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Star Cluster Formation in a Turbulent Molecular Cloud Self-Regulated by Photo-Ionisation Feedback PDF

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MNRAS000,1–19(2017) Preprint30January2017 CompiledusingMNRASLATEXstylefilev3.0 Star Cluster Formation in a Turbulent Molecular Cloud Self-Regulated by Photo-Ionisation Feedback Elena Gavagnin1,(cid:63) Andreas Bleuler1, Joakim Rosdahl2 and Romain Teyssier1 1Institute for Computational Science, Centre for Theoretical Astrophysics and Cosmology, Universit¨at Zu¨rich, CH-8057, Zu¨rich, Switzerland 2Univ. Lyon, Univ. Lyon1, Ens de Lyon, CNRS, Centre de Recherche Astrophysique de Lyon UMR5574, F-69230, Saint-Genis-Laval, France 7 1 0 30January2017 2 n ABSTRACT a Most stars in the Galaxy are believed to be formed within star clusters from col- J lapsing molecular clouds. However, the complete process of star formation, from 7 the parent cloud to a gas-free star cluster, is still poorly understood. We perform 2 radiation-hydrodynamical simulations of the collapse of a turbulent molecular cloud ] using the RAMSES-RT code. Stars are modelled using sink particles, from which we A self-consistentlyfollowthepropagationoftheionisingradiation.Westudyhowdiffer- G ent feedback models affect the gas expulsion from the cloud and how they shape the finalpropertiesoftheemergingstarcluster.Wefindthatthestarformationefficiency . h is lower for stronger feedback models. Feedback also changes the high mass end of p the stellar mass function. Stronger feedback also allows the establishment of a lower - density star cluster, which can maintain a virial or sub-virial state. In the absence of o r feedback, the star formation efficiency is very high, as well as the final stellar density. t As a result, high energy close encounters make the cluster evaporate quickly. Other s a indicators, such as mass segregation, statistics of multiple systems and escaping stars [ confirm this picture. Observations of young star clusters are in best agreement with our strong feedback simulation. 1 v Key words: galaxies:starclusters:general-galaxies:starclusters:individual:(NGC 2 3603 YC, Arches) - stars: formation - stars: kinematics and dynamics - H ii regions - 8 ultraviolet: stars 9 7 0 . 1 0 1 INTRODUCTION such as its dynamical state, the mass distribution and the 7 fate of its stellar population. Establishing a full and consistent theory of star cluster for- 1 mation remains an open task for the scientific community. Understandingtheimpactofstellarfeedbackonthestar : v The most widely adopted view is that star clusters form clusterproperties,andthetransitionfromtheinitialturbu- i from the collapse of giant molecular clouds. On a timescale lent GMC to the final gas-free association of stars (such as X of a few millions years, a cloud undergoes gravitational col- observed open clusters, embedded clusters or even globular ar lapseandconvertspartofitsgasintomanydensemolecular clusters) is at the moment one of the most intriguing field cores, each core leading to the formation of one or a few ofresearchinastrophysics,mainlybecauseofthenumerous proto-stellar objects (see Klessen 2011; Krumholz 2014, for and complex physical processes at play during the entire a review). These protostars can continue accreting material history of the star cluster formation. fromtheirsurroundings,andeventuallybecomeproperstel- A classic reference is the work of Lada & Lada (2003), lar, main sequence objects, whose stellar luminosity is high which states that 90% of stars are likely to form in star enough to inject considerable amounts of energy into their clusters . In Lada & Lada (2003), star clusters are defined parent cloud. This stellar feedback modifies the properties as groups of at least 35 stars and with a stellar mass den- of the cloud and the star formation process itself and as a sityofatleast1M(cid:12)pc−3.Thesenumberscanbederivedby result regulates the properties of the emerging star cluster, requiring that the evaporation timescale of the star cluster is longer than 100 Myr. A more recent study by Bressert et al. (2010) revealed how the fraction of stars in the solar neighbourhoodforminginclustersisstronglydependenton (cid:63) E-mail:[email protected] the adopted