|
arXiv:1001.0013v2 [astro-ph.CO] 8 Jan 2010Astronomy& Astrophysics manuscriptno.akari˙LF˙aa˙v7 c∝circlecopyrtESO 2018 |
|
October30,2018 |
|
EvolutionofInfraredLuminosityfunctionsofGalaxiesint he |
|
AKARINEP-Deepfield |
|
Revealing thecosmic star formationhistory hidden by dust⋆,⋆⋆ |
|
Tomotsugu Goto1,2,⋆⋆⋆,T.Takagi3,H.Matsuhara3,T.T.Takeuchi4,C.Pearson5,6,7, T.Wada3,T.Nakagawa3,O.Ilbert8, |
|
E.LeFloc’h9,S.Oyabu3, Y.Ohyama10,M.Malkan11, H.M.Lee12, M.G.Lee12,H.Inami3,13,14, N.Hwang2, H.Hanami15, |
|
M.Im12, K.Imai16,T.Ishigaki17,S.Serjeant7,and H.Shim12 |
|
1Institute for Astronomy, University of Hawaii,2680 Woodla wnDrive, Honolulu, HI,96822, USA |
|
e-mail:[email protected] |
|
2National Astronomical Observatory, 2-21-1 Osawa,Mitaka, Tokyo, 181-8588,Japan |
|
3Institute of Space and Astronautical Science, JapanAerosp ace Exploration Agency, Sagamihara,Kanagawa 229-8510 |
|
4Institute for Advanced Research, Nagoya University, Furo- cho, Chikusa-ku, Nagoya 464-8601 |
|
5Rutherford Appleton Laboratory, Chilton, Didcot,Oxfords hire OX110QX, UK |
|
6Department of Physics,Universityof Lethbridge, 4401 Univ ersity Drive,Lethbridge, AlbertaT1J 1B1, Canada |
|
7Astrophysics Group, Department of Physics, The OpenUniver sity, MiltonKeynes, MK76AA, UK |
|
8Laboratoire d’Astrophysique de Marseille, BP8,Traverse d u Siphon, 13376 Marseille Cedex 12, France |
|
9CEA-Saclay,Service d’Astrophysique, France |
|
10Academia Sinica,Institute of Astronomyand Astrophysics, Taiwan |
|
11Department of Physicsand Astronomy, UCLA,Los Angeles, CA, 90095-1547 USA |
|
12Department of Physics& Astronomy, FPRD,Seoul National Uni versity, Shillim-Dong,Kwanak-Gu, Seoul 151-742, Korea |
|
13Spitzer Science Center,California Institute ofTechnolog y, Pasadena, CA91125 |
|
14Department of Astronomical Science,The Graduate Universi tyfor Advanced Studies |
|
15Physics Section,Facultyof Humanities and SocialSciences , Iwate University, Morioka, 020-8550 |
|
16TOMER&D Inc. Kawasaki, Kanagawa 2130012, Japan |
|
17Asahikawa National College of Technology, 2-1-6 2-joShunk ohdai, Asahikawa-shi, Hokkaido 071-8142 |
|
Received September 15, 2009; accepted December 16, 2009 |
|
ABSTRACT |
|
Aims.Dust-obscured star-formation becomes much more important with increasing intensity, and increasing redshift. We aim to |
|
reveal cosmic star-formationhistoryobscured bydust usin g deep infraredobservation withthe AKARI. |
|
Methods. We construct restframe 8 µm, 12µm, and total infrared (TIR) luminosity functions (LFs) at 0.15< z <2.2using 4128 |
|
infraredsources intheAKARINEP-Deepfield.Acontinuous fil tercoverage inthemid-IRwavelength(2.4,3.2,4.1,7,9,11 , 15,18, |
|
and 24µm) by the AKARI satellite allows us to estimate restframe 8 µm and 12 µm luminosities without using a large extrapolation |
|
based ona SEDfit,which was the largestuncertainty inprevio us work. |
|
Results. Wehavefoundthatall8 µm(0.38< z <2.2),12µm(0.15< z <1.16),andTIRLFs( 0.2< z <1.6),showacontinuous |
|
andstrongevolutiontowardhigher redshift.Intermsofcos micinfraredluminositydensity( ΩIR),whichwasobtainedbyintegrating |
|
analytic fits to the LFs,we found a good agreement withprevio us work at z <1.2. We found the ΩIRevolves as ∝(1+z)4.4±1.0. |
|
Whenweseparatecontributionsto ΩIRbyLIRGsandULIRGs,wefoundmoreIRluminoussourcesareinc reasinglymoreimportant |
|
at higher redshift. Wefound that the ULIRG(LIRG)contribut ionincreases bya factor of 10(1.8) from z=0.35 toz=1.4. |
|
Keywords. galaxies: evolution, galaxies:interactions, galaxies:s tarburst, galaxies:peculiar, galaxies:formation |
|
1. Introduction |
|
Studies of the extragalactic background suggest at least ha lf |
|
the luminous energy generated by stars has been reprocessed |
|
into the infrared(IR) by dust (Lagacheetal., 1999; Pugetet al., |
|
1996; Franceschini,Rodighiero,&Vaccari, 2008), suggest ing |
|
that dust-obscured star formation was much more important a t |
|
higherredshiftsthantoday. |
|
⋆This research is based on the observations with AKARI, a JAXA |
|
project withthe participationof ESA. |
|
⋆⋆Based on data collected at Subaru Telescope, which is operat ed by |
|
the National Astronomical Observatory ofJapan. |
|
⋆⋆⋆JSPSSPDfellowBell etal. (2005) estimate that IR luminosity density is 7 |
|
times higher than the UV luminosity density at z ∼0.7 than lo- |
|
cally. Takeuchi,Buat, &Burgarella (2005) reported that UV -to- |
|
IRluminositydensityratio, ρL(UV)/ρL(dust),evolvesfrom3.75 |
|
(z=0) to 15.1 by z=1.0 with a careful treatment of the sample |
|
selection effect, and that 70% of star formation activity is ob- |
|
scured by dust at 0.5 < z <1.2. Both works highlight the im- |
|
portance of probing cosmic star formation activity at high r ed- |
|
shift in the infrared bands. Several works found that most ex - |
|
tremestar-forming(SF) galaxies,whichareincreasinglyi mpor- |
|
tant at higher redshifts, are also more heavily obscured by d ust |
|
(Hopkinsetal., 2001; Sullivanet al., 2001; Buatet al.,200 7).2 Gotoet al.:InfraredLuminosityfunctions withthe AKARI |
|
Despite the value of infrared observations, studies of |
|
infrared galaxies by the IRAS and the ISO were re- |
|
stricted to bright sources due to the limited sensitiv- |
|
ities (Saundersetal., 1990; Rowan-Robinsonet al., 1997; |
|
Floreset al., 1999; Serjeantet al., 2004; Takeuchiet al., 2 006; |
|
Takeuchi,Yoshikawa,&Ishii, 2003), until the recent launc h of |
|
theSpitzer andtheAKARI satellites. Theirenormousimprov ed |
|
sensitivitieshaverevolutionizedthefield.Forexample: |
|
Le Floc’het al. (2005) analyzed the evolution of the total |
|
and 15µm IR luminosity functions (LFs) at 0< z <1based |
|
on the the Spitzer MIPS 24 µm data (>83µJy andR <24) in |
|
the CDF-S, and found a positive evolution in both luminosity |
|
and density, suggesting increasing importance of the LIRG a nd |
|
ULIRGpopulationsathigherredshifts. |
|
P´ erez-Gonz´ alezetal. (2005) used MIPS 24 µm observations |
|
oftheCDF-SandHDF-N( >83µJy)tofindthatthat L∗steadily |
|
increasesbyanorderofmagnitudeto z∼2,suggestingthatthe |
|
luminosity evolution is stronger than the density evolutio n. The |
|
ΩTIRscalesas(1+z)4.0±0.2fromz=0to0.8. |
|
Babbedgeet al. (2006) constructed LFs at 3.6, 4.5, 5.8, 8 |
|
and 24µm over0< z < 2using the data from the Spitzer |
|
Wide-areaInfraredExtragalactic(SWIRE)Surveyin a 6.5de g2 |
|
(S24µm>230µJy). They found a clear luminosity evolu- |
|
tion in all the bands, but the evolution is more pronounced at |
|
longer wavelength; extrapolatingfrom 24 µm, they inferred that |
|
ΩTIR∝(1+z)4.5. They constructed separate LFs for three dif- |
|
ferentgalaxySED (spectral energydistribution)typesand Type |
|
1 AGN, finding that starburst and late-type galaxies showed |
|
strongerevolution.Comparisonof3.6and4.5 µmLFswithsemi- |
|
analytic and spectrophotometricmodelssuggested that the IMF |
|
is skewed towards higher mass star formation in more intense |
|
starbursts. |
|
Caputi etal.(2007)estimatedrestframe8 µmLFsofgalaxies |
|
over 0.08deg2in the GOODS fields based on Spitzer 24 µm (> |
|
80µJy) atz=1 and 2. They found a continuousand strong posi- |
|
tiveluminosityevolutionfrom z=0toz=1,andto z=2.However, |
|
theyalsofoundthatthenumberdensityofstar-forminggala xies |
|
withνL8µm |
|
ν>1010.5L⊙(AGNs are excluded.) increases by a |
|
factor of 20 from z=0 to 1, but decreases by half from z=1 to 2 |
|
mainlyduetothe decreaseofLIRGs. |
|
Magnelliet al. (2009) investigated restframe 15 µm, 35µm |
|
and total infrared (TIR) LFs using deep 70 µm observations |
|
(∼300µJy) in the Spitzer GOODS and FIDEL (Far Infrared |
|
Deep Extragalactic Legacy Survey) fields (0.22 deg2in total) |
|
atz <1.3. They stacked 70 µm flux at the positions of 24 µm |
|
sources when sources are not detected in 70 µm. They found no |
|
