a Lorentz factor modify both S0 and S
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Boosts: Instrumental Non-orthonormality of receptors:
differential gain (along S1 axis) cross-coupling (along S2 & S3 axes) Mixing of S0 and S depends on S• Produce pulse phase dependent distortions of total intensity profile
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Template Matching P() = aS(+ ) + b P() = aS()e-i2 + ()b
FFT P() = aS()e-i2 + ()b
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Frequency Domain High frequency power yields greatest constraint on slope,
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The One: PSR J0437-4715 The good: The ugly:
closest and brightest MSP known narrow pulse peak The ugly: OPM sweep near pulse peak TOA strongly distorted by calibration errors
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PSR J profile
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PSR J spectrum Fluctuation power spectra (power in Fourier transform of pulse profile) Black = total intensity, Red = polarized intensity At high frequencies (power on shortest time scales), polarized flux provides more power
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Parallactic Variation of Arrival Time
Polarisation also impacts on high-precision timing 6.5 hours of time-of-arrival ~9 microsecond peak-to-peak Due to parallactic rotation of receiver
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Even After Calibration
Ideal feed assumption 2 us peak-to-peak
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Enter the Invariant Form the invariant profile, Sinv(), where Sinv2 = S02 - |S|2 Dramatically reduced systematic error in PSR J data (Britton 2000; van Straten et al 2001)
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Caveats Sinv 0 as |S|/S0 1 Limited by S/N:
depolarization due to time/frequency variations of instrumental response baseline estimation error/bias no longer normally distributed error Limited by degree of polarization: Sinv 0 as |S|/S0 1
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Matrix Template Matching (MTM)
Replace scalars with matrices 6 new degrees of freedom 4 times the number of constraints
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Relative TOA Errors Pulsar MTM invariant J0437-4715 0.8318(1)
1.4314(3) J 0.669(4) 1.80(2) J 0.877(2) 1.543(5) B 0.9314(9) 1.430(2) J 0.959(4) 1.464(8) B 0.862(4) 1.451(9) Relative uncertainty with respect to timing total intensity profile Does not consider systematic error
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Limitations Also limited by S/N: Calibration before integration …
depolarization due to time/frequency variations of instrumental response Calibration before integration …
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Calibration Options (2007)
Measurement equation modeling (MEM; van Straten 2004) unknown source and calibrators observed over a range of parallactic angles Matrix template matching (MTM; van Straten 2006) known source matched to a single (short) observation; no calibrator input
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Parallactic variation of Stokes parameters
How is J determined? Variation of Stokes parameters as a function of parallactic angle (pulsars provide many constraints, one page for each pulse phase bin)
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MTM Reloaded Merge MEM and MTM methods
use template to also constrain calibrator model time-variations and multiple observations Derive 20 MEM solutions (~8hr each) Integrate into standard (~150hr) Derive 150 MEM/MTM solutions (~3.5hr) both receiver and calibrator
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Receiver solution 2003
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Receiver solution 2008
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Calibrator solution 2003
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Calibrator solution 2008
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Ellipticity time variation 54
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Ellipticity time variation 74
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Calibrator time variation 54
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Calibrator time variation 74
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PSR J profile
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PSR J spectrum
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Arrival Time Comparison
Intensity TM Matrix TM Postfit r.m.s. 1.453 s 0.942 s Reduced 2 2.03 1.01 two CPSR2 bands at 20cm 234 TOAS (Nfree=217) r.m.s reduced by 39% (predicted 33%)
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Conclusions Long-term stability of PSR J can be exploited to calibrate instrumental polarization Matrix Template Matching can do better than doubling integration length
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The Future Turn MEM/MTM solutions back on PSR J0437-4715
Quantify long-term stability of MSP polarization Fit time- & frequency-varying receiver & calibrator model to MEM/MTM solutions * MTM-only data from 2006 have underestimated errors * Variations in MSP polarization would appear as phase-dependent residuals * Well-fit model with fewer parameters than data increases instantaneous precision
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