definition for star clusters , with values rang- (cid:13)c 2017TheAuthors 2 E. Gavagnin et al. ing between 45 and 90%. They concluded that stars form tion, proto-stellar jets, stellar winds from main sequence or withinabroadandsmoothdistributionofsurfacedensities, post-main sequence stars, supernovae explosions. Although which is consistent with star formation proceeding hierar- all these ingredients are likely to play an important role in chically, within the turbulent, hierarchical structure of the regulating the star formation efficiency and in setting the parent molecular cloud, where denser regions are system- properties of the emerging star clusters, they act on differ- atically embedded in less dense regions (Elmegreen 2006; ent spatial and temporal scales, and are associated to stars Bastian et al. 2007). of different masses. Defining what is a truly bound cluster or an unbound On the observational side, several surveys can be used stellar association is indeed not straightforward, especially tocastlightonthestarclusterformationprocess.TheMYS- whenthesystemisyoung.Itisonlyafterthesestellarstruc- TiXsurvey(Feigelsonetal.2013),forexample,istargeting tures have dynamically evolved, that they are easier to dis- massivestarformingregionsandhasrevealedthatstarclus- tinguish from their environment. The identification of the ters are frequently divided into sub-clusters (Kuhn et al. fraction of stars orbiting within these older stellar systems 2015). We now have evidence that these sub-clusters are ismorereliable,andisobservedtobearound10-30%(Miller expanding or merging, with clear signs of ongoing dynam- & Scalo 1978; Adamo et al. 2011). ical relaxation. For example, we observe mass segregation Itisalsoveryimportanttoestablishwhatisthefraction (see Section 3.3 for a definition) down to 1.5 M(cid:12)(Kuhn ofstarswhichformedinstarclustersbutdonotresidethere et al. 2015). Similarly, Da Rio et al. (2014) have studied anymore today. This is usually referred as star clusters in- the morphology and the dynamical state of the Orion Neb- fantmortality,outliningthefactthat,whenwecomparethe ula Cluster. They concluded that the core appears rounder fraction of stars in young, embedded star clusters with the and smoother than the outskirts, which is consistent with fractionofstarsinolder,openclusters,mostoftheclusters ongoing dynamical processing. seems to have been disrupted during this transition from The Gaia-ESO Survey (Gilmore et al. 2012) has re- embedded to exposed (Lada & Lada 2003). Note that this cently discovered several kinematically distinct populations interpretationassumesthatthefractionofstarsinstarclus- intheyoungstarclusterGammaVelorum,surroundingthe ters is the rather old one presented in (Lada & Lada 2003). γ2 Velorum binary in the Vela OB2 association. According Thecommonlyadoptedpictureforthecauseofthisin- toJeffriesetal.(2014),thefirstcomponentofGammaVelo- fantmortalityisthefastexpulsionoftheinitialgas,leading rumisaboundremnantofaninitiallylargercluster,formed to the rapid expansion and disruption of the star cluster. inadenseregionoftheVelaOB2association,thathasbeen Only clusters with a star formation efficiency (SFE, i.e. the partiallydisruptedbygasexpulsion.Thesecondcomponent fractionofgasconvertedintostars)higherthan30%arebe- consists of a scattered population of unbound stars born lievedtosurvivethegasremovalandstaybound(Hills1980; later (as indicated by lithium depletion) in less dense re- Ladaetal.1984;Bastian&Goodwin2006).Yet,thestarfor- gions.Thegassurroundingthissecondpopulationwasprob- mation efficiency is not the only parameter that can decide ablyevaporatedbytheradiationcomingfromthefirstone, whetherastarclusterwillsurvivegasexpulsion.Twoother quenching the star formation episode quite abruptly. important factors are: 1-the timescale of gas removal and Ingeneral,veryyoungstarclusters,sometimesstillem- 2-the actual dynamical state of the star cluster right before bedded in their parent gas cloud, are ideal laboratories to expulsion. Regarding the first point, it has been shown for study the effect and phenomenology of stellar feedback and examplethatsystemswithstarformationefficiencyaslowas gasexpulsion.IntheMilkyway,theso-called“starburststar 10%canremainbound,aslongasthegasisremovedslowly