changeintheshapeoftheLFs,butfoundapureluminosityevo - |
|
lutionproportionalto(1+z)3.6±0.5,andthatLIRGsandULIRGs |
|
have increased by a factor of 40 and 100 in number density by |
|
z∼1. |
|
Also, see Daiet al. (2009) for 3.6-8.0 µm LFs based on the |
|
IRACphotometryintheNOAODeepWide-FieldSurveyBootes |
|
field. |
|
However, most of the Spitzer work relied on a large |
|
extrapolation from 24 µm flux to estimate the 8, 12 µm or |
|
TIR luminosity. Consequently, Spitzer results heavily de- |
|
pended on the assumed IR SED library (Dale&Helou, 2002; |
|
Lagache,Dole,&Puget, 2003; Chary& Elbaz, 2001). Indeed |
|
many authors pointed out that the largest uncertainty in the se |
|
previous IR LFs came from SED models, especially when one |
|
computesTIRluminositysolelyfromobserved24 µmflux(e.g., |
|
see Fig.5ofCaputiet al.,2007). |
|
AKARI, the first Japanese IR dedicated satellite, has con- |
|
tinuous filter coverage across the mid-IR wavelengths, thus , al-Fig.1. Photometric redshift estimates with LePhare |
|
(Ilbertet al., 2006; Arnoutset al., 2007; Ilbertet al., 200 9) |
|
for spectroscopically observed galaxies with Keck/DEIMOS |
|
(Takagi et al. in prep.). Red squares show objects where AGN |
|
templates were better fit. Errors of the photoz is∆z |
|
1+z=0.036 for |
|
z≤0.8, but becomes worse at z >0.8to be∆z |
|
1+z=0.10 due |
|
mainlyto therelativelyshallownear-IRdata. |
|
lows us to estimate MIR (mid-infrared)-luminositywithout us- |
|
ing a large k-correction based on the SED models, eliminating |
|
thelargestuncertaintyinpreviouswork.Bytakingadvanta geof |
|
this, we present the restframe 8, 12 µm and TIR LFs using the |
|
AKARI NEP-Deepdatainthiswork. |
|
Restframe 8 µm luminosity in particular is of primary rele- |
|
vance for star-forming galaxies, as it includes polycyclic aro- |
|
matic hydrocarbon (PAH) emission. PAH molecules charac- |
|
terize star-forming regions (Desert,Boulanger,&Puget, 1 990), |
|
and the associated emission lines between 3.3 and 17 µm dom- |
|
inate the SED of star-forming galaxies with a main bump lo- |
|
cated around 7.7 µm. Restframe 8 µm luminosities have been |
|
confirmed to be good indicators of knots of star formation |
|
(Calzetti etal., 2005) and of the overall star formation act ivity |
|
of star forming galaxies (Wuet al., 2005). At z=0.375, 0.875, |
|
1.25 and 2, the restframe 8 µm is covered by the AKARI S11, |
|
L15,L18WandL24filters. We present the restframe 8 µm LFs |
|
at theseredshiftsatSection3.1. |
|
Restframe 12 µm luminosity functions have also been |
|
studied extensively (Rush,Malkan,& Spinoglio, 1993; |
|
P´ erez-Gonz´ alezet al., 2005). At z=0.25, 0.5 and 1, the |
|
restframe12 µmiscoveredbytheAKARI L15,L18WandL24 |
|
filters. We present the restframe 12 µm LFs at these redshifts in |
|
Section3.3. |
|
We also estimate TIR LFs through the SED fit using all |
|
the mid-IR bands of the AKARI. The results are presented in |
|
Section3.5. |
|
Unless otherwise stated, we adopt a cosmology with |
|
(h,Ωm,ΩΛ) = (0.7,0.3,0.7)(Komatsuet al., 2008). |
|
2. Data & Analysis |
|
2.1. Multi-wavelength data inthe AKARI NEP Deepfield |
|
AKARI, the Japanese infraredsatellite (Murakamiet al., 20 07), |
|
performed deep imaging in the North Ecliptic Region (NEP) |
|
from 2-24 µm, with 14 pointings in each field over 0.4 |
|
deg2(Matsuharaet al., 2006, 2007; Wada et al., 2008). DueGotoet al.:InfraredLuminosityfunctions withthe AKARI 3 |
|
Fig.2.Photometricredshiftdistribution. |
|
Fig.3.8µmluminositydistributionsofsamplesusedtocompute |
|
restframe 8 µm LFs. From low redshift, 533, 466, 236 and 59 |
|
galaxiesarein eachredshiftbin. |
|
to the solar synchronous orbit of the AKARI, the NEP |
|
is the only AKARI field with very deep imaging at these |
|
wavelengths. The 5 σsensitivity in the AKARI IR filters |
|
(N2,N3,N4,S7,S9W,S11,L15,L18WandL24) are 14.2, |
|
11.0, 8.0, 48, 58, 71, 117, 121 and 275 µJy (Wada etal., 2008). |
|
These filters provide us with a unique continuous wavelength |
|
coverage at 2-24 µm, where there is a gap between the Spitzer |
|
IRAC and MIPS, and the ISO LW2andLW3. Please consult |
|
Wada etal. (2007, 2008); Pearsonet al. (2009a,b) for data ve ri- |
|
ficationandcompletenessestimateatthesefluxes.ThePSFsi zes |
|
are 4.4, 5.1, and 5.4” in 2−4,7−11,15−24µm bands. The |
|
depths of near-IR bands are limited by source confusion, but |
|
thoseofmid-IRbandsarebyskynoise.In analyzingthese observations,we first combinedthe three |
|
images of the MIR channels, i.e. MIR-S( S7,S9W, andS11) |
|
and MIR-L( L15,L18WandL24), in order to obtain two high- |
|
quality images. In the resulting MIR-S and MIR-L images, the |
|
residual sky has been reduced significantly, which helps to o b- |
|
tain more reliable source catalogues. For both the MIR-S and |
|
MIR-Lchannels,we use SExtractorforthecombinedimagesto |
|
determineinitialsourcepositions. |
|
We follow Takagietal. (2007) procedures for photometry |
|
and band-merging of IRC sources. But this time, to maximize |
|
the number of MIR sources, we made two IRC band-merged |
|
catalogues based on the combined MIR-S and MIR-L images, |
|
andthenconcatenatedthese catalogues,eliminatingdupli cates. |
|
Intheband-mergingprocess,thesourcecentroidineachIRC |
|
image has beendetermined,starting fromthe sourcepositio n in |
|
the combined images as the initial guess. If the centroid det er- |
|
mined in this way is shifted from the original position by >3′′, |
|
we reject such a source as the counterpart. We note that this |
|
band-mergingmethodisusedonlyforIRCbands. |
|
We comparedraw numbercountswith previouswork based |
|
on the same data but with different source extraction method s |
|
(Wadaet al., 2008; Pearsonet al., 2009a,b) and found a good |
|
agreement. |
|
A subregion of the NEP-Deep field was observed in the |
|
BVRi′z′-bands with the Subaru telescope (Imaiet al., 2007; |
|
Wada etal., 2008), reaching limiting magnitudes of zAB=26 |
|
in one field of view of the Suprime-Cam.We restrict our analy- |
|
sis to the data in this Suprime-Cam field (0.25 deg2), where we |
|
have enough UV-opical-NIR coverage to estimate good photo- |
|
metricredshifts.The u′-bandphotometryinthisareaisprovided |
|
by the CFHT (Serjeant et al. in prep.). The same field was also |
|
observed with the KPNO2m/FLAMINGOs in JandKsto the |
|
depth ofKsVega<20(Imaiet al., 2007). GALEX coveredthe |
|
entirefieldtodepthsof FUV <25andNUV < 25(Malkanet |
|
al.in prep.). |
|
In the Suprime-Cam field of the AKARI NEP-Deep field, |
|
there are a total of 4128 infrared sources down to ∼100µJy in |
|
theL18Wfilter. All magnitudesare given in AB system in this |
|
paper. |
|
For the optical identification of MIR sources, we adopt the |
|
likelihood ratio (LR) method (Sutherland&Saunders, 1992) . |
|
For the probability distribution functions of magnitude an d an- |
|
gular separation based on correct optical counterparts (an d for |
|
this purpose only), we use a subset of IRC sources, which are |
|
detected in all IRC bands. For this subset of 1100 all-band– |
|
detected sources, the optical counterparts are all visuall y in- |
|
spected and ambiguous cases are excluded. There are multipl e |
|
opticalcounterpartsfor35%ofMIRsourceswithin <3′′. Ifwe |
|
adoptedthenearestneighborapproachfortheopticalident ifica- |
|
tion,theopticalcounterpartsdiffersfromthat oftheLRme thod |
|
for20%ofthesourceswith multipleopticalcounterparts.T hus, |
|
in total we estimate that less than 15% of MIR sources suffer |
|
fromseriousproblemsofopticalidentification. |
|
2.2. Photometric redshift estimation |
|
For these infrared sources, we have computed photomet- |
|
ric redshift using a publicly available code, LePhare1 |
|
(Ilbertet al., 2006; Arnoutsetal., 2007; Ilbertet al., 200 9). |
|
