File size: 59,179 Bytes
b13a737 |
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 264 265 266 267 268 269 270 271 272 273 274 275 276 277 278 279 280 281 282 283 284 285 286 287 288 289 290 291 292 293 294 295 296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441 442 443 444 445 446 447 448 449 450 451 452 453 454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567 568 569 570 571 572 573 574 575 576 577 578 579 580 581 582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635 636 637 638 639 640 641 642 643 644 645 646 647 648 649 650 651 652 653 654 655 656 657 658 659 660 661 662 663 664 665 666 667 668 669 670 671 672 673 674 675 676 677 678 679 680 681 682 683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707 708 709 710 711 712 713 714 715 716 717 718 719 720 721 722 723 724 725 726 727 728 729 730 731 732 733 734 735 736 737 738 739 740 741 742 743 744 745 746 747 748 749 750 751 752 753 754 755 756 757 758 759 760 761 762 763 764 765 766 767 768 769 770 771 772 773 774 775 776 777 778 779 780 781 782 783 784 785 786 787 788 789 790 791 792 793 794 795 796 797 798 799 800 801 802 803 804 805 806 807 808 809 810 811 812 813 814 815 816 817 818 819 820 821 822 823 824 825 826 827 828 829 830 831 832 833 834 835 836 837 838 839 840 841 842 843 844 845 846 847 848 849 850 851 852 853 854 855 856 857 858 859 860 861 862 863 864 865 866 867 868 869 870 871 872 873 874 875 876 877 878 879 880 881 882 883 884 885 886 887 888 889 890 891 892 893 894 895 896 897 898 899 900 901 902 903 904 905 906 907 908 909 910 911 912 913 914 915 916 917 918 919 920 921 922 923 924 925 926 927 928 929 930 931 932 933 934 935 936 937 938 939 940 941 942 943 944 945 946 947 948 949 950 951 952 953 954 955 956 957 958 959 960 961 962 963 964 965 966 967 968 969 970 971 972 973 974 975 976 977 978 979 980 981 982 983 984 985 986 987 988 989 990 991 992 993 994 995 996 997 998 999 1000 1001 1002 1003 1004 1005 1006 1007 1008 1009 1010 1011 1012 1013 1014 1015 1016 1017 1018 1019 1020 1021 1022 1023 1024 1025 1026 1027 1028 1029 1030 1031 1032 1033 1034 1035 1036 1037 1038 1039 1040 1041 1042 1043 1044 1045 1046 1047 1048 1049 1050 1051 1052 1053 1054 1055 1056 1057 1058 1059 1060 1061 1062 1063 1064 1065 1066 1067 1068 1069 1070 1071 1072 1073 1074 1075 1076 1077 1078 1079 1080 1081 1082 1083 1084 |
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:tomo@ifa.hawaii.edu 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 |