clusters”(e.g. NGC 3603 YC, Quintuplet, Arches, Wester- andadiabatically(Baumgardt&Kroupa2007).Thesecond lund 1 and 2) represent the youngest (< 5 Myr) and more factor has been pointed out by Goodwin (2009), showing a actively star forming clusters (Brandner 2008). NGC 3603 strong dependence of the star cluster mass loss (hence sur- YC, for example, is only ∼ 1 Myr old, and is surrounded vival)onthevirialratiooftheemergingstarcluster.Indeed, by glowing interstellar gas and obscuring dust (R¨ollig et al. if the system is sub-virial before gas is expelled, it can sur- 2011). Arches, the second youngest with an age of ∼ 2.5 viveevenwithSFElowerthan30%.Conversely,aninitially Myr, is already free of any gas in its centre (Stolte et al. super-virialsystem,evenwithaSFEashighas50%,willbe 2003) with a clear X-ray signature of hot outflowing gas at edge of survivability (Goodwin 2009). (Yusef-Zadeh et al. 2002). These newborn star clusters are TheSFEwithinstarformingmolecularcloudsispoorly characterisedbythepresenceofstronglyUV-radiationfrom understood from theoretical grounds. Simple models based OandBstarsthationisesthe nebulaanddispersesthegas onlyonself-gravitatingturbulencepredictaveryhighSFE, (Crowther et al. 2010; McLeod et al. 2016). higherthan90%,meaningthatstarformationoccursduring On the theoretical side, the challenge of modelling star one free-fall time of the parent cloud, in contradiction with clustersisduetothelackofacompletetheoryofstarforma- observational constraints (Padoan et al. 2014). tion. This is an inherently multi-scale, multi-physics prob- StellarfeedbackhasbeeninvokedtoreducetheSFEby lem,withacentralroleplayedbyfeedbackmechanisms.We terminatingstarformationingiantmolecularclouds(seethe point to the reviews by Dale (2015) and Krumholz et al. review by Dale 2015, and references therein). Stellar feed- (2014) for a detailed presentation of the problem. Here we back is a broad term that refers to the injection of mass, present only a few selected earlier studies, relevant for our momentumandenergybystarsandprotostarsintothestar workwhichfocusesspecificallyonthestarclusterformation forming gas itself. The different mechanisms of stellar feed- process. backarephotoionisationfrommassivemainsequencestars, Fujii & Portegies Zwart (2015), Fujii (2015) and Fujii infraredandopticalradiationfromaccretingprotostars,ra- & Portegies Zwart (2016) used direct N-body simulations, diation pressure associated to these various types of radia- startingfrominitialconditionsdrawnfromtheresultsofpre- MNRAS000,1–19(2017) Star cluster formation with photo-ionisation 3 vious smoothed particle hydrodynamics (SPH) simulations More recently, several papers have addressed the prob- of turbulent molecular clouds. Because the adopted SPH lem of star cluster formation from a realistic, gaseous, tur- resolution was relatively low (∼ 0.1 pc), the authors could bulent environment using grid-based simulation techniques. not resolve the formation of individual stars, but could still UsingtheRAMSEScode,Lee&Hennebelle(2016)studiedthe capture the clumpy structure of the gas. After one free-fall conditions required in the parent cloud to obtain a bound time of the initial gas cloud, they stopped the hydro simu- star cluster. The authors aimed to examine the properties lation and replaced dense enough gas particles with stellar of the gaseous proto-cluster born from the collapse of a 104 particles,assumingastarformationefficiency(orgastostar M(cid:12)molecularcloud.Toachievethistheyperformedmagne- conversion factor) depending on the local gas density. The tohydrodynamics simulations, without stellar feedback and remaining gas particles were removed instantaneously and varying the initial level of turbulent support. Prestellar thestellarparticlesdynamicswasintegratedfurtherintime cores were followed using the same sinks particle algorithm using a direct N-body code. They derived that the initial adoptedinourwork.Thetypicalmassofasinkwas10M(cid:12). propertiesoftheparentcloud(mass,density)determinethe Theproto-clusterturnedouttobeinvirialequilibrium,with characteristics of the emerging cluster, whether it will be- turbulence and rotation supporting the collapse. The virial come an association, an open cluster or a dense massive status and size of the proto-cluster were considered to be one. Moreover, to form massive clusters, they claimed that directly imprinted by the parent cloud, therefore they con- a local star formation efficiency >50% is needed. cludedthatthestudyofthegaseousproto-clusterphaseisa Using a more elaborate methodology, Dale & Bonnell fundamentalstepinthecontextofstellarclusterformation. (2011), Dale & Bonnell (2012), Dale et al. (2012b), Dale Using the FLASH code, coupled to a ray tracing code, et al. (2012a), Dale et al. (2013b) and Dale et al. (2013a) Howardetal.