The input magnitudes are FUV,NUV (GALEX), u(CFHT), |
|
B,V,R,i′,z′(Subaru), J,andK(KPNO2m).Wesummarizethe |
|
filtersusedinTable1. |
|
1http://www.cfht.hawaii.edu/∼arnouts/lephare.html4 Gotoet al.:InfraredLuminosityfunctions withthe AKARI |
|
Table 1.Summaryoffiltersused. |
|
Estimate Redshift Filter |
|
Photoz0.15<z<2.2FUV,NUV ,u,B,V,R,i′,z,J, andK |
|
8µm LF 0.38 <z<0.58 S11(11 µm) |
|
8µm LF 0.65 <z<0.90 L15(15 µm) |
|
8µm LF 1.1 <z<1.4 L18W (18 µm) |
|
8µm LF 1.8 <z<2.2 L24(24 µm) |
|
12µm LF 0.15 <z<0.35 L15(15 µm) |
|
12µm LF 0.38 <z<0.62 L18W (18 µm) |
|
12µm LF 0.84 <z<1.16 L24(24 µm) |
|
TIRLF 0.2 <z<0.5S7,S9W,S11,L15,L18WandL24 |
|
TIRLF 0.5 <z<0.8S7,S9W,S11,L15,L18WandL24 |
|
TIRLF 0.8 <z<1.2S7,S9W,S11,L15,L18WandL24 |
|
TIRLF 1.2 <z<1.6S7,S9W,S11,L15,L18WandL24 |
|
Among various templates and fitting parameters we tried, |
|
we found the best results were obtained with the following: w e |
|
used modified CWW (Coleman,Wu,& Weedman, 1980) and |
|
QSO templates.TheseCWW templatesareinterpolatedandad- |
|
justed to better match VVDS spectra (Arnoutsetal., 2007). W e |
|
included strong emission lines in computing colors. We used |
|
the Calzetti extinction law. More details in training LePhare |
|
isgiveninIlbertet al.(2006). |
|
The resulting photometric redshift estimates agree reason - |
|
ably well with 293 galaxies ( R <24) with spectroscopic red- |
|
shifts taken with Keck/DEIMOS in the NEP field (Takagi et al. |
|
inprep.).Themeasurederrorsonthephoto- zare∆z |
|
1+z=0.036for |
|
z≤0.8and∆z |
|
1+z=0.10 for z >0.8. The∆z |
|
1+zbecomes signifi- |
|
cantly larger at z >0.8, where we suffer from relative shallow- |
|
ness of our near-IR data. The rate of catastrophic failures i s 4% |
|
(∆z |
|
1+z>0.2)amongthespectroscopicsample. |
|
In Fig.1, we compare spectroscopic redshifts from |
|
Keck/DEIMOS (Takagi et al.) and our photometric red- |
|
shift estimation. Those SEDs which are better fit with a QSO |
|
template are shown as red triangles. We remove those red |
|
triangle objects ( ∼2% of the sample) from the LFs presented |
|
below. We caution that this can only remove extreme type-1 |
|
AGNs, and thus, fainter, type-2 AGN that could be removedby |
|
X-raysoropticalspectroscopystill remainin thesample. |
|
Fig.2showsthedistributionofphotometricredshift.Thed is- |
|
tributionhasseveralpeaks,whichcorrespondstogalaxycl usters |
|
in the field (Gotoetal., 2008). We have 12% of sources that do |
|
nothaveagoodSEDfit toobtainareliablephotometricredshi ft |
|
estimation.Weapplythisphoto- zcompletenesscorrectiontothe |
|
LFs we obtain.Readers are referredto Negrelloet atal. (200 9), |
|
who estimated photometricredshifts using only the AKARI fil - |
|
terstoobtain10%accuracy. |
|
2.3. The1/ Vmaxmethod |
|
WecomputeLFsusingthe1/ Vmaxmethod(Schmidt,1968).The |
|
advantage of the 1/ Vmaxmethod is that it allows us to compute |
|
a LF directly from data, with no parameter dependence or an |
|
assumed model. A drawback is that it assumes a homogeneous |
|
galaxy distribution, and is thus vulnerable to local over-/ under- |
|
densities(Takeuchi,Yoshikawa,&Ishii,2000). |
|
A comoving volume associated with any source of a given |
|
luminosity is defined as Vmax=Vzmax−Vzmin, wherezmin |
|
is the lower limit of the redshift bin and zmaxis the maximum |
|
redshiftat whichthe objectcouldbe seen giventhe fluxlimit of |
|
the survey, with a maximum value corresponding to the upperredshiftoftheredshiftbin.Moreprecisely, |
|
zmax= min(z maxof the bin ,zmaxfromthe flux limit) (1) |
|
We usedtheSED templates(Lagache,Dole,&Puget, 2003) for |
|
k-corrections to obtain the maximum observable redshift fro m |
|
thefluxlimit. |
|
Foreachluminositybinthen,theLFisderivedas |
|
φ=1 |
|
∆L/summationdisplay |
|
i1 |
|
Vmax,iwi, (2) |
|
whereVmaxis a comoving volume over which the ith galaxy |
|
couldbeobserved, ∆Listhesizeoftheluminositybin(0.2dex), |
|
andwiis the completeness correction factor of the ith galaxy. |
|
WeusecompletenesscorrectionmeasuredbyWadaet al.(2008 ) |
|
for11and24 µmandPearsonet al.(2009a,b)for15and18 µm. |
|
Thiscorrectionis25%atmaximum,sincewe onlyusethesam- |
|
plewherethecompletenessisgreaterthan80%. |
|
2.4. Monte Carlo simulation |
|
Uncertainties of the LF values stem from various factors suc h |
|
as fluctuations in the numberof sources in each luminosity bi n, |
|
the photometric redshift uncertainties, the k-correction uncer- |
|
tainties, and the flux errors. To compute these errors we per- |
|
formedMonteCarlosimulationsbycreating1000simulatedc at- |
|
alogs,whereeach catalogcontainsthesame numberof source s, |
|
but we assign each source a new redshift following a Gaussian |
|
distribution centered at the photometric redshift with the mea- |
|
sured dispersion of ∆z/(1 +z) =0.036 for z≤0.8and |
|
∆z/(1+z) =0.10forz >0.8(Fig.1). The flux of each source |
|
is also allowed to vary accordingto the measuredflux error fo l- |
|
lowingaGaussiandistribution.For8 µmand12µmLFs,wecan |
|
ignore the errors due to the k-correction thanks to the AKARI |
|
MIR filter coverage. For TIR LFs, we have added 0.05 dex of |
|
error for uncertaintyin the SED fitting following the discus sion |
|
in Magnelliet al. (2009). We did not consider the uncertaint y |
|
on the cosmic variance here since the AKARI NEP field cov- |
|
ers a large volume and has comparable number counts to other |
|
generalfields(Imaiet al.,2007,2008).Eachredshiftbinwe use |
|
covers∼106Mpc3of volume. See Matsuharaetal. (2006) for |
|
morediscussion on the cosmic variancein the NEP field. These |
|
estimated errors are added to the Poisson errors in each LF bi n |
|
inquadrature. |
|
3. Results |
|
3.1. 8µm LF |
|
Monochromatic 8 µm luminosity ( L8µm) is known to cor- |
|
relate well with the TIR luminosity (Babbedgeet al., 2006; |
|
Huanget al.,2007),especiallyforstar-forminggalaxiesb ecause |
|
the rest-frame 8 µm flux are dominated by prominent PAH fea- |
|
turessuchasat 6.2,7.7and8.6 µm. |
|
Since the AKARI has continuous coverage in the mid-IR |
|
wavelengthrange,therestframe8 µmluminositycanbeobtained |
|
without a large uncertainty in k-correction at a corresponding |
|
redshift and filter. For example, at z=0.375, restframe 8 µm is |
|
redshiftedinto S11filter. Similarly, L15,L18WandL24cover |
|
restframe 8 µm atz=0.875, 1.25 and 2. This continuous filter |
|
coverageisanadvantagetoAKARIdata.OftenSEDmodelsare |
|
used to extrapolate from Spitzer 24 µm flux in previous work,Gotoet al.:InfraredLuminosityfunctions withthe AKARI 5 |
|
producingasourceofthe largestuncertainty.We summarise fil- |
|
tersusedinTable1. |
|
To obtain restframe 8 µm LF, we applied a flux limit |
|
of F(S11) <70.9, F(L15) <117, F(L18W) <121.4, and |
|
F(L24)<275.8µJy atz=0.38-0.58, z=0.65-0.90, z=1.1-1.4 |
|
andz=1.8-2.2,respectively.Thesearethe5 σlimitsmeasuredin |
|
Wada etal. (2008). We exclude those galaxies whose SEDs are |
|
betterfit withQSO templates( §2). |
|
We use the completeness curve presented in Wada et al. |
|
(2008) and Pearsonet al. (2009a,b) to correct for the incom- |
|
pleteness of the detection. However, this correction is 25% at |
|
maximumsincethesampleis80%completeatthe5 σlimit.Our |
|
mainconclusionsarenotaffectedbythisincompletenessco rrec- |
|
tion. To compensatefor the increasing uncertaintyin incre asing |
|
z, we use redshift binsize of 0.38 < z <0.58, 0.65 < z <0.90, |
|
1.1< z <1.4,and 1.8 < z <2.2.We show the L8µmdistribution |
|
in each redshift rangein Fig.3. Within each redshift bin, we use |
|
1/Vmaxmethodto compensateforthefluxlimit ineachfilter. |
|
We show the computed restframe 8 µm LF in Fig.4. Arrows |
|
show the 8 µm luminosity correspondingto the flux limit at the |
|
central redshift in each redshift bin. Errorbarson each poi nt are |
|
basedontheMonteCarlosimulation( §2.3). |
|
