Obtain and Fit a Radial Profile
CIAO 4.15 Science Threads
Overview
Synopsis:
The surface brightness flux is determined by finding the net counts in a stack of concentric annuli and then dividing by the respective areas. A specified analytic model may be fit to the resultant histogram. This information can be used, for instance, to provide evidence for extended emission and calculate the hardness ratio thereof.
Purpose:
To produce radial profiles of an HRC or ACIS imaging observation.
Related Links:
- Analysis Guide: HRC Imaging
- Analysis Guide: Extended Sources
- Radial and elliptical profiles of Image Data
Last Update: 7 Feb 2022 - Review for CIAO 4.14. Updated for Repro-5 and CALDB 4.9.6.
Contents
- Get Started
- Creating Radial Profiles
- Plotting and Fitting
- Parameter files:
- History
-
Images
- Figure 1: Annulus editing window
- Figure 2: Source annuli overlaid on data
- Figure 3: Background annulus overlaid on data
- Figure 4: Annuli that contain an unwanted point source
- Figure 5: Event file with source removed
- Figure 6: Radial profile of the source
- Figure 7: Fit to the radial profile of the source
Get Started
Download the sample data: 1838 (ACIS-S, G21.5-0.9)
unix% download_chandra_obsid 1838 evt2
In the following examples, restrict the energy range of the events:
unix% dmcopy "acisf01838N003_evt2.fits[energy=300:8000]" acis_1838_evt2.fits
Creating Radial Profiles
The ability of dmextract to operate on a stack of regions makes it possible to compute radial profiles simply by defining multiple concentric annuli.
1. Creating Multiple Annuli
Display the file:
unix% ds9 acis_1838_evt2.fits &
Select Region → Shape → Annulus and left-click on the image. A singular annular region will appear. To edit the region, make it active (left-click) and select "Get Info..." from the Region menu.
A region editing window (Figure 1) will appear, in which one can adjust the number of annuli and their sizes. Thirty-eight equally-spaced annuli, with minimium and maximum of 10 and 200 pixels respectively, which are located around (but exclude) the core of G21.5-09, are shown in Figure 2.
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Figure 1: Annulus editing window
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Figure 2: Source annuli overlaid on data
Save the annuli:
- Region → Save Regions... → Save As "annuli.reg".
- After choosing "OK" in the region filename dialog, a format dialog is opened. Set the format to "CIAO" and the coordinate system to "Physical".
Follow similar steps to create a a background annulus (Figure 3) from 200 to 225 pixels. The background is saved as "annuli_bgd.reg".
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Figure 3: Background annulus overlaid on data
The source region file looks like this:
unix% more annuli.reg # Region file format: CIAO version 1.0 annulus(4062,4240,10,15) annulus(4062,4240,15,20) annulus(4062,4240,20,25) . . (etc.) . annulus(4062,4240,190,195) annulus(4062,4240,195,200)
and the background annulus like this:
unix% more annuli_bgd.reg # Region file format: CIAO version 1.0 annulus(4062,4240,200,225)
2. Removing Contaminating Point Sources
Suppose that the annuli had a maximum radius of 250 pixels in the previous step. The point source circled in green in Figure 4 would then contribute to a few of the radial profiles.
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Figure 4: Annuli that contain an unwanted point source
Having saved the region in ds9:
unix% more contam.reg # Region file format: CIAO version 1.0 circle(4235.9495,4084.4343,8)
it is easy to remove this point source before generating the radial profiles:
unix% dmcopy "acis_1838_evt2.fits[exclude sky=region(contam.reg)]" acis_1838_excl_evt2.fits
This command creates a new event file with the point source removed (Figure 5). Use this event file in the rest of the radial profile analysis. This is not an issue in this example, so we continue using acis_1838_evt2.fits.
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Figure 5: Event file with source removed
3. Run dmextract
It is now possible to run dmextract to extract the radial profiles:
unix% punlearn dmextract unix% pset dmextract infile="acis_1838_evt2.fits[bin sky=@annuli.reg]" unix% pset dmextract outfile=1838_rprofile.fits unix% pset dmextract bkg="acis_1838_evt2.fits[bin sky=@annuli_bgd.reg]" unix% pset dmextract opt=generic unix% dmextract Input event file (acis_1838_evt2.fits[bin sky=@annuli.reg]): Enter output file name (1838_rprofile.fits):
The contents of the parameter file may be checked using plist dmextract.