(2016)studiedtheeffectofvariouscloudinitial studied in a series of papers the effects of photo-ionisation conditions, then subjected to the ionising radiation of mas- feedbackonembeddedclustersanditsdisruptiveimpacton (cflrooumds2otfod2i2ff0eprecn)t,emithasesreisni(tfiraolmlyb1o0u4ntdoo1r0u6nbMo(cid:12)u)nda.nIdnDsizaeles sTivheissstatursd,yonfocthuesefidnoanl pgrioapnetr1ti0e6sMo(cid:12)f tmheolsetcaurlacrlucsltoeurdssy,stweimth. different initial virial parameters (α), ranging from bound et al. (2014), the authors added stellar winds to photoioni- (α=0.5) to unbound (α=5). The main goal was to study sation feedback and studied how the overall star formation how feedback and the virial status affect the formation of efficiency, the average star formation rate (SFR) and the star clusters and subsequent evolution of the cloud. In this fraction of unbound gas varied with the initial cloud prop- case sink particles represented single star clusters and star erties.TheirmethodologywasbasedonSPHsimulationsof formationwithineachclustersisimplementedwithasubgrid turbulentmolecularclouds,withaninitialshallowGaussian model,byrandomlysamplingtheIMF.Theirconclusionwas density profile. The velocity field was initialised as a turbu- thattheinitialvirialparameterstronglyinfluencestheSFE, lent, divergence-free Gaussian random field, with a power spectrum to P(k)∝k−4 consistent with isothermal super- with more bound clouds having higher efficiency, while ra- diativefeedbackdidnotplayamajorrole,loweringthepre- sonic turbulence. The cloud was evolved using self-gravity vious values only by few percent. They also found that the and cooling, and star formation was modelled using sink numberofstarclustersformeddependsontheboundedness particles.Themassandspatialresolutionwasalsorelatively low, with only 104 particles per cloud. Radiative transfer of of the cloud: the more bound the cloud, the fewer the star clusters. Moreover, the clusters from unbound clouds were the photo-ionising photons was performed using a Str¨om- gaspoorerandstarricherthantheonesformedfrombound gren sphere filling technique (see Dale et al. 2007, for de- clouds. tails). Using the same set of simulations, Dale et al. (2015) focused on the properties of the stellar populations of the Inthiswork,wemodelthecollapseofa∼2.5×104 M(cid:12) star clusters formed. They found that the star formation turbulentcloudwithphoto-ionisationfeedbackfrommassive efficiency is lowered by the presence of feedback, however stars at extremely high resolution (smallest cell size ∼ 500 they stressed how the disruptive effect of feedback depends AU),andstudyhowthestarclusterformsandemergesfrom on the cloud properties, especially the escape velocity. Na- its parent cloud. Our radiative transfer technique is based tal gas from massive clouds with elevate escape velocities onthemomentmethodwiththeM1closure(Rosdahletal. is expelled only in minimal part. Winds are found to have 2013) and allows to model an arbitrary number of photon little impact on the dynamics of gas compared to ionising sources, much faster than traditional ray tracing schemes. feedback.Moreover,inthesesimulationsthenumberofstars We consider two different feedback scenarios (strong and unbound by feedback is very modest and is not related to weak)andareferencesimulationwithoutanyfeedback.We the fraction of gas expelled. subsequently analyse how the different feedback scenarios Along the same lines as in Fujii & Portegies Zwart affect the properties of our new born star clusters, using (2015), the longer term evolution of these star clusters was various observables related to the stellar mass function, its finally investigated in another series of paper by Parker & spatial distribution, the mass