Investigating the In-Flight Performance of the UVIT Payload on ASTROSAT
P.T. Rahna, Jayant Murthy, M.Safonova, F.Sutaria, S. B. Gudennavar, S. G. Bubbly
MMNRAS , 1–8 (2018) Preprint 27 September 2018 Compiled using MNRAS L A TEX style file v3.0
Investigating the In-Flight Performance of the UVITPayload on
AstroSat
P. T. Rahna, (cid:63) Jayant Murthy, † M. Safonova, F. Sutaria, S. B. Gudennavar and S. G. Bubbly Department of Physics and Electronics, CHRIST (Deemed to be University), Bengaluru 560029, India Indian Institute of Astrophysics, Bengaluru 560034, India M. P. Birla Institute of Fundamental Research, Bengaluru 560001, India
Accepted . Received ; in original form
ABSTRACT
We have studied the performance of the Ultraviolet Imaging Telescope payload on
AstroSat and derived a calibration of the FUV and NUV instruments on board. Wefind that the sensitivity of both the FUV and NUV channels is as expected from groundcalibrations, with the FUV effective area about 35% and the NUV effective area aboutthe same as that of
GALEX . The point spread function of the instrument is on theorder of 1.2 – 1.6 (cid:48)(cid:48) . We have found that pixel-to-pixel variations in the sensitivity areless than 10% with spacecraft motion compensating for most of the flat-field variations.We derived a distortion correction but recommend that it be applied post-processingas part of an astrometric solution.
Key words: instrumentation: detectors, techniques: photometric, ultraviolet: general
The
AstroSat satellite was launched by the Indian SpaceResearch Organization (ISRO) on Sept. 28, 2015 into a near-equatorial (inclination 6 ◦ ) orbit with an altitude of 650 km(Singh et al. 2014). One of the instruments aboard the satel-lite is the Ultraviolet Imaging Telescope (UVIT) designedto observe large areas of the sky (field of view: 28 (cid:48) diame-ter) with a resolution better than 1 . (cid:48)(cid:48) (Kumar et al. 2012).UVIT was built by the Indian Institute of Astrophysics (IIA)in collaboration with the Inter-University Centre for As-tronomy and Astrophysics (IUCAA), the Canadian SpaceAgency (CSA) and ISRO. It consists of two co-aligned tele-scopes with three identical intensified CMOS detectors inthe far-ultraviolet (FUV), near-ultraviolet (NUV) and visi-ble (VIS).The ground calibration of the UVIT has been discussedby Postma et al. (2011), and the in-flight tests by Subrama-niam et al. (2016). The in-flight calibration of the instrumenthas been presented by Tandon et al. (2017a). In this work,we present an independent evaluation of the performance ofthe UVIT FUV and NUV detectors based on observationstaken in the Performance and Verification (PV) phase withadditional data from our own observations and later cali-bration observations. The VIS channel was intended onlyfor tracking purposes and its characteristics will have to be (cid:63) E-mail: [email protected] † E-mail: [email protected] investigated in detail in order to use it for scientific purposes.We will defer this to a further work. The data were reducedand analysed using the
JUDE (Jayant’s UVIT Data Ex-plorer: Murthy et al. (2016); Murthy et al. (2017)) software.Because we have used an independent software system anddifferent calibration techniques, this work provides a verifi-cation of the UVIT processing software and the calibration.
AstroSat was conceived as India’s first dedicated astronomysatellite with three X-ray instruments and a UV payload(UVIT) (Pati & Rao 1998; Pati 1999). A recent overviewof the
AstroSat satellite and its mission was presented bySingh et al. (2014) with a description of the flight configura-tion of UVIT in Tandon et al. (2017b). The various payloadson
AstroSat were turned on in sequence after the launch,with UVIT being the last payload to begin observing onNovember 30, 2015 with an observation of the open clusterNGC 188.UVIT consists of two identical Ritchey-Chr´etien tele-scopes with intensified CMOS detectors: one telescope witha CsI detector (FUV channel) with the other telescope feed-ing two detectors through a dichroic. The dichroic reflectslight in the NUV spectral range onto a CsTe photocathodeand transmits the visible light onto an S20 photocathode.Each channel is equipped with a filter wheel with 5 filtersproviding spectral coverage in a number of passbands from c (cid:13) a r X i v : . [ a s t r o - ph . I M ] M a y P. T. Rahna et al.
