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Fundamental limits of radio interferometers: Source parameter estimation Cathryn Trott Randall Wayth Steven Tingay Curtin University International Centre for Radio Astronomy Research (ICRAR)
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How do the limits of the instrument and our methods impact our measurements? Fundamental limits of radio Interferometers: - dynamic range - parameter estimation Dataset information content Deconvolution artifacts Image space noise correlations (Fourier transform) Calibration Ionosphere Pointing errors Primary beam errors
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How do the limits of the instrument and our methods impact our measurements? Fundamental limits of radio Interferometers: - dynamic range - parameter estimation Dataset information content Deconvolution artifacts Image space noise correlations (Fourier transform) Calibration Ionosphere Pointing errors Primary beam errors Focus on estimation limits of dataset
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Science drives configuration: what is the impact of array layout? MWA configuration (Beardsley et al. 2012)Hypothetical 128 antenna configuration Same longest baseline and number of antennas - EoR/diffuse emission - short - Fine structures - long - Source localization - long Science
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How do changing observing conditions affect our ability to calibrate? Wide-field observations: sources in sidelobes, distortion at field edges Non-stationary point spread functions Low-frequency observations – ionospheric refraction of wavefront: Beam changes on short timescales (secs-mins) Cohen & Rottgering (2009) Instrument calibration on short timescales → observe bright sources, fit positions, remove from dataset (e.g., peeling) → impact??
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Measurement conditions changing: require short timescale calibration Current paradigm Small number of elements Moderate primary beam Stable atmosphere/ionosphere (high frequency) Long integrations Few bright calibrators New paradigm Large number of elements Wide field-of-view Varying atmosphere/ionosphere (low frequency) Snapshot observations Highly-populated fields
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How well can we measure the parameters of a model from some data? → The Cramer-Rao bound - Precision on point source parameters: noise level (σ) set by T sys, Δν, Δt - I u, I v, I uv dependent on array configuration - long baselines yield more information, but all baselines important Pos'n Flux Dataset contains fixed amount of information – antennas, channels, time The Fisher Information: the Information contained within a dataset
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How well can we measure the parameters of a model from some data? → The Cramer-Rao bound - Precision on point source parameters: noise level (σ) set by T sys, Δν, Δt - I u, I v, I uv dependent on array configuration - long baselines yield more information, but all baselines important Pos'n Flux Dataset contains fixed amount of information – antennas, channels, time Array config Source flux Thermal noise
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Precision on source location – 8 second integration; measured data only ν = 150 MHz T sys = 440K
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Precision on source location – 8 second integration; measured data only
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ν = 150 MHz T sys = 440K
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Residual signal in visibilities is independent of source strength → independent of source strength Propagate errors to visibilities Example application Propagate errors to EoR power spectrum → how does this residual signal affect statistical EoR estimation?
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EoR power spectrum Sequentially peeled sources (> 1 Jy) Performed a fully-covariant error propagation Visibilities → Power spectrum MWA, PAPER What is the magnitude of this effect, compared with the thermal noise? Hales et al. (1998)
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EoR power spectrum residual signal Trott, Wayth & Tingay (2012, submitted) Thermal noiseResidual signal Core + ring Uniform Higher angular resolution Higher LOS resolution
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How do we peel sources? What information should we use? Previous analysis assumed sequential and independent peeling of sources from the data alone... → no impact of other sources on information available in dataset → measurement dataset alone used for position estimation Open questions: → What is the balance of using the current dataset versus previous information for estimating source position? → Should we peel sequentially or simultaneously?
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Precision on source location – 8 second integration; measured data only
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Optimal balance of prior information and measured data – ionosphere ~60” variation Data use dominant Prior information Use dominant Example prior information: mean over last N measured positions
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Optimal balance of prior information and measured data – ionosphere ~10” variation
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Peeling sources: simultaneous versus sequential Two models for peeling sources: 1. Simultaneously estimate positions of all sources from measured data → non-uniqueness, correlations between sources, but Gaussian noise in visibilities 2. Subtract previous solution for all but one source, and fit each source sequentially → data non-Gaussian, corrupted by errors → Which is a better strategy from an information perspective? Future work...
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Summary Information content of data limits our ability to precisely measure parameters (e.g., source flux, position) Imprecise parameter estimation propagates to additional uncertainty in scientifically-relevant metrics How we observe, calibrate and estimate impact the utility of our science metrics
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