segregation, the distribution Dale (2013); Parker et al. (2015); Parker & Dale (2015). of escaping stars and the stellar multiplicity function. They concluded that clusters formed in simulations with feedback tend to remain sub-structured longer than in the The paper is organised as follows: in Section 2, we de- non-feedbackcases.Moreover,attheendofthepureN-body scribe the numerical methods we have used for our simu- evolution,theauthorsfoundthatsimulationswithfeedback lations. In Section 3, we analyse the properties of the star contain fewer bound stars than in the control run. In terms clusters we have obtained, and finally, in Section 4, we dis- ofmasssegregation,theydonotprovideauniqueconclusion, cussourfindingsinlightofpreviousstudies,boththeoretical because different analysis give back contrasting evidence. and observational. MNRAS000,1–19(2017) 4 E. Gavagnin et al. 2 NUMERICAL METHODS thisgivesustheconstraintthatρ<ρJ(cid:39)2×10−17g/cc.This maximum density corresponds also to a Jeans mass Wenowdescribeindetailsthenumericaltechniquesweuse tfoormmoadtieolnthoefcmoallsaspivseeosftaarstu,rfbolulolewnitnmgotlheecuelffaercctlsouodf iaonndistinhge mJ= 43πρJ(cid:18)λ2J(cid:19)3(cid:39)0.14 M(cid:12). (3) radiation on the cloud itself. We require to resolve this Jeans mass with at least 64 resolution elements, which gives us a mass resolution of 2.1 Initial Conditions mres(cid:39)2×10−3 M(cid:12). Our refinement strategy is thus the fol- lowing:ifacellhasaccumulatedagasmasslargerthanm , We first perform a decaying turbulence simulation in a pe- res thenitisrefinedindividuallyinto8newchildrencells,upto riodic box sampled with 10243 cells. This simulation is ini- the maximum refinement level. Note that with our adopted tialisedwithauniformgasdensityρ0=1(inarbitraryunits) initial coarse level and our quasi-Lagrangian strategy, we andaGaussianrandomvelocityfieldwithapowerspectrum also automatically satisfy the additional criterion that the P(k)∝k−4, where k is the wavenumber. P(k) is normalised Jeans lengthis always refinedby at least 4 cells for any gas so that the 3D velocity dispersion in the full box was set to σ3D=Mcs, where the sound speed is cs=1 in arbitrary density smaller than ρJ. units and the initial Mach number is set to M =20. After one turbulence crossing time, tturb=L/σ3D (where the box 2.3 Sink Particles size was also set to 1 in arbitrary units), the kinetic energy hasdecayedby√afactoroftwo,andtheactualMachnumber When the gas density exceeds ρJ, we violate our require- byafactorof 2.Atthattime,theturbulenceisfullydevel- menttoalwaysresolvetheJeanslengthwith4cellsandthe oped, with density fluctuations following a clear log-normal Jeansmasswith64resolutionelements.Thereforeweadopt distribution function and the variance in logρ reaching its thiscriteriontoformsinkparticles,usingthetechniquede- peak value. veloped in Bleuler & Teyssier (2014). We first detect den- We then use this final snapshot as a template for the sity peaks in our 3D density field using the PHEW clump initial turbulent cloud. We first set up the physical scales finder (Bleuler et al. 2015). The density threshold is set to of our problem. The cloud is considered to be composed of ρthreshold=2×10−18 g/cc,or10%oftheJeansdensity.After fully molecular Hydrogen with temperature T =10 K and wehaveidentifiedadiscretesetofpeakpatchesdelimitedby 0 isothermal sound speed cs =0.2 km/s. The mean density either the isosurface at the density threshold or the saddle in the box is set to nH =103 H/cc and the periodic box surface with a neighbouring peak patch, we draw a sphere, length to 20 pc. We carve out of the periodic box a sphere 4 cell size in radius, around the density maximum. If the of radius 5 pc, centred on a large filament resulting from a density at the maximum exceeds the Jeans density, if the largecompressivemode.Asaresult,themeandensityinthe sphere is contracting and if its virial parameter is less than sphericalcloudislargerthanthemeandensityintheoriginal 1, we form a sink with a seed mass equal to mJ(cid:39)0.14 M(cid:12) box, and the Mach number in the cloud is smaller than in (seeBleuler&Teyssier2014,fordetails).Inoursimulations √ theoriginalbox(byanotherfactorof 2)withM (cid:39)10.The one sink corresponds to a single