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Published byVictor Ross Modified over 9 years ago
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Point Source Subtraction Bart Pindor University of Melbourne
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Objectives Remove Bright EG point sources prior to polynomial EOR FG subtraction Issue: Mode-mixing / ‘Frizz’ RTS will Peel some bright sources as part of CML It will be possible/necessary to remove further sources after imaging Characterize residuals/effect on (the other) PS
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Importance of PS Subtraction Liu et al. 2008
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MWA Beam > 1%
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Matched Filters Generally; positions, fluxes, spectra unknown Matched filter is the optimal linear S/N estimator of source amplitudes Peaks in filtered maps used to identify PS
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Matrix Filters Extension of Matched Filters to multi-channel Developed for Planck CMB maps (Herranz et al. astro-ph/08082884 Incorporates cross-channel correlations but allows for independent spectral slopes Each filtered image estimates source fluxes
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Matrix Filters MTXF applied to MAPS + RTS 8s snapshot Beam is a single simulated position-independent point source Peak pixel is the inferred position
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Matrix Filters ISSUES: Centroiding Efficient beam reconstruction Iteration Diffuse sky model
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Matrix Filters Aim for frizz-free
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OOB – oh oh? Sidelobes will appear from sources outside of the primary beam Can we detect/locate sources in combined maps? Use of MWA survey or other (GMRT?) data to locate relevant source? What is the accuracy of calibration solution in that direction?
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Open Issues / Simulation To-Do: Ionosphere HEALPIX pixelization Integration, co-addition, registration Rotation synthesis Peeling levels and residuals Calibration / Beam Accuracy OOB 8 minutes * 200 Channels * 5000 images
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Open Issues / Simulation To-Do: Ionosphere HEALPIX pixelization Integration, co-addition, registration Rotation synthesis Peeling levels and residuals Calibration / Beam Accuracy OOB 8 minutes * 200 Channels * 5000 images = 136 years!
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