Figure 1.
Plots of standard stars spectra with over plotted effective areas of UVIT and
GALEX filters.
Table 1.
General properties of UVIT filtersFilter Slot (F) Type Passband Effective bandwidth Central λ Channel (nm) ∆ λ (nm) (nm)FUV 0 Block1 CaF -1 125 −
179 44.1 150.942 BaF −
183 37.8 154.963 Sapphire 145 −
181 27.4 160.75 Silica 160 −
179 13.13 170.37 CaF -2 126 −
179 42 151.7NUV 0 Block1 Silica 194 −
304 76.9 241.82 NUV15 190 −
240 27.1 218.53 NUV13 220 −
265 28.17 243.65 NUVB4 245 −
282 28.23 262.86 NUVN2 273 −
288 8.95 279.0VIS 0 Block1 VIS3 385 −
530 107.65 458.62 VIS2 360 −
410 36.24 390.53 VIS1 318 −
374 37.65 347.44 Neutral Density 366 −
533 97.0 450.15 BK7 Window 304 −
550 185. 430.7 the FUV to the visible (Table 1). The effective bandwidthin Table 1 is the integral of the normalized effective area,with the central (or ‘mean’) source-independent wavelengthdefined as λ = (cid:82) λA norm ( λ ) dλ (cid:82) A norm ( λ ) dλ , (1)where A norm is the effective area normalizedto 1. We have plotted the effective areas mea-sured during the ground calibrations (available at http://uvit.iiap.res.in/Instrument/Filters ) inFig. 1. The UVIT instrument was calibrated in the M. G. K. MenonSpace Science Laboratory at the Indian Institute of Astro-physics with results described by Kumar et al. (2012). Thefirst 6 months of the mission were dedicated to the per-formance and verification (PV) phase when selected targetswere viewed through different filter combinations. These ob-servations and their analysis and reduction have been dis-cussed by Subramaniam et al. (2016) and Tandon et al.(2017b). We have used these observations along with ourown Guaranteed Time (GT) and AO observations to in-dependently characterize the in-flight performance of the
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VIT Performance UVIT instrument. All our observations begin with the Level1 data created by the Indian Space Science Data Centre(ISSDC). We have processed these data through the
JUDE software (Murthy et al. 2016; Murthy et al. 2017) to createphoton event lists and images of the sky.
Two standard stars were observed as part of the UVITcalibration program: white dwarfs LB227 and HZ4, bothof which are standard calibrators of the instrumentson the
Hubble Space Telescope (Bohlin 1996). We ob-tained their spectra from the CALSPEC database andsmoothed with a natural cubic spline. The spectra ofthe two stars are plotted in Fig. 1 along with the ef-fective area curves of the UVIT FUV and NUV filtersand both GALEX bands. The UVIT effective areas arefrom http://uvit.iiap.res.in/Instrument/Filters andthe
GALEX effective areas from the SVO Filter Profile Ser-vice (Rodrigo et al. 2012). We convolved the stellar spectrumwith the effective area curve of each filter and have tabulatedthe expected count rate in Table 2.The standard operating procedure for the FUV andNUV detectors is to read the 512 ×
512 full frame at arate of 29 frames per second; faster readouts (up to 600per second) with smaller windows are available but we onlyused full-frame observations here. For the purposes of thiswork, we have defined an observation as a contiguous setof data frames; i.e. we did not co-add different data setswhere, for whatever reason, there was a time gap of morethan 10 seconds in the data. With this definition, we have 59independent observations of HZ4 over 4 orbits, and 22 ob-servations of LB227 in one orbit taken over the period Feb.to Dec. 2016. We measured the count rate in each of the ob-servations and tabulated the weighted mean and standarddeviation in Table 2, assuming Poissonian statistics in theobserved counts. We compared the observed count rate tothat expected from the ground calibration and found thatit was between 70% – 90% of the pre-flight values (column‘Obs./Exp.’ in Table 2). Note that the HZ4 was too brightto observe in most of the NUV filters.
In principle, the photometric calibration should be done bycomparing the observed fluxes to those predicted from thestandard stars. However, because only two standard starswere observed in the PV phase (HZ4 and LB227), we haveexpanded the list to include those stars detected in the FUVand the NUV which were also detected by
GALEX . The
GALEX photometric calibration has been described by Mor-rissey et al. (2007) and was tied to an absolute photometriccalibration through observations of hot white dwarfs, includ-ing HZ4 and LB227.We used the IDL (Interactive Data Language ) libraryroutine find.pro (adapted from DAOPHOT: Stetson (1987)) Figure 2.
Comparison of UVIT photometry with
GALEX in dif-ferent UVIT NUV filters.
Figure 3.
Comparison of UVIT photometry with
GALEX in dif-ferent UVIT FUV filters. to find the point sources in the UVIT images and matchedthem with
GALEX . We then used aper.pro to perform aper-ture photometry and extract fluxes from the UVIT imagesand both
GALEX bands, where available. If there were mul-tiple
GALEX observations of a field, we used the one withthe greatest exposure time. In each case, we inspected theimage to ensure that we were selecting the same source inboth UVIT and
GALEX . Stars used in our calibration arelisted in Table 3.There is a tight correlation between the observed UVITcounts (in all bands) and the
GALEX counts up to an ob-served count rate of 15 cps in UVIT above which non-linearity sets in (about 9.7% roll-off, as discussed below).There is effectively no non-linearity in the
GALEX data atthese fluxes because of the faster response time of theirdelay-line anodes. The errors in either data set are domi-nated by photon noise and were calculated from the square
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Table 2.
UVIT count rates (counts s − ) for standard stars.Filter HZ4 expected HZ4 observed Obs./Exp. c LB227 expected LB227 observed Obs./Exp. c Corr. a mean stdev Corr. a mean stdevFUV CaF -1 F1 28.94 20.59 15.92 0.19 0.77 15.69 14.17 10.96 0.41 0.77BaF F2 26.34 19.6 14 . d - 0.75 13.74 - 9.85 0.08 0.72Sapphire F3 17.61 15.34 12.13 0.22 0.79 8.95 - 7.60 0.06 0.85Silica F5 6.33 - 5.12 0.13 0.81 3.09 - 2.99 0.06 0.97CaF -2 F6 25.88 19.41 - - - 13.97 - - - -NUV Silica F1 133.55 - b - - 68.75 - - - -B15 F2 9.92 - 6.88 0.49 0.69 5.13 - 3.54 0.07 0.69B13 F3 49.77 - b - - 25.65 19.32 14.34 0.19 0.74B4 F5 35.59 - b - - 18.62 15.92 11.31 0.07 0.71N2 F6 6.02 - 4.84 0.27 0.80 3.13 - 2.55 0.04 0.82 a Non-linearity correction applied (see Sec. 3.2.3). b Window mode. c Ratio between observed and expected count rates. d Single observation.
Table 3.
Photometry of stars used in the calibration. The full table is available in the electronic attachment.Star ID RA[deg] Dec[deg]
GALEX [counts s − ] t GALEX [sec] UVIT[counts s − ] t UVIT [sec] Fliter Detector1 11.9652 85.3188 20.664 222 8.347 12.801 F1 FUV2 62.3706 17.1315 26.998 14807.95 9.89 326.072 F2 FUV3 58.842 9.7884 46.752 13321.1 15.039 71.248 F2 FUV4 20.9410 -58.8057 40.404 219 11.257 630.811 F3 FUV5 62.3706 17.1315 26.998 14807.95 2.968 244.033 F5 FUV1 10.6417 -9.2020 11.681 28993.15 12.368 297.733 F1 NUV2 12.0834 85.2239 92.103 222 3.149 255.785 F2 NUV3 83.5602 21.9034 21.218 167 3.997 548.825 F3 NUV4 12.951 -27.1692 43.264 224 12.813 1603 F5 NUV5 256.536 78.624 80.734 1675.05 6.170 48.7494 F6 NUV root of the total number of counts. We have used the IDLroutine fitexy.pro which handles errors in both x and y tocalculate the slope and the uncertainty between the UVITand GALEX fluxes in each filter. These are tabulated inTable 4 and plotted in Figs. 2 and 3. The two broadbandFUV filters (F1: CaF and F2: BaF ) have a coverage simi-lar to the GALEX
FUV band with an effective response ofabout 35% of the
GALEX
FUV response, as expected fromthe smaller (35-cm) UVIT primary mirror compared to the
GALEX primary (50 cm). The smaller UVIT mirror is com-pensated by the loss in responsivity in the
GALEX dichroic,and the response of the broadband NUV filter (F1: Silica)is close to that of the
GALEX
NUV band.We have made no assumptions about the spectral typeof each star. This is unimportant for the broad-band filterswhere the filter response curve for both
GALEX and UVITare similar but will impact the narrow-band filters where thesource might have emission/absorption lines or the filtersmay have long tails leading to leakage from out of bandcounts. This is reflected in the scatter seen particularly inthe NUVN2 where the count rate is only about 7% thatexpected in the
GALEX
NUV band.We have converted the UVIT-
GALEX slopes into anabsolute calibration using the
GALEX conversion factorsof 1 . × − and 2 . × − erg cm − s − ˚A − (cps) − in the FUV and NUV, respectively. The GALEX calibrationassumed the sources to be spectrally flat, regardless of theactual spectral type. This is obviously an approximation,and a correct calibration should include the spectral type of the source (Ravichandran et al. 2013). The slope was usedas a scale factor to calculate the predicted UVIT count rateto estimate the effect of non-linearity. The scale factors aretabulated in Table 4 and include the effects of the smallerbandpass of the narrow-band filters. Note that it is impor-tant to consider the spectral shape of the source when calcu-lating the flux, particularly for the narrow-band filters. Theflux F ( λ ) can be derived from the counts using the followingequation, F ( λ ) = C × CP S , (2)where the conversion factors C for UVIT for each fil-ter are given in Table 4. These conversion factors (inunits of erg cm − ˚A − cnt − ) were derived using theUVIT/ GALEX slopes (Figs. 2 and 3) as follows C UVIT = C GALEX slope . (3) Intensified detectors are subject to non-linearity at highcount rates because the detectors can only register one countper pixel per frame (Fordham et al. 2000). We have com-pared the observed UVIT count rates in both FUV and NUVchannels for all filters (Fig. 4) with the scaled count rates(
GALEX count rate multiplied with slope in Table 4). Wehave used the formulation of Kuin & Rosen (2008) to model
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VIT Performance O b s e r v e d c o un t r a t e Predicted count rate
FUVNUVBest fit9.7% roll-off on cps Figure 4.
Observed counts as a function of predicted counts forFUV (green points) and NUV (blue points). the non-linearity:C obs = 29 × (cid:16) − e − αC inc / (cid:17) , (4)where α = 1 .
24 (determined empirically), C inc is the numberof events incident on the detector, C obs is the number ofevents detected, and there are 29 frames in a second. Non-linearity in the observed counts sets in at 15 cps with about9.7% loss and may be corrected for up to 29 cps, at whichthe measured count rates saturate and the true counts canno longer be recovered. To estimate the possible loss in sensitivity over time, wehave compared the counts of stars whose observations wereperformed over long enough baseline; in three FUV filtersand in two NUV filters. We have used two bright stars inNGC 188 cluster (Star 1: BD+8412, star 2: NGC188 2091),in addition to HZ4, and plotted their count rates in Fig. 5.We find no evidence that the sensitivity has changed withtime.