star. finalcloudpropertiesarethefollowing:radiusR=5pc,mass The sink particle is then treated like a point mass. We M(cid:39)2.5×104M(cid:12)andvelocitydispersionσ3D(cid:39)2km/s.Note follow the sink particles dynamics by a leap-frog, direct N- that, because we have adopted a velocity dispersion at the body integrator, using a softened 1/r2 acceleration (with lowendofvaluesfoundinobservationsofcloudsofasimilar softening length 0.5∆xmin) between sinks, and also between size, our cloud virial parameter the sinks and the gas. Only the self-gravity of the gas is based on the grid-based Poisson solver in RAMSES. Gas ac- 5σ2 R α = 3D (cid:39)0.3, (1) cretion onto the sink particles is modelled through what is vir 3GM described as“flux accretion”in Bleuler & Teyssier (2014). is small enough to ensure a fast collapse, i.e. the free-fall time is ∼ 1 Myr. The simulations are then run to t=2Myr. 2.4 Radiative Processes 2.2 Refinement strategy In this paper, we model the emission and the propagation of ionising, ultra-violet (UV) radiation, together with asso- Ourinitialcoarsegridcorrespondstoaminimumrefinement ciated heating and cooling processes. We used the RAMSES- level(cid:96)min=10withcellsize∆xmax(cid:39)0.02pc,whichallowsus RT radiative transfer module developed by Rosdahl et al. toresolveoursonicscalels(cid:39)0.08pc,i.e.thescaleatwhich (2013), using one photon group, with energies between our scale-dependent 3D velocity dispersion is equal to the 13.6 eV and 24.6 eV.We do not account for photon ener- sound speed. During the course of the simulation, we refine gies below 13.6 eV, namely optical and infrared radiation, this initial grid level using a quasi-Lagrangian refinement as the scope of the paper is to study the effect of photo- criterion.Ourmaximumresolutionisfixedtoourmaximum ionisation heating on the molecular cloud. We will study refinementlevel(cid:96)max=13,whichcorrespondstoaminimum these other sources of radiation in a follow-up paper. De- cell size of ∆xmin (cid:39)500 AU. Assuming for the isothermal tails in the adopted photo-absorption cross section, chem- soundspeedcs=0.2km/s,andrequiringfortheJeanslength istry and cooling processes are available in Rosdahl et al. (2013).MetalcoolingprescriptionsarebasedonSutherland (cid:114) π &Dopita(1993)fortemperaturesabove104KandonRosen λJ=cs Gρ >4∆xmin, (2) &Bregman(1995)formetalfine-structurecoolingbelow104 MNRAS000,1–19(2017) Star cluster formation with photo-ionisation 5 K.FollowingGeenetal.(2015,2016),thephotongroupen- 1.4 ergy and cross-section are derived sampling the blackbody Strong FB spectralenergydistributionofa20M(cid:12) star.Thefrequency- 1.2 Weak FB dependent ionisation cross sections are taken from Verner No FB et al. (1996) and Hui & Gnedin (1997). A reduced speed 1.0 of light of 10−4c is used. This is done to improve the effi- ciencyofoursimulations,sincethespeedoflightaffectsthe OT0.8 tilmestep calculation, through the Courant factor. P E TheUVradiationemittedbythesinkparticlesismod- /N KI0.6 elled using the following simple strategy. We implemented E two feedback regimes, namely strong and weak. For the 0.4 strong feedback case, we basically consider all the energy emitted from the sink/star (even optical and infrared) as 0.2 ionising radiation. To derive the energy associated with ev- ery sink we assume a power-law luminosity-mass relation, 0.0 L = L(cid:12)(M/M(cid:12))3.5, where L(cid:12) and M(cid:12) are the solar lu- minosity and solar mass, respectively . For the weak feed- 100% backcase,wecomputedananalyticalfitofphotonemission 1.0 91.85% ratespresentedinSternbergetal.(2003),obtainedthrough radiation-driven wind atmosphere models of OB stars. We 0.8 T derived the following analytic expression of the number of O T M emitted ionising photons per second, Q , as a function of the stellar mass: HI / S0.6 K N 2.4 SI 40.26% log[QHI(M)]=48.65+log(M/M(cid:12))−log(M/M(cid:12)−8)1.9. (4) M0.4 This formula was applied to calculate emission rates for all 20.42% 0.2 sinks with M>10M(cid:12). For stars with lower mass we assume there are no ionising photons. 0.0 0.6 0.8 1.0 1.2 1.4 1.6 1.8 2.0 t [Myr] 3 ANALYSIS In this section we focus on the analysis of the simulations. In particular, we study the structural characteristics of the Figure 1.Toppanel:ratiooftotalkinetictopotