P. Popesso on behalf of the PACS ICC
Transcription
P. Popesso on behalf of the PACS ICC
P. Popesso on behalf of the PACS ICC PACS Photometer Processing Level 1 Data Products Sky+ TBG + 1/f High‐Pass Filter (removal of running median) PhotProject Point source observations Cosmological surveys Inversion algorithm (MadMap, Cantalupo et al. 2010) Extended Objects PACS Photometer Processing Level 1 Data Products Sky+ TBG + 1/f High‐Pass Filter (removal of running median) PhotProject Point source observations Cosmological surveys dominating final noise regulating behavior of individual noise components: • noise per pixel • cross correlated noise Parameters to be considered: High‐pass filter width Projection parameters: output pixel size and drop size Output pixel size Drop size Error map es7mate within Hipe 8.0 Current state: error estimate based on error propagation up to PhotHighPassFilter task (removes large part of the 1/f noise via median filter removal) Due to 1/f noise removal, the timeline noise power spectrum changes drastically, making the standard error propagation no longer feasible ICC discussed and approved two different solutions Solu7ons: Error propagation is no longer supported in the PACS pipeline: error map of Level 2 Product is set to zero Two solutions depending on data redundancy: high redundancy (few AOR of the same field or high repetition number within the same AOR) error maps from weighted mean error (see next slide) low redundancy (only scan and cross scan without repetitions): error map derived from coverage map via calibration obtained from high redundancy case High redundancy data: 1) error map Method based on high redundancy observations of blank fields in cosmological surveys. Blank fields repeated AORs are mapped into maps with the same WCS Error per pixel is given by error of the (coverage) weighted mean of flux distribution Dedicated ipipe script will be provided soon to estimate the error map with this method for all applicable cases 2) cross‐correlated noise The values in nearby pixels are found to be correlated due to remaining 1/f noise and projection effects Positive (negative) correlations increase (decrease) the error in measured fluxes For each case we estimate the Correlation map following the method used by the PEP Consortium Correlation map describes correlation with the central pixel Assumes that correlation depends only on relative positions Calculates 2×NOBS series of pairs of pixels and averaged over > 1000 pairs with same [Δx,Δy] across the map 2) Cross correla7on noise Cross correlation term PSF Assuming pixel constant error: Cross correlation factor: Correlation matrix Cross correlated noise factor to be applied to any noise estimate to take into account cross‐correlated noise The Cross correlated noise factor depends on PSF shape or aperture Dedicated task and ipipe script will soon be provided for applicable cases Low redundancy case error map created via calibration of coverage map. calibration parameterized as a function of hp width, output pixel size and pixfrac calibration performed on data with very high redundancy in medium and fast speed cross‐correlation noise correction factor parameterized as well in the same parameter space First component: error map‐coverage map calibra7on • tight relation between noise per pixel and pixel coverage • dispersion of 0.07‐0.08 dex (~17‐20%) • error ≈ coverage‐2 • SPG and ipipe cases included • calibration of the type: Log(error)=α×log(coverage)+β • no dependency on initial coverage of the co‐added maps, just on final coverage • almost no dependency on PhotProject mapping flavors: • mean map • weighted mean map (weights given by stdev of running box along the timeline suggested by ipipe scripts for applicable cases) Noise per pixel varia7on Same output pixel and drop size Different HP width Same HP width and output pixel size Different drop size (pixfrac) In summary… pixfrac Log(error)=α×log(coverage)+β 0.01 0.001 0.0001 0 1 2 3 4 Second component: cross correlated noise 6.4 arcsec output pixel size 3.0 arcsec output pixel size pixfrac drop size/output pixel size Library of correlation matrices and PSFs Cross correla7on correc7on factor Cross correlation term drop size/output pixel size See also Casertano et al. 2000 Assuming pixel constant error: Cross correlation factor Estimate available for PSF fitting of three different sizes and for aperture photometry for three apertures. 0.01 0.001 0.0001 160 μm 0 1 2 3 4 Noise per pixel and cross correlation correction go in opposite direction as a function of the drop size‐outpix size ratio Global noise es7mate Noise of the final map is estimated by extracting the flux at fix aperture at random position in the map. The dispersion of the distribution of extracted fluxes provide the global noise estimate HPF width Noise per pixel and cross correlated noise compensate each other leaving only small differences due to HPF width • the smaller the width, the smaller the global noise (30‐35% effect from 15 to 40 readouts) • pixfrac and outputpixel size affect only at the 2‐4% level Table example To guide the User We provide the best fitting function through the data to retrieve error components at defined hp width, output pixel and drop size: 3D Third order polynomial (22 parameters) α = Σm=1,Na(m)xiyjzk i+j+k≤ m with m=3 β = Σm=1,Nb(m)xiyjzk i+j+k≤ m with m=3 f = Σm=1,Nc(m)xiyjzk i+j+k≤ m with m=3 ‐ where α and β are slope and normalization of error map‐coverage map correlation best fit line; ‐ f is the cross correlation noise correction factor; ‐ and x, y, z are hp width, output pixel and drop size, respectively Caveats Method working for point source observation where background noise is dominating Error map calibration not applicable for very bright point sources (like an extended emission for PACS Photometer ) pointing jitter is the dominating source of noise For bright sources and extended emission calibration possible if flux is included as additional parameter