The tool calculates several new columns, the surface brightness (SUR_BRI) and its error (SUR_BRI_ERR) among them:
unix% dmlist 1838_rprofile.fits cols -------------------------------------------------------------------------------- Columns for Table Block HISTOGRAM -------------------------------------------------------------------------------- ColNo Name Unit Type Range . . (output omitted) . 20 NET_COUNTS count Real8 -Inf:+Inf Net Counts 21 NET_ERR count Real8 -Inf:+Inf Error on Net Counts 22 NET_RATE count/s Real8 -Inf:+Inf Net Count Rate 23 ERR_RATE count/s Real8 -Inf:+Inf Error Rate 24 SUR_BRI count/pixel**2 Real8 -Inf:+Inf Net Counts per square pixel 25 SUR_BRI_ERR count/pixel**2 Real8 -Inf:+Inf Error on net counts per square pixel . . .
SUR_BRI is calculated as NET_COUNTS/AREA (columns 19 and 7, respectively); SUR_BRI_ERR is NET_ERR/AREA (columns 20 and 7).
Note that since the surface brightness is calculated from the NET_COUNTS column, the background counts are already removed from it: NET_COUNTS = COUNTS - [(BG_COUNTS/BG_AREA) * AREA]. It is therefore not necessary to account for the background separately when fitting this data.
Suppose you are interested in a radial profile in units of flux (photons/cm2/pix2/s or photons/cm2/arcsec2/s). Exposure-corrected images (e.g. the "flux" image file produced by fluximage and merge_obs) should NOT be used; while the surface brightness profile will be correctly determined, the uncertainties will be incorrect. Instead, in order to appropriately propagate the errors with dmextract, an input image in units of counts (or an input energy-filtered event file) should be used, and in addition an exposure map supplied to provide the counts-to-flux conversion.
unix% fluximage infile=acis_1838_evt2.fits outroot=1838 bands="0.3:8.0:2.5" binsize=1 unix% dmextract infile="1838_0.3-8.0_thresh.img[bin sky=@annuli.reg]" \ ? outfile=1838_flux_rprofile.fits \ ? bkg="1838_0.3-8.0_thresh.img[bin sky=@annuli_bgd.reg]" \ ? exp=1838_0.3-8.0_thresh.expmap \ ? bkgexp= 1838_0.3-8.0_thresh.expmap \ ? opt=generic — or extracting from an events file: unix% dmextract infile="acis_1838_evt2.fits[energy=300:8000][bin sky=@annuli.reg]" \ ? outfile=1838_flux_rprofile.fits \ ? bkg="acis_1838_evt2.fits[energy=300:8000][bin sky=@annuli_bgd.reg]" \ ? exp=1838_0.3-8.0_thresh.expmap \ ? bkgexp= 1838_0.3-8.0_thresh.expmap \ ? opt=generic
The tool calculates several new columns, including the surface brightness in flux units, (SUR_FLUX) and its error (SUR_FLUX_ERR), where the surface brightness is calculated from the NET_FLUX column with background accounted for: NET_FLUX = FLUX - (AREA / BG_AREA) * BG_COUNTS / (EXPOSURE * MEAN_BG_EXP).
The CEL_FLUX and CEL_FLUX_ERR columns are also provided, with transforms applied to convert values in pixels to ones in arcsec (if the appropriate WCS information is provided in the input file).
dmextract in CIAO 4.11 now creates the RMID column. It is the average of the annulus radii.
unix% dmlist 1838_rprofile.fits'[cols R,RMID]' data -------------------------------------------------------------------------------- Data for Table Block HISTOGRAM -------------------------------------------------------------------------------- ROW R[2] RMID 1 [ 10.0 15.0] 12.50 2 [ 15.0 20.0] 17.50 3 [ 20.0 25.0] 22.50 4 [ 25.0 30.0] 27.50 5 [ 30.0 35.0] 32.50 ...
Plotting and Fitting
The radial profile can now be plotted in python using matplotlib
unix% python >>> from pycrates import read_file >>> import matplotlib.pylab as plt >>> >>> tab = read_file("1838_rprofile.fits") >>> xx = tab.get_column("rmid").values >>> yy = tab.get_column("sur_bri").values >>> ye = tab.get_column("sur_bri_err").values >>> >>> plt.errorbar(xx,yy,yerr=ye, marker="o") >>> plt.xscale("log") >>> plt.yscale("log") >>> plt.xlabel("R_MID (pixel)") >>> plt.ylabel("SUR_BRI (photons/cm**2/pixel**2/s)") >>> plt.title('G21.5-0.9 [Chip S3, T=120, Offsets=-1,0,1]')
which produces Figure 6.
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Figure 6: Radial profile of the source
A model can be fit to the measured surface brightness profile using Sherpa. As mentioned before, the background counts are already removed from the surface brightness, so it is not necessary to account for the background separately when fitting the data.
unix% sherpa sherpa> load_data(1,"1838_rprofile.fits", 3, ["RMID","SUR_BRI","SUR_BRI_ERR"]) sherpa> set_source("beta1d.src") sherpa> src.r0 = 105 sherpa> src.beta = 4 sherpa> src.ampl = 0.00993448 sherpa> freeze(src.xpos) sherpa> fit() Dataset = 1 Method = levmar Statistic = chi2 Initial fit statistic = 4.24792e+11 Final fit statistic = 221.594 at function evaluation 30 Data points = 38 Degrees of freedom = 35 Probability [Q-value] = 5.65854e-29 Reduced statistic = 6.33127 Change in statistic = 4.24792e+11 src.r0 134.119 +/- 0 src.beta 4.6542 +/- 0.0351998 src.ampl 1.51907e-06 +/- 1.70734e-08 sherpa> plot_fit() sherpa> import matplotlib.pylab as plt sherpa> plt.xscale("log") sherpa> plt.yscale("log")
which produces Figure 7.
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Figure 7: Fit to the radial profile of the source
Note that the effects of 2D blurring in a 2D image cannot be reproduced by convolving the radial profile of the PSF with a profile of the model. See "Accounting for PSF Effects in 2D Image Fitting".
Parameters for /home/username/cxcds_param/dmextract.par #-------------------------------------------------------------------- # # DMEXTRACT -- extract columns or counts from an event list # #-------------------------------------------------------------------- infile = acis_1838_evt2.fits[bin sky=@annuli.reg] Input event file outfile = 1838_rprofile.fits Enter output file name (bkg = acis_1838_evt2.fits[bin sky=@annuli_bgd.reg]) Background region file or fixed background (error = gaussian) Method for error determination(poisson|gaussian|<variance file>) (bkgerror = gaussian) Method for background error determination(poisson|gaussian|<variance file>) (bkgnorm = 1.0) Background normalization (exp = ) Exposure map image file (bkgexp = ) Background exposure map image file (sys_err = 0) Fixed systematic error value for SYS_ERR keyword (opt = generic) Output file type: pha1 (defaults = ${ASCDS_CALIB}/cxo.mdb -> /soft/ciao/data/cxo.mdb) Instrument defaults file (wmap = ) WMAP filter/binning (e.g. det=8 or default) (clobber = no) OK to overwrite existing output file(s)? (verbose = 0) Verbosity level (mode = ql)
History
04 Jan 2005 | updated for CIAO 3.2: version numbers |
20 Dec 2005 | updated for CIAO 3.3: default value of dmextract error and bkgerror parameters is "gaussian" |
01 Dec 2006 | updated for CIAO 3.4: ChIPS and Sherpa versions |
22 Jan 2008 | updated for CIAO 4.0: updated ChIPS and Sherpa syntax; kernel parameter removed from dmtcalc; filename and contam.reg file updated for reprocessed data (version N002 event file) |
09 Feb 2009 | updated for CIAO 4.1: images are inline; Python and S-Lang syntax for ChIPS and Sherpa sections |
03 Apr 2009 | new notes on 2D blurring on images |
08 Feb 2010 | updated for CIAO 4.2: changes to the ds9 region file format menu; ChIPS and Sherpa version |
19 Jul 2010 | the S-Lang syntax has been removed from this thread as it is not supported in CIAO 4.2 Sherpa v2. |
31 Aug 2010 | updated load_data command to use Data Model "cols" syntax |
13 Jan 2011 | updated for CIAO 4.3: add opt=generic to dmextract command to avoid a warning message |
07 Mar 2012 | reviewed for CIAO 4.4: changed load_data syntax to work in CIAO 4.4 |
03 Dec 2012 | Review for CIAO 4.5; file name versions. |
10 Dec 2013 | Review for CIAO 4.6; no changes. |
22 Dec 2014 | Review for CIAO 4.7; added additional see also info. |
05 Jul 2017 | Added admonishment on obtaing the surface brightness profile in flux units. |
23 Oct 2018 | In CIAO 4.11, the rmid column is now created by dmextract. |
05 Apr 2019 | Updated to use matplotlib plotting |
07 Feb 2022 | Review for CIAO 4.14. Updated for Repro-5 and CALDB 4.9.6. |