A ground measurement of the geometric distortion is avail-able for the UVIT detectors alone, carried out before inte-gration with the optical assembly (Girish et al. 2017). Themeasurement was done using a grid of pinholes, the geo-metric configuration (i.e. pinhole spacing etc.) of which wascalibrated using the IUCAA Faint Object Spectrograph &Camera (IFOSC). The geometric distortion of IFOSC itselfis only known via simulations. Girish et al. (2017) found acomplex distortion pattern and reported the improvementof the astrometry in VIS flight images after applying theirdistortion correction. This is true, in principle, as one of thelimiting factors for the achievable resolution is the space-craft motion, which is corrected for by applying a shift in x and y . This shift will be affected by the geometric distortionand hence the resolution may not be uniform over the entiredetector plane.Ideally, geometric distortion would have been correctedin-flight through observations of open clusters such as NGC C P S Decimal date
F1 HZ4F1 star1F2 star1F3 star1F5 star1 C P S Decimal date
F6 star1 F6 star2 F2 star1 F2 star2 F2 HZ4
Figure 5.
UVIT count rate as a function of date.
Top : CPS asa function of date of two stars (HZ4 and star 1) in FUV filters.
Bottom : variation of CPS of HZ4 and star 2 in NUV filters.
Detector X D e t e c t o r Y Figure 6.
Tracks of individual stars in the detector plane due tospacecraft motion over 9 orbits of NGC 188 in the NUV.
188 but spacecraft motion made it impossible to correlatethe positions on the detector plane with the distortion. In-stead, we selected three relatively bright stars in the FUVand nine in the NUV observations of NGC 188 and calcu-lated their centroids at intervals of one second. The individ-ual star trails are plotted in Fig. 6 for all NUV observationsof NGC 188.We used the standard SIP (Simple Imaging Polynomial)
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Table 4.
UVIT conversion factors (in erg cm − ˚A − cnt − ).Filter Slot Slope Slope error R Conversion factor Tandon et al. (2017a) Ratio(UVIT/GALEX)FUV CaF2 1 F1 0.3619 0.0013 0.9845 3.8689e-15 3.127E-15 0.81FUV BaF2 F2 0.3330 0.0018 0.9978 4.2036e-15 3.593E-15 0.85FUV Sapphire F3 0.2574 0.0008 0.9986 5.4399e-15 4.402E-15 0.81FUV Silica F5 0.0980 0.0011 0.9848 1.4273e-14 1.071E-14 0.75NUV Silica F1 1.0586 0.0027 0.9873 1.9459e-16 2.270E-16 1.2NUV B15 F2 0.0353 0.0001 0.9956 5.8360e-15 5.356E-15 0.91NUV B13 F3 0.1995 0.0005 0.9941 1.0327e-15 7.412E-16 0.71NUV B4 F5 0.2959 0.0014 0.9825 6.9611e-16 8.632E-16 1.24NUV N2 F6 0.0736 0.0002 0.9723 2.7988e-15 3.577E-15 1.28 Figure 7.
Geometric distortion over the field of view of the NUVdetector (full frame). formulation (Shupe et al. 2005) u = x + A ( x − + A ( x − y − A ( y − ,v = y + B ( y − + B ( x − y − B ( x − . (5)to correct the ( x, y ) pairs in detector coordinates with thecentre at (0 ,
0) into the corrected u − v plane. The anglesbetween stars will remain constant in the undistorted plane,regardless of spacecraft motion, and we determined the co-efficients of distortion by forcing the distance between starsin the u − v plane to be the actual angular distance. Thereis considerable noise in calculating the distortion becauseof the rapidity of the spacecraft motion and the intrinsicphoton noise of the observations in the short time per pixelbut we have found a good convergence in the derived coef-ficients of distortion (Table 5). The distortion maps derivedfrom Eq. 5 for the NUV and FUV detectors are shown inFigs. 7 and 8, respectively.Although Girish et al. (2017) indicate that applying adistortion correction to the data improves the resolution ofthe instrument, we find that the effect is small with no mea- Figure 8.