For a comparison, as the green dot-dashed line, we also |
|
show the 8 µm LF of star-forming galaxies at 0< z < 0.3 |
|
by Huanget al. (2007), using the 1/ Vmaxmethod applied to the |
|
IRAC 8µm GTO data. Compared to the local LF, our 8 µm LFs |
|
showstrongevolutionin luminosity.Intherangeof 0.48< z < |
|
2,L∗ |
|
8µmevolvesas ∝(1+z)1.6±0.2. Detailedcomparisonwith |
|
theliteraturewill bepresentedin §4. |
|
3.2. Bolometric IR luminosity density basedonthe 8 µm |
|
LF |
|
Constraining the star formation history of galaxies as a fun c- |
|
tion of redshift is a key to understanding galaxy formation i n |
|
the Universe. One of the primary purposes in computing IR |
|
LFs is to estimate the IR luminosity density, which in turn is a |
|
goodestimatorof thedust hiddencosmic star formationdens ity |
|
(Kennicutt, 1998). Since dust obscurationis more importan t for |
|
more actively star forming galaxies at higher redshift, and such |
|
star formationcannotbeobservedinUV light,it is importan tto |
|
obtainIR-basedestimateinordertofullyunderstandtheco smic |
|
star formationhistoryoftheUniverse. |
|
Weestimatethetotalinfraredluminositydensitybyintegr at- |
|
ingtheLFweightedbytheluminosity.First, weneedtoconve rt |
|
L8µmto the bolometric infrared luminosity. The bolometric IR |
|
luminosity of a galaxy is produced by the thermal emission of |
|
its interstellarmatter. Instar-forminggalaxies,the UV r adiation |
|
producedbyyoungstarsheatstheinterstellardust,andthe repro- |
|
cessed lightisemittedin theIR. Forthisreason,in star-fo rming |
|
galaxies,thebolometricIRluminosityisagoodestimatoro fthe |
|
current SFR (star formation rate) of the galaxy. Bavouzetet al. |
|
(2008) showed a strong correlation between L8µmand total in- |
|
frared luminosity ( LTIR) for 372 local star-forming galaxies. |
|
TheconversiongivenbyBavouzetet al.(2008)is: |
|
LTIR= 377.9×(νLν)0.83 |
|
rest8µm(±37%) (3) |
|
Caputi etal. (2007) further constrained the sample to lumi- |
|
nous, high S/N galaxies ( νL8µm |
|
ν>1010L⊙and S/N>3in all |
|
MIPS bands) in order to better match their sample, and derive d |
|
thefollowingequation.Fig.4.Restframe 8 µm LFs based on the AKARI NEP-Deep |
|
field. The blue diamons, purple triangles, red squares, and o r- |
|
ange crosses show the 8 µm LFs at 0.38< z <0.58,0.65< |
|
z <0.90,1.1< z <1.4, and1.8< z <2.2, respectively. |
|
AKARI’s MIR filters can observe restframe 8 µm at these red- |
|
shifts in a corresponding filter. Errorbars are from the Mont e |
|
Caro simulations ( §2.4). The dotted lines show analytical fits |
|
with a double-power law. Vertical arrows show the 8 µm lumi- |
|
nosity corresponding to the flux limit at the central redshif t in |
|
each redshift bin. Overplotted are Babbedgeet al. (2006) in the |
|
pink dash-dotted lines, Caputiet al. (2007) in the cyan dash - |
|
dotted lines, and Huanget al. (2007) in the green dash-dotte d |
|
lines.AGNsareexcludedfromthe sample( §2.2). |
|
LTIR= 1.91×(νLν)1.06 |
|
rest8µm(±55%) (4) |
|
Since ours is also a sample of bright galaxies, we use this |
|
equation to convert L8µmtoLTIR. Because the conversion is |
|
based on local star-forming galaxies, it is a concern if it ho lds |
|
at higher redshift or not. Bavouzetet al. (2008) checked thi s by |
|
stacking 24 µm sources at 1.3< z <2.3in the GOODS fields |
|
to find the stacked sources are consistent with the local rela - |
|
tion. They concluded that equation (3) is valid to link L8µm |
|
andLTIRat1.3< z <2.3. Takagiet al. (2010) also show |
|
that local L7.7µmvsLTIRrelation holds true for IR galaxies |
|
at z∼1 (see their Fig.10). Popeetal. (2008) showed that z∼2 |
|
sub-millimeter galaxies lie on the relation between LTIRand |
|
LPAH,7.7that has been established for local starburst galaxies. |
|
S70/S24ratios of 70 µm sources in Papovichet al. (2007) are |
|
also consistent with local SED templates. These results sug gest |
|
it isreasonabletouse equation(4) foroursample. |
|
The conversion, however, has been the largest source of er- |
|
rorinestimating LTIRfromL8µm.Bavouzetet al.(2008)them- |
|
selvesquote37%ofuncertainty,andthatCaputietal.(2007 )re- |
|
port 55% of dispersion around the relation. It should be kept in |
|
mind that the restframe 8µm is sensitive to the star-formation |
|
activity, but at the same time, it is where the SED models have |
|
strongest discrepancies due to the complicated PAH emissio n |
|
lines. A detailed comparison of different conversions is pr e- |
|
sented in Fig.12 of Caputiet al. (2007), who reported factor of |
|
∼5ofdifferencesamongvariousmodels.6 Gotoet al.:InfraredLuminosityfunctions withthe AKARI |
|
Then the 8 µm LF is weighted by the LTIRand integrated |
|
to obtain TIR density. For integration, we first fit an ana- |
|
lytical function to the LFs. In the literature, IR LFs were |
|
fit better by a double-power law (Babbedgeet al., 2006) or |
|
a double-exponential (Saunderset al., 1990; Pozziet al., 2 004; |
|
Takeuchiet al., 2006; Le Floc’het al., 2005) than a Schechte r |
|
function, which declines too suddenlly at the high luminosi ty, |
|
underestimating the number of bright galaxies. In this work , |
|
we fit the 8 µm LFs using a double-powerlaw (Babbedgeet al., |
|
2006)asshownbelow. |
|
Φ(L)dL/L∗= Φ∗/parenleftbiggL |
|
L∗/parenrightbigg1−α |
|
dL/L∗,(L < L∗) (5) |
|
Φ(L)dL/L∗= Φ∗/parenleftbiggL |
|
L∗/parenrightbigg1−β |
|
dL/L∗,(L > L∗) (6) |
|
First, the double-powerlaw is fitted to the lowest redshift L F at |
|
0.38< z <0.58 to determine the normalization( Φ∗) and slopes |
|
(α,β).Forhigherredshiftswedonothaveenoughstatisticstosi - |
|
multaneouslyfit 4parameters( Φ∗,L∗,α,andβ).Therefore,we |
|
fixedtheslopesandnormalizationat the localvaluesandvar ied |
|
onlyL∗atforthehigher-redshiftLFs.Fixingthefaint-endslope |
|
isacommonprocedurewiththedepthofcurrentIRsatellites ur- |
|
veys (Babbedgeet al., 2006; Caputi etal., 2007). The strong er |
|
evolution in luminosity than in density found by previous wo rk |
|
(P´ erez-Gonz´ alezet al., 2005; LeFloc’het al., 2005) also justi- |
|
fies this parametrization. Best fit parameters are presented in |
|
Table2.Oncethebest-fitparametersarefound,weintegrate the |
|
doublepowerlawoutsidetheluminosityrangeinwhichwehav e |
|
data to obtain estimate of the total infrared luminosity den sity, |
|
ΩTIR. |
|
The resulting total luminosity density ( ΩIR) is shown in |
|
Fig.5 as a function of redshift. Errors are estimated by vary ing |
|
thefit within1 σofuncertaintyin LFs, thenerrorsin conversion |
|
fromL8µmtoLTIRare added. The latter is by far the larger |
|
source of uncertainty. Simply switching from equation (3) ( or- |
|
ange dashed line) to (4) (red solid line) produces a ∼50% dif- |
|
ference. Cyan dashed lines show results from LeFloc’het al. |
|
(2005) for a comparision. The lowest redshift point was cor- |
|
rectedfollowingMagnellietal. (2009). |
|
We also show the evolution of monochromatic 8 µm lumi- |
|
nosity (L8µm), which is obtained by integrating the fits, but |
|
without converting to LTIRin Fig.6. The Ω8µmevolves as |
|
∝(1+z)1.9±0.7. |
|
The SFR and LTIRare related by the following equation |
|
for a Salpeter IMF, φ(m)∝m−2.35between0.1−100M⊙ |
|
(Kennicutt,1998). |
|
SFR(M⊙yr−1) = 1.72×10−10LTIR(L⊙) (7) |
|
The right ticks of Fig.5 shows the star formation density |
|
scale,convertedfrom ΩIRusingtheaboveequation. |
|
In Fig.5, ΩIRmonotonically increases toward higher z. |
|
Comparedwith z=0,ΩIRis∼10timeslargerat z=1.Theevolu- |
|
tionbetween z=0.5andz=1.2isalittleflatter,butthisisperhaps |
|
duetoamoreirregularshapeofLFsat0.65 < z <0.90,andthus, |
|
wedonotconsideritsignificant.Theresultsobtainedherea gree |
|
with previous work (e.g., Le Floc’het al., 2005) within the e r- |
|
rors. We compare the results with previous work in more detai l |
|
in§4.Fig.5.Evolution of TIR luminosity density computed by inte- |
|
grating the 8 µm LFs in Fig.4.The red solid lines use the con- |
|
version in equation (4). The orange dashed lines use equatio n |
|
(3).ResultsfromLeFloc’hetal.(2005)areshownwiththecy an |
|
dottedlines. |
|
Fig.6.Evolution of 8 µm IR luminosity density computed by |
|
integrating the 8 µm LFs in Fig.4. The lowest redshift point is |
|
fromHuanget al.(2007). |
|
3.3. 12µm LF |
|
In this subsection we estimate restframe 12 µm LFs based |
|
on the AKARI NEP-Deep data. 12 µm luminosity ( L12µm) |
|
has been well studied through ISO and IRAS, and known to |
|
correlate closely with TIR luminosity (Spinoglioetal., 19 95; |
|
P´ erez-Gonz´ alezet al.,2005). |
|
As was the case for the 8 µm LF, it is advantageous that |
|
AKARI’s continuous filters in the mid-IR allow us to estimate |
|
restframe 12 µm luminosity without much extrapolation based |
|
onSEDmodels.Gotoet al.:InfraredLuminosityfunctions withthe AKARI 7 |
|
Table 2.Best fit parametersfor8,12 µmandTIRLFs |
|
Redshift λ L∗(L⊙)Φ∗(Mpc−3dex−1)α β |
|
0.38<z<0.58 8 µm (2.2+0.3 |
|
−0.1)×1010(2.1+0.3 |
|
−0.4)×10−31.75+0.01 |
|
−0.013.5+0.2 |
|
−0.4 |
|
0.65<z<0.90 8 µm (2.8+0.1 |
|
−0.1)×10102.1×10−31.75 3.5 |
|
1.1<z<1.4 8 µm (3.3+0.2 |
|
−0.2)×10102.1×10−31.75 3.5 |
|
1.8<z<2.2 8 µm (8.2+1.2 |
|
−1.8)×10102.1×10−31.75 3.5 |
|
0.15<z<0.35 12 µm (6.8+0.1 |
|
−0.1)×109(4.2+0.7 |
|
−0.6)×10−31.20+0.01 |
|
−0.022.9+0.4 |
|
−0.2 |
|
0.38<z<0.62 12 µm (11.7+0.3 |
|
−0.5)×1094.2×10−31.20 2.9 |
|
0.84<z<1.16 12 µm (14+2 |
|
−3)×1094.2×10−31.20 2.9 |
|
0.2<z<0.5 Total (1.2+0.1 |
|
−0.2)×1011(5.6+1.5 |
|
−0.2)×10−41.8+0.1 |
|
−0.43.0+1.0 |
|
−1.0 |
|
0.5<z<0.8 Total (2.4+1.8 |
|
−1.6)×10115.6×10−41.8 3.0 |
|
0.8<z<1.2 Total (3.9+2.3 |
|
−2.2)×10115.6×10−41.8 3.0 |
|
1.2<z<1.6 Total (14+1 |
|
−2)×10115.6×10−41.8 3.0 |
|
Fig.7.12µm luminosity distributions of samples used to com- |
|
puterestframe12 µmLFs. Fromlowredshift,335,573,and213 |
|
galaxiesarein eachredshiftbin. |
|
Targeted redshifts are z=0.25, 0.5 and 1 where L15,L18W |
|
andL24filterscovertherestframe12 µm,respectively.Wesum- |
|
marise the filters used in Table 1. Methodology is the same as |
|
for the 8µm LF; we used the sample to the 5 σlimit, corrected |
|
for the completeness, then used the 1/ Vmaxmethod to com- |
|
pute LF in each redshift bin. The histogram of L12µmdistri- |
|
bution is presented in Fig.7. The resulting 12 µm LF is shown |
|
in Fig.8. Compared with Rush,Malkan,& Spinoglio (1993)’s |
|
z=0 LF based on IRAS Faint Source Catalog, the 12 µm LFs |
|
show steady evolution with increasing redshift. In the rang e of |
|
0.25< z <1,L∗ |
|
12µmevolvesas ∝(1+z)1.5±0.4. |
|
3.4. Bolometric IR luminosity density basedonthe 12 µm |
|
LF |
|
12µm is one of the most frequentlyused monochromaticfluxes |
|
to estimate LTIR. The total infrared luminosity is computed |
|
from theL12µmusing the conversionin Chary& Elbaz (2001); |
|
P´ erez-Gonz´ alezet al.(2005). |
|
logLTIR= log(0.89+0.38 |
|
−0.27)+1.094logL12µm (8)Fig.8.Restframe 12 µm LFs based on the AKARI NEP-Deep |
|
field.Thebluediamonds,purpletriangles,andredsquaress how |
|
the 12µm LFs at 0.15< z <0.35,0.38< z <0.62, and |
|
0.84< z <1.16, respectively. Vertical arrows show the 12 µm |
|
luminosity corresponding to the flux limit at the central red - |
|
shift in each redshift bin. Overplotted are P´ erez-Gonz´ al ezet al. |
|
(2005) at z=0.3,0.5 and 0.9 in the cyan dash-dotted lines, and |
|
Rush,Malkan,& Spinoglio (1993) at z=0 in the green dash- |
|
dottedlines. AGNsareexcludedfromthesample( §2.2). |
|
Takeuchietal. (2005) independently estimated the relatio n |
|
tobe |
|
logLTIR= 1.02+0.972logL12µm, (9) |
|
which we also use to check our conversion. As both au- |
|
thors state, these conversions contain an error of factor of 2-3. |
|
Therefore, we should avoid conclusions that could be affect ed |
|
bysucherrors. |
|
Then the 12 µm LF is weighted by the LTIRand integrated |
|
to obtain TIR density. Errors are estimated by varying the fit |
|
within 1σof uncertainty in LFs, and errors in converting from |
|
L12µmtoLTIRareadded.Thelatter isbyfarthe largestsource |
|
of uncertainty. Best fit parameters are presented in Table 2. In |
|
Fig.10,we showtotal luminositydensitybasedonthe12 µmLF8 Gotoet al.:InfraredLuminosityfunctions withthe AKARI |
|
Fig.9.Evolution of 12 µm IR luminosity density computed by |
|
integratingthe12 µmLFsinFig.8. |
|
Fig.10. TIR luminosity density computed by integrating the |
|
12µmLFsin Fig.8. |
|
presented in Fig.8. The results show a rapid increase of ΩIR, |
|
agreeing with previous work (LeFloc’hetal., 2005) within t he |
|
errors. |
|
We also integrate monochromatic L12µmover the LFs |
|
(without converting to LTIR) to derive the evolution of to- |
|
tal12µmmonochromatic luminosity density, Ω12µm. The re- |
|
sults are shown in Fig.9, which shows a strong evolution of |
|
Ω12µm∝(1 +z)1.4±1.4. It is interesting to compare this to |
|
Ω8µm∝(1 +z)1.9±0.7obtained in §3.2. Although errors are |
|
significantonbothestimates, Ω12µmandΩ8µmshowa possibly |
|
differentevolution,suggestingthatthecosmicinfrareds pectrum |
|
changesits SED shape.Whetherthisisdueto evolutionindus t, |
|
or dusty AGN contribution is an interesting subject for futu re |
|
work.Fig.11.An example of the SED fit. The red dashed line shows |
|
thebest-fitSEDfortheUV-optical-NIRSED,mainlytoestima te |
|
photometricredshift.Thebluesolidlineshowsthebest-fit model |
|
fortheIRSEDat λ >6µm,toestimate LTIR. |
|
3.5. TIRLF |
|
AKARI’scontinuousmid-IRcoverageisalsosuperiorforSED - |
|
fitting to estimate LTIR, since for star-forming galaxies, the |
|
mid-IR part of the IR SED is dominated by the PAH emissions |
|
whichreflectthe SFR ofgalaxies,andthus,correlateswell w ith |
|
LTIR, which is also a good indicator of the galaxy SFR. The |
|
AKARI’scontinuousMIRcoveragehelpsustoestimate LTIR. |
|
After photometric redshifts are estimated using the UV- |
|
optical-NIRphotometry,we fix the redshift at the photo- z,then |
|
use the same LePhare code to fit the infrared part of the SED |
|
to estimate TIR luminosity. We used Lagache,Dole,&Puget |
|
(2003)’s SED templates to fit the photometryusing the AKARI |
|
bands at >6µm (S7,S9W,S11,L15,L18WandL24). We |
|
showanexampleoftheSEDfitinFig.11,wherethereddashed |
|
and blue solid lines show the best-fit SEDs for the UV-optical - |
|
NIR and IR SED at λ >6µm, respectively. The obtained total |
|
infraredluminosity( LTIR) is shown as a functionofredshift in |
|
Fig.12,withspectroscopicgalaxiesinlargetriangles.Th efigure |
|
shows that the AKARI can detect LIRGs ( LTIR>1011L⊙) |
|
up toz=1 and ULIRGs ( LTIR>1012L⊙) toz=2. We also |
|
checkedthatusingdifferentSEDmodels(Chary& Elbaz,2001 ; |
|
Dale& Helou,2002) doesnotchangeouressentialresults. |
|
Galaxies in the targeted redshift range are best sampled in |
|
the 18µm band due to the wide bandpass of the L18Wfilter |
|
(Matsuharaet al., 2006). In fact, in a single-band detectio n, the |
|
18µm image returns the largest number of sources. Therefore, |
|
we applied the 1/ Vmaxmethod using the detection limit at |
|
L18W. We also checked that using the L15flux limit does |
|
not change our main results. The same Lagache,Dole,&Puget |
|
(2003)’s models are also used for k-corrections necessary to |
|
compute VmaxandVmin. The redshift bins used are 0.2 < |
|
z <0.5,0.5< z <0.8,0.8< z <1.2,and 1.2 < z <1.6. A distri- |
|
butionof LTIRineachredshiftbinis showninFig.13. |
|
Theobtained LTIRLFsareshowninFig.14.Theuncertain- |
|
ties are esimated through the Monte Carlo simulations ( §2.4). |
|
For a local benchmark, we overplot Sanderset al. (2003) who |
|
derived LFs from the analytical fit to the IRAS Revised Bright |
|
Galaxy Sample, i.e., φ∝L−0.6forL < L∗andφ∝L−2.2for |
|
L > L∗withL∗= 1010.5L⊙. The TIR LFs show a strong evo- |
|
lutioncomparedtolocalLFs.At 0.25< z <1.3,L∗ |
|
TIRevolvesGotoet al.:InfraredLuminosityfunctions withthe AKARI 9 |
|
Fig.12.TIR luminosity is shown as a function of photometric |
|
redshift. The photo- zis estimated using UV-optical-NIR pho- |
|
tometry.LTIRisobtainedthroughSED fit in7-24 µm. |
|
Fig.13.AhistogramofTIRluminosity.Fromlow-redshift,144, |
|
192, 394, and 222 galaxies are in 0.2 < z <0.5, 0.5< z <0.8, |
|
0.8< z <1.2,and1.2 < z <1.6,respectively. |
|
as∝(1 +z)4.1±0.4. We further compare LFs to the previous |
|
workin§4. |
|
3.6. Bolometric IR luminosity density basedonthe TIRLF |
|
Using the same methodology as in previous sections, we inte- |
|
grateLTIRLFs in Fig.14 through a double-power law fit (eq. |
|
5 and 6). The resulting evolution of the TIR density is shown |
|
with red diamonds in Fig.15, which in in good agreement with |
|
LeFloc’hetal.(2005)withintheerrors.Errorsareestimat edby |
|
varying the fit within 1 σof uncertainty in LFs. For uncertainty |
|
intheSEDfit,weadded0.15dexoferror.Bestfitparametersar e |
|
presented in Table 2. In Fig.15, we also show the contributio ns |
|
toΩTIRfromLIRGsandULIRGswiththebluesquaresandor- |
|
ange triangles, respectively. We further discuss the evolu tion of |
|
ΩTIRin§4.Fig.14.TIRLFs.Verticallinesshowtheluminositycorrespond- |
|
ing to the flux limit at the central redshift in each redshift b in. |
|
AGNsareexcludedfromthesample( §2.2). |
|
Fig.15. TIR luminosity density (red diamonds) computed by |
|
integrating the total LF in Fig.14. The blue squares and oran ge |
|
trianglesareforLIRG andULIRGsonly. |
|
4. Discussion |
|
4.1. Comparison with previouswork |
|
In this section, we compare our results to previous work, esp e- |
|
ciallythosebasedontheSpitzerdata.Comparisonsarebest done |
|
inthesamewavelengths,sincetheconversionfromeither L8µm |
|
orL12µmtoLTIRinvolves the largest uncertainty. Hubble pa- |
|
rametersinthepreviousworkareconvertedto h= 0.7forcom- |
|
parison.10 Gotoet al.:InfraredLuminosityfunctions withthe AKARI |
|
4.1.1. 8µm LFs |
|
Recently, using the Spitzer space telescope, restframe 8 µm LFs |
|
ofz∼1 galaxies have been computed in detail by Caputiet al. |
|
(2007) in the GOODS fields and by Babbedgeetal. (2006) in |
|
theSWIREfield.Inthissection,wecompareourrestframe8 µm |
|
LFs(Fig.4)tothese anddiscusspossibledifferences. |
|
In Fig.4, we overplot Caputi etal. (2007)’s LFs at z=1 and |
|
z=2inthecyandash-dottedlines.Their z=2LFisingoodagree- |
|
ment with our LF at 1.8 < z <2.2. However, their z=1 LF is |
|
larger than ours by a factor of 3-5 at logL >11.2. Note that |
|
the brightest ends( logL∼11.4)are consistent with each other |
|
to within 1 σ. They have excluded AGN using optical-to-X-ray |
|
flux ratio, and we also have excluded AGN through the optical |
|
SED fit. Therefore, especially at the faint-end, the contami na- |
|
tionfromAGN isnot likelyto be the maincauseof differences . |
|
Since Caputiet al. (2007) uses GOODS fields, cosmic variance |
|
may play a role here. The exact reason for the difference is un - |
|
known, but we point out that their ΩIRestimate at z=1 is also |
|
higherthanotherestimatesbyafactorofafew(seetheirFig .15). |
|
Once converted into LTIR, Magnelliet al. (2009) also reported |
|
Caputiet al.(2007)’s z=1LF ishigherthantheirestimatebased |
|
on 70µm by a factor of several (see their Fig.12). They con- |
|
cluded the difference is from different SED models used, sin ce |
|
their LF matched with that of Caputi etal. (2007)’s once the |
|
same SED models were used. We will compare our total LFs |
|
tothosein theliteraturebelow. |
|
Babbedgeet al. (2006) also computed restframe 8 µm LFs |
|
using the Spitzer/SWIRE data. We overplot their results at |
|
0.25< z <0.5and0.5< z <1in Fig.4 with the pink dot- |
|
dashedlines.Inbothredshiftranges,goodagreementisfou ndat |
|
higherluminositybins( L8µm>1010.5L⊙).However,atallred- |
|
shift ranges including the ones not shown here, Babbedgeet a l. |
|
(2006) tends to show a flatter faint-end tail than ours, and a |
|
smallerφby a factor of ∼3. Although the exact reason is un- |
|
known, the deviation starts toward the fainter end, where bo th |
|
works approach the flux limits of the surveys. Therefore,pos si- |
|
blyincompletesamplingmaybeoneofthereasons.Itisalsor e- |
|
portedthat thefaint-endof IRLFsdependson theenvironmen t, |
|
in the sense that higher-density environment has steeper fa int- |
|
end tail (Gotoet al., 2010). Note that at z=1, Babbedgeet al. |
|
(2006)’s LF (pink) deviates from that by Caputiet al. (2007) |
|
(cyan) by almost a magnitude. Our 8 µm LFs are between these |
|
works. |
|
These comparisons suggest that even with the current gen- |
|
eration of satellites and state-of-the-art SED models, fac tor-of- |
|
several uncertainties still remain in estimating the 8 µm LFs |
|
at z∼1. More accurate determination has to await a larger |
|
and deeper survey by the next generation IR satellites such a s |
|
HerschelandWISE. |
|
To summarise, our 8 µm LFs are between those by |
|
Babbedgeetal.(2006)andCaputiet al.(2007),anddiscrepa ncy |
|
is by a factor of several at most. We note that both of the previ - |
|
ous works had to rely on SED models to estimate L8µmfrom |
|
the Spitzer S24µmin the MIR wavelengths where SED model- |
|
ing is difficult. Here, AKARI’s mid-IR bands are advantageou s |
|
indirectlyobservingredshiftedrestframe8 µmfluxinoneofthe |
|
AKARI’s filters, leading to more reliable measurement of 8 µm |
|
LFswithoutuncertaintyfromtheSED modeling. |
|
4.1.2. 12 µm LFs |
|
P´ erez-Gonz´ alezet al. (2005) investigated the evolution of rest- |
|
frame12µmLFsusingthe SpitzerCDF-S andHDF-N data.Weoverplot their results in similar redshift ranges as the cya n dot- |
|
dashed lines in Fig.8. Consideringboth LFs have significant er- |
|
ror bars, these LFs are in good agreement with our LFs, and |
|
show significant evolution in the 12 µm LFs compared with the |
|
z=012µmLFbyRush,Malkan,&Spinoglio(1993).Theagree- |
|
ment is in a stark contrast to the comparison in 8 µm LFs in |
|
§4.1.1, wherewe sufferedfromdifferncesof a factor of sever al. |
|
Apossiblereasonforthisisthat12 µmissufficientlyredderthan |
|
8µm, that it is easier to be extrapolated from S24µmin case of |
|
the Spitzer work. In fact, at z=1, both the Spitzer 24 µm band |
|
and AKARI L24observe the restframe 12 µm directly. In addi- |
|
ton, mid-IR SEDs around 12 µm are flatter than at 8 µm, where |
|
PAH emissions are prominent.Therefore,SED modelscan pre- |
|
dict the flux more accurately. In fact, this is part of the rea- |
|
sonwhyP´ erez-Gonz´ alezet al.(2005)chosetoinvestigate 12µm |
|
LFs. P´ erez-Gonz´ alezetal. (2005) used Chary&Elbaz (2001 )’s |
|
SEDtoextrapolate S24µm,andyet,theyagreewellwithAKARI |
|
results, which are derived from filters that cover the restfr ame |
|
12µm. However, in other words, the discrepancy in 8 µm LFs |
|
highlights the fact that the SED models are perhaps still imp er- |
|
fect in the 8 µm wavelengthrange, and thus, MIR-spectroscopic |
|
data that covers wider luminosity and redshift ranges will b e |
|
necessary to refine SED models in the mid-IR. AKARI’s mid- |
|
IR slitless spectroscopy survey (Wada, 2008) may help in thi s |
|
regard. |
|
4.1.3. TIRLFs |
|
Lastly,we compareourTIRLFs(Fig.14) withthoseinthelite r- |
|
ature.AlthoughtheTIRLFs canalso be obtainedbyconvertin g |
|
8µmLFsor12 µmLFs,wealreadycomparedourresultsinthese |
|
wavelengths in the last subsections. Here, we compare our TI R |
|
LFstoLe Floc’het al.(2005)andMagnellietal. (2009). |
|
LeFloc’het al. (2005) obtained TIR LFs using the Spitzer |
|
CDF-S data. They have used the best-fit SED among various |
|
templatestoestimate LTIR.WeoverplottheirtotalLFsinFig.14 |
|
with the cyan dash-dotted lines. Only LFs that overlapwith o ur |
|
redshit ranges are shown. The agreement at 0.3< z <0.45 |
|
and0.6< z <0.8is reasonable, considering the error bars on |
|
bothsides.However,inallthreeredshiftranges,LeFloc’h et al. |
|
(2005)’sLFsare higherthanours,especiallyfor 1.0< z <1.2. |
|
We also overplot TIR LFs by Magnellietal. (2009), who |
|
used Spitzer 70 µm flux and Chary& Elbaz (2001)’s model to |
|
estimateLTIR.Inthetwobins(centeredon z=0.55and z=0.85; |
|
pink dash-dotted lines) which closely overlap with our reds hift |
|
bins, excellent agreement is found. We also plot Huynhet al. |
|
(2007)’s LF at 0.6< z <0.9in the navy dash-dotted lines, |
|
whichis computedfromSpitzer 70µmimagingin the GOODS- |
|
N, and this also shows very good agreement with ours. These |
|
LFs are on top of each other within the error bars, despite the |
|
fact that these measurements are from different data sets us ing |
|
differentanalyses. |
|
This means that LeFloc’hetal. (2005)’s LFs is also higher |
|
thanthatofMagnelliet al.(2009),inadditiontoours.Apos sible |
|
reasonis that both Magnelliet al. (2009) and we removedAGN |
|
(at least bright ones), whereas Le Floc’het al. (2005) inclu ded |
|
them. This also is consistent with the fact that the differen ce |
|
is larger at 1.0< z <1.2where both surveys are only sen- |
|
sitive to luminous IR galaxies, which are dominated by AGN. |
|
Another possible source of uncertainty is that Magnelliet a l. |
|
(2009) and we used a single SED library, while LeFloc’het al. |
|
(2005)pickedthebestSEDtemplateamongseverallibraries for |
|
eachgalaxy.Gotoet al.:InfraredLuminosityfunctions withthe AKARI 11 |
|
Fig.16.EvolutionofTIRluminositydensitybasedonTIRLFs(redcir cles),8µmLFs(stars),and12 µmLFs(filledtriangles).The |
|
blue open squaresand orangefilled squaresare for LIRG and UL IRGs only, also based on our LTIRLFs. Overplotteddot-dashed |
|
lines are estimates from the literature: LeFloc’het al. (20 05), Magnelliet al. (2009) , P´ erez-Gonz´ alezet al. (2005) , Caputiet al. |
|
(2007), and Babbedgeet al. (2006) are in cyan, yellow, green , navy,and pink, respectively.The purple dash-dottedline shows UV |
|
estimatebySchiminovichetal. (2005).Thepinkdashedline showsthetotalestimateofIR(TIRLF)andUV (Schiminoviche t al., |
|
2005). |
|
4.2. Evolution of ΩIR |
|
In this section, we compare the evolution of ΩIRas a function |
|
ofredshift.InFig.16, weplot ΩIRestimatedfromTIRLFs(red |
|
circles), 8 µm LFs (brown stars), and 12 µm LFs (pink filled tri- |
|
angles),as a functionof redshift.Estimatesbased on12 µmLFs |
|
and TIR LFs agree each other very well, while those from 8 µm |
|
LFs show a slightly higher value by a factor of a few than oth- |
|
ers. This perhaps reflects the fact that 8 µm is a more difficult |
|
part of the SED to be modeled, as we had a poorer agreement |
|
amongpapersintheliteraturein8 µmLFs.Thebright-endslope |
|
of the double-power law was 3.5+0.2 |
|
−0.4in Table 2. This is flat- |
|
ter than a Schechter fit by Babbedgeet al. (2006) and a double- |
|
exponential fit by Caputiet al. (2007). This is perhaps why we |
|
obtainedhigher ΩIRin8µm. |
|
We overplot estimates from various papers in the litera- |
|
ture(LeFloc’hetal.,2005; Babbedgeet al.,2006;Caputiet al., |
|
2007; P´ erez-Gonz´ alezet al., 2005; Magnelliet al., 2009) in the |
|
dash-dottedlines. Our ΩIRhasverygoodagreementwith these |
|
at0< z <1.2,withalmostallthedash-dottedlineslyingwithin |
|
ourerrorbarsof ΩIRfromLTIRand12µmLFs.Thisisperhaps |
|
because an estimate of an integrated value such as ΩIRis more |
|
reliablethanthat ofLFs. |
|
Atz >1.2, ourΩIRshows a hint of continuous increase, |
|
while Caputiet al. (2007) and Babbedgeetal. (2006) observe da slight decline at z >1. However,as both authorsalso pointed |
|
out, at this high-redshift range, both the AKARI and Spitzer |
|
satellites are sensitive to onlyLIRGs and ULIRGs, and thust he |
|
extrapolationto fainterluminositiesassumesthefaint-e ndslope |
|
of the LFs, which couldbe uncertain.In addition,this work h as |
|
a poorerphoto-zestimate at z >0.8(∆z |
|
1+z=0.10)due to the rel- |
|
atively shallow near-IR data. Several authors tried to over come |
|
thisproblembystackingundetectedsources.However,ifan un- |
|
detectedsourceisalsonotdetectedatshorterwavelengths where |
|
positions for stacking are obtained, it would not be include d in |
|
the stacking either. Next generation satellite such as Hers chel, |
|
WISE, and SPICA (Nakagawa, 2008) will determine the faint- |
|
endslopeat z >1moreprecisely. |
|
We parameterize the evolution of ΩIRusing a following |
|
function. |
|
ΩIR(z)∝(1+z)γ(10) |
|
By fitting this to the ΩIRfrom TIR LFs, we obtained γ= |
|
4.4±1.0. This is consistent with most previous works. |
|
For example, LeFloc’hetal. (2005) obtained γ= 3.9± |
|
0.4, P´ erez-Gonz´ alezet al. (2005) obtained γ= 4.0±0.2, |
|
Babbedgeetal. (2006) obtained γ= 4.5+0.7 |
|
−0.6, Magnelliet al. |
|
(2009) obtained γ= 3.6±0.4. The agreement was expected |
|
fromFig.16,butconfirmsastrongevolutionof ΩIR.12 Gotoet al.:InfraredLuminosityfunctions withthe AKARI |
|
Fig.17. Contribution of ΩTIRtoΩtotal= ΩUV+ ΩTIRis |
|
shownasa functionofredshift. |
|
4.3. Differential evolution among ULIRG,LIRG,normal |
|
galaxies |
|
In Fig. 15, we also plot the contributions to ΩIRfrom LIRGs |
|
and ULIRGs (measured from TIR LFs) with the blue open |
|
squares and orange filled squares, respectively. Both LIRGs |
|
and ULIRGs show strong evolution, as has been seen for to- |
|
talΩIRin the red filled circles. Normal galaxies ( LTIR< |
|
1011L⊙) are still dominant, but decrease their contribution to- |
|
ward higher redshifts. In contrast, ULIRGs continueto incr ease |
|
their contribution. From z=0.35 to z=1.4,ΩIRby LIRGs in- |
|
creases by a factor of ∼1.6, andΩIRby ULIRGs increases by |
|
a factor of ∼10. The physical origin of ULIRGs in the local |
|
Universe is often merger/interaction(Sanders& Mirabel, 1 996; |
|
Taniguchi&Shioya, 1998; Goto, 2005). It would be interesti ng |
|
to investigate whether the merger rate also increases in pro por- |
|
tion to the ULIRG fraction, or if different mechanisms can al so |
|
produceULIRGsathigherredshift. |
|
4.4. Comparison tothe UVestimate |
|
We have been emphasizing the importance of IR probes of the |
|
total SFRD of the Universe. However, the IR estimates do not |
|
take into account the contribution of the unabsorbed UV ligh t |
|
produced by the young stars. Therefore, it is important to es ti- |
|
matehowsignificantthisUV contributionis. |
|
Schiminovichet al. (2005) found that the energy density |
|
measured at 1500 ˚A evolves as ∝(1+z)2.5±0.7at0< z <1 |
|
and∝(1 +z)0.5±0.4atz >1. using the GALEX data sup- |
|
plemented by the VVDS spectroscopic redshifts. We overplot |
|
their UV estimate of ρSFRwith the purple dot-dashed line in |
|
Fig.16. The UV estimate is almost a factor of 10 smaller than |
|
the IR estimate at most of the redshifts, confirming the impor - |
|
tanceofIRprobeswheninvestingtheevolutionofthetotalc os- |
|
mic star formation density. In Fig.16 we also plot total SFD ( or |
|
Ωtotal)byadding ΩUVandΩTIR,withthemagentadashedline. |
|
In Fig.17, we show the ratio of the IR contribution to the to- |
|
tal SFRD of the Universe ( ΩTIR/ΩTIR+ ΩUV) as a function |
|
of redshift. Although the errors are large, Fig.17 agrees wi thTakeuchi,Buat,& Burgarella (2005), and suggests that ΩTIR |
|
explains 70% of Ωtotalatz=0.25, and that by z=1.3, 90% of |
|
the cosmic SFD is explained by the infrared. This implies tha t |
|
ΩTIRprovidesgoodapproximationofthe Ωtotalatz >1. |
|
5. Summary |
|
We have estimated restframe 8 µm, 12µm, and total infrared lu- |
|
minosity functions using the AKARI NEP-Deep data. Our ad- |
|
vantage over previous work is AKARI’s continuous filter cov- |
|
erage in the mid-IR wavelengths (2.4, 3.2, 4.1, 7, 9, 11, 15, 1 8, |
|
and24µm),whichallowustoestimate mid-IRluminositywith- |
|
out a large extrapolationbased on SED models, which were the |
|
largest uncertainty in previous work. Even for LTIR, the SED |
|
fitting is much more reliable due to this continuouscoverage of |
|
mid-IRfilters. |
|
Ourfindingsareasfollows: |
|
–8µm LFs show a strong and continuous evolution from |
|
z=0.35 to z=2.2. Our LFs are larger than Babbedgeet al. |
|
(2006), but smaller than Caputi etal. (2007). The differenc e |
|
perhaps stems from the different SED models, highlighting |
|
a difficulty in SED modeling at wavelengths crowded by |
|
strong PAH emissions. L∗ |
|
8µmshows a continuous evolution |
|
asL∗ |
|
8µm∝(1+z)1.6±0.2in therangeof 0.48< z <2. |
|
–12µm LFs show a strong and continuous evolution from |
|
z=0.15toz=1.16with L∗ |
|
12µm∝(1+z)1.5±0.4. Thisagrees |
|
well with P´ erez-Gonz´ alezet al. (2005), including a flatte r |
|
faint-endslope. A better agreementthan with 8 µm LFs was |
|
obtained, perhaps because of smaller uncertainty in model- |
|
ing the 12 µm SED, and less extrapolationneededin Spitzer |
|
24µmobservations. |
|
–The TIR LFs show good agreement with Magnelliet al. |
|
(2009), but are smaller than Le Floc’het al. (2005). At |
|
0.25< z <1.3,L∗ |
|
TIRevolvesas ∝(1+z)4.1±0.4.Possible |
|
causes of the disagreement include different treatment of |
|
SEDmodelsinestimating LTIR,andAGNcontamination. |
|
–TIR densities estimated from 12 µm and TIR LFs show a |
|
strong evolution as a function of redshift, with ΩIR∝ |
|
(1 +z)4.4±1.0.ΩIR(z)also show an excellent agreement |
|
withpreviousworkat z <1.2. |
|
–We investigated the differential contribution to ΩIRby |
|
ULIRGsandLIRGs.WefoundthattheULIRG(LIRG)con- |
|
tribution increases by a factor of 10 (1.8) from z=0.35 to |
|
z=1.4, suggesting IR galaxies are more dominant source of |
|
ΩIRathigherredshift. |
|
–We estimated that ΩIRcaptures80% of the cosmic star for- |
|
mationatredshiftslessthan1,andvirtuallyallofitathig her |
|
redshift.Thusaddingtheunobscuredstarformationdetect ed |
|
at UV wavelengths would not change SFRD estimates sig- |
|
nificantly. |
|
Acknowledgments |
|
We are grateful to S.Arnouts for providing the LePhare code, |
|
and kindly helping us in using the code. We thank the anony- |
|
mousrefereeformanyinsightfulcomments,whichsignifican tly |
|
improvedthe paper. |
|
T.G. and H.I. acknowledgefinancial supportfrom the Japan |
|
Society for the Promotion of Science (JSPS) through JSPS |
|
Research Fellowships for Young Scientists. HML acknowl- |
|
edges the support from KASI through its cooperative fund in |
|
2008. TTT has been supported by Program for Improvement |
|
of Research Environment for Young Researchers from SpecialGotoet al.:InfraredLuminosityfunctions withthe AKARI 13 |
|
CoordinationFundsforPromotingScienceandTechnology,a nd |
|
the Grant-in-Aid for the Scientific Research Fund (20740105 ) |
|
commissioned by the Ministry of Education, Culture, Sports , |
|
Science and Technology (MEXT) of Japan. TTT has been also |
|
partially supported from the Grand-in-Aid for the Global CO E |
|
Program “Quest for Fundamental Principles in the Universe: |
|
from Particles to the Solar System and the Cosmos” from the |
|
MEXT. |
|
This research is based on the observations with AKARI, a |
|
JAXA projectwiththe participationofESA. |
|
Theauthorswishtorecognizeandacknowledgetheverysig- |
|
nificant cultural role and reverence that the summit of Mauna |
|
Kea has always had within the indigenous Hawaiian commu- |
|
nity. We are most fortunate to have the opportunity to conduc t |
|
observationsfromthissacredmountain. |
|
References |
|
Arnouts S.,et al., 2007, A&A,476, 137 |
|
Babbedge T.S.R.,et al., 2006, MNRAS,370, 1159 |
|
Bavouzet N., Dole H., Le Floc’h E., Caputi K. I., Lagache G., K ochanek C. S., |
|
2008, A&A,479, 83 |
|
Bell E.F.,et al., 2005, ApJ,625, 23 |
|
Buat V.,et al., 2007, ApJS,173, 404 |
|
Calzetti D.,etal., 2005, ApJ,633, 871 |
|
Caputi K.I.,etal., 2007, ApJ,660, 97 |
|
Chary R.,Elbaz D.,2001, ApJ,556, 562 |
|
Coleman G. D.,WuC.-C., Weedman D.W.,1980, ApJS,43, 393 |
|
DaiX.,Assef R. J.,Kochanek C.S.,et al.,2009, ApJ, 697,506 |
|
Dale D.A.,Helou G.,2002, ApJ,576, 159 |
|
Desert F.-X.,Boulanger F.,Puget J.L.,1990, A&A,237, 215 |
|
Flores H.,Hammer F.,Thuan T.X.,etal., 1999, ApJ,517, 148 |
|
Franceschini A.,Rodighiero G.,Vaccari M.,2008, A&A,487, 837 |
|
Goto T.,etal., 2010, submitted to A&A |
|
Goto T.,etal., 2008, PASJ,60, 531 |
|
Goto T.,2005, MNRAS,360, 322 |
|
Hopkins A.M.,Connolly A.J.,Haarsma D.B.,Cram L.E.,2001, AJ,122, 288 |
|
Huang J.-S.,etal., 2007, ApJ,664, 840 |
|
Huynh M. T.,Frayer D. T.,Mobasher B., Dickinson M., Chary R. -R., Morrison |
|
G.,2007, ApJ,667, L9 |
|
Ilbert O.,et al.,2009, ApJ,690, 1236 |
|
Ilbert O.,et al.,2006, A&A,457, 841 |
|
Imai K., Pearson C. P., Matsuhara H., Wada T., Oyabu S., Takag i T., Fujishiro |
|
N.,Hanami H.,2008, ApJ, 683,45 |
|
Imai K., Matsuhara H., Oyabu S., Wada T., Takagi T., Fujishir o N., Hanami H., |
|
Pearson C.P.,2007, AJ,133, 2418 |
|
Kennicutt R.C.,Jr., 1998, ARA&A,36,189 |
|
Lagache G.,Dole H.,Puget J.-L.,2003, MNRAS, 338, 555 |
|
Lagache G., Abergel A., Boulanger F., D´ esert F. X., Puget J. -L., 1999, A&A, |
|
344, 322 |
|
LeFloc’h E.,et al.,2005, ApJ, 632,169 |
|
Negrello M.,etal., 2009, MNRAS, 394,375 |
|
Komatsu E.,et al., 2008, arXiv, arXiv:0803.0547 |
|
Magnelli B., Elbaz D., Chary R. R., Dickinson M., Le Borgne D. , Frayer D. T., |
|
Willmer C. N.A.,2009, A&A,496,57 |
|
Matsuhara H.,etal., 2007, PASJ,59,543 |
|
Matsuhara H.,etal., 2006, PASJ,58,673 |
|
Murakami H.,et al.,2007, PASJ,59, 369 |
|
Nakagawa T.,2008, SPIE,7010, |
|
Papovich C.,Rudnick G.,LeFloc’h E.,et al., 2007, ApJ,668, 45 |
|
P´ erez-Gonz´ alez P.G.,et al., 2005, ApJ,630, 82 |
|
Pearson C.,etal. 2009, MNRAS,submitted |
|
Pearson C.,etal. 2009, A&A,submitted |
|
PopeA.,Chary R.-R.,Alexander D. M.,et al., 2008, ApJ,675, 1171 |
|
Pozzi F.,etal., 2004, ApJ,609, 122 |
|
Puget J.-L.,Abergel A.,Bernard J.-P.,Boulanger F.,Burto n W.B.,Desert F.-X., |
|
Hartmann D.,1996, A&A,308, L5 |
|
Rowan-Robinson M.,et al.,1997, MNRAS, 289, 490 |
|
Spinoglio L.,Malkan M.A.,Rush B.,Carrasco L.,Recillas-C ruz E.,1995, ApJ, |
|
453, 616 |
|
Rush B.,Malkan M.A.,Spinoglio L.,1993, ApJS,89, 1 |
|
SandersD.B.,Mazzarella J.M.,KimD.-C.,SuraceJ.A.,Soif erB.T.,2003,AJ, |
|
126, 1607 |
|
Sanders D.B.,Mirabel I.F.,1996, ARA&A,34,749Saunders W.,Rowan-Robinson M.,Lawrence A.,Efstathiou G. ,Kaiser N.,Ellis |
|
R. S.,Frenk C.S.,1990, MNRAS,242, 318 |
|
Schiminovich D.,et al., 2005, ApJ,619, L47 |
|
Schmidt M.,1968, ApJ,151, 393 |
|
Serjeant S.,et al.,2004, MNRAS, 355, 813 |
|
Sullivan M., Mobasher B., Chan B., Cram L., Ellis R., Treyer M ., Hopkins A., |
|
2001, ApJ,558, 72 |
|
Sutherland W.,Saunders W.,1992, MNRAS, 259, 413 |
|
Takagi T.,et al., 2007, PASJ,59, 557 |
|
Takagi T.,et al., 2010, A&Asubmitted. |
|
TakeuchiT.T.,IshiiT.T.,DoleH.,Dennefeld M.,LagacheG. ,PugetJ.-L.,2006, |
|
A&A,448, 525 |
|
Takeuchi T. T., Buat V., Iglesias-P´ aramo J., Boselli A., Bu rgarella D., 2005, |
|
A&A,432, 423 |
|
Takeuchi T.T.,Buat V.,Burgarella D.,2005, A&A,440, L17 |
|
Takeuchi T.T.,Yoshikawa K.,Ishii T.T.,2003, ApJ, 587,L89 |
|
Takeuchi T.T.,Yoshikawa K.,Ishii T.T.,2000, ApJS, 129,1 |
|
Taniguchi Y.,Shioya Y.,1998, ApJ, 501, L167 |
|
Teplitz H.I.,Charmandaris V.,Chary R.,Colbert J.W.,Armu sL.,WeedmanD., |
|
2005, ApJ,634, 128 |
|
WadaT.,etal., 2008, PASJ,60,517 |
|
WadaT.,2008, cosp, 37,3370 |
|
WadaT.,etal., 2007, PASJ,59,515 |
|
WuH.,Cao C.,Hao C.-N.,Liu F.-S.,Wang J.-L.,XiaX.-Y.,Den g Z.-G.,Young |
|
C. K.-S.,2005, ApJ,632, L79 |