Geometric distortion over the field of view of the FUVdetector (full frame).
Table 5.
Distortion coefficients from Eq. 5 for NUV and FUVchannels. Coefficient NUV FUV A -3.7e-05 -4.3e-05 A -4.4e-05 -7.1e-05 A B -2.7e-05 -3.4e-05 B -6.2e-05 -5.9e-05 B surable improvement in the instrument PSF. We recommendco-adding the frames in an observation and performing a dis-tortion correction as part of the astrometric solution wherethe signal-to-noise ratio is better. The flat field correction accounts for pixel to pixel variationsin the sensitivity across the detector but are difficult to de-termine from in-flight observations because photon count-ing statistics dominate the signal. We will explore the flat-fielding below but will demonstrate that, in practice, cor-
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VIT Performance Npixels S t anda r d D e v i a t i on i n R e s pon s i v i t y .05.1.15.2 Figure 9.
Expected variation in stellar flux due to random fluc-tuations in pixel sensitivity.
Standard Deviation from Mean N o r m a li z ed F r a c t i on Figure 10.
Number of σ away from the mean for the observations(histogram) and different levels of non-uniformity. rections for the flat-field are unimportant in the context ofUVIT because any source is averaged over many pixels dueto spacecraft motion.We have run a number (10,000) of simulations in whichwe assumed that the point sources were smeared over N pixels, with the sensitivity in each pixel drawn from a nor-mal distributions with a mean of 1 and σ of 5 – 20%. Theeffective response that any star would see is the mean overthe N pixels over which it is smeared and, over a run of10,000 simulations, will be close to 1. However, the stan-dard deviation will translate into the uncertainty due to thenon-uniform sensitivity for stars in different pixels. This isplotted in as a function of N (the number of pixels) in Fig. 9and suggests that differences of 10% in the sensitivity be-tween pixels would result in an uncertainty of about 2% ifthe star is smeared over 20 pixels, as is the case for mostUVIT observations. We will discuss this in the context ofactual observations below.The most obvious measure of variations in the sensi-tivity of the detector is the observed count rate for a givensource as it moves in the detector plane. We have alreadytracked the positions of 3 stars in the FUV and 9 in the Figure 11.
NUV image of Holmberg-II taken on 30 Sept. 2016with co-added exposure of 1194.6 sec. In black circles are the PSFstars.
NUV observations of NGC 188, and recorded the counts foreach pixel in the context of our derivation of the geometriccoefficients. These counts will vary because of photon noiseand because of the non-uniformity, and we have plotted thedeviations from the mean for each pixel in Fig. 10. We thenran a number (10,000) of Monte Carlo simulations wherethe variation in the count included both photon noise andsensitivity variations of 10%, 20% and 30% per pixel. Atthis stage in our data analysis, we can only say that thevariations in the flat field are less than 10% per pixel, andthat it is not necessary to use a flat field in extracting fluxesbecause of the motion of the spacecraft.
The intrinsic point spread function of the UV detectors isexpected to be 1.8 (cid:48)(cid:48) (Kumar et al. 2012) but is affected bythe spacecraft registration. The primary method of data reg-istration is to use the VIS images in which there are morestars but these have a time resolution of 2.5 seconds duringwhich the spacecraft may move over a significant numberof pixels. We have developed a new method (Murthy et al.2016; Murthy et al. 2017) in which we follow the centroidof a star in the UV images, themselves, in which the timeresolution is determined by the brightness of the star butcan be as good as 0.35 seconds.We have used PV observations of NGC 188 and GTobservations of Holmberg-II galaxy (e.g. Fig. 11) in whichthere are a number of stars of different brightness and atleast one bright star that we can use to correct for space-craft motion. We used the mpfit2dpeak function in IDL to fita 2-D Gaussian profile to each of the stellar profiles and cal-culated the FWHM in both x and y directions. The FWHMis 2.3 pixels (0.97 (cid:48)(cid:48) ) in the best case, but is more typicallyin the range from 3 – 4 pixels (1.2 – 1.6 (cid:48)(cid:48) ). We have foundno evidence for any spatial variation of the PSF over thedetector plane. MNRAS , 1–8 (2018)
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We have performed an independent evaluation of the per-formance of the UVIT FUV and NUV instruments basedon their in-flight performance. We find that the perfor-mance is close to that expected from the ground-based cal-ibration. The photometric sensitivity is about 35% that of
GALEX in the FUV broad band filters and about the sameas
GALEX in the NUV broad band filter. We find thatthe resolution can be as good as 1.2 – 1.6 (cid:48)(cid:48) . Flat-fieldingis unimportant for UVIT largely because the spacecraftmoves enough during an observation that any variations aresmeared out. We have derived a distortion correction butsince the data are noisy, we recommend that the distortioncorrection be done as part of the astrometric correction post-processing.Tandon et al. (2017a) have determined somewhat dif-ferent calibration factors (Table 4) using only HZ4. This hasthe advantage that the spectrum of the star is known but isin the non-linear regime in most bands. Those bands withthe highest count rates were observed with a high frame ratemode for which the timing was uncertain. We have chosena broader selection of stars in the linear range of the de-tectors and tied our calibration to
GALEX calibration withthe assumption that the individual stars will have the samerelative response. This appears to be a good approxima-tion given that we obtain excellent correlations between thecount rates in both instruments (Figs. 2 and 3) and we be-lieve that, because of the brightness of HZ4, our values bet-ter represent the response of the instrument.Our results serve as a validation of both the UVIT pro-cessing software and our alternative set of tools (Murthyet al. 2016). UVIT is beginning to reach its potential andwith the opening of the satellite to guest observers, includ-ing the international community, we may expect a flood ofresults in the near future. We will provide support to anyonewho would like to use our software, or our results.
ACKNOWLEDGEMENTS
This research has made use of the Spanish Virtual Obser-vatory (SVO) Filter Profile Service (http://svo2.cab.inta-csic.es/theory/fps/) supported from the Spanish Ministryof Economy and Competitiveness (MINECO) through grantAyA2014-55216. We also acknowledge the Gnu Data Lan-guage (GDL), the Interactive Data Language ( IDL) Astron-omy Library and its many contributors. This research hasmade use of National Aeronautics and Space Administration(NASA) Astrophysics Data System Bibliographic Services.Many people at Indian Institute of Astrophysics (IIA), In-dian Space Research Organisation (ISRO), Inter-UniversityCentre for Astronomy and Astrophysics (IUCAA), Tata In-stitute of Fundamental Research (TIFR), National ResearchCouncil (NRC,Canada) and University of Calgary have con-tributed to different parts of the spacecraft, instrument andthe operations.Some/all of the data presented in this paper wereobtained from the Mikulski Archive for Space Telescopes(MAST). Space Telescope Science Institute (STScI) is op-erated by the Association of Universities for Research inAstronomy, Inc., under National Aeronautics and Space Administration (NASA) contract NAS5-26555. Support forMAST for non-Hubble Space Telescope (HST) data is pro-vided by the NASA Office of Space Science via grantNNX09AF08G and by other grants and contracts.This research has been supported by the Depart-ment of Science and Technology (DST) under grants no.SR/S2/HEP-050/2012 dated 14-08-2013 to Christ Univer-sity and EMR/2016/00145 to Indian Institute of Astro-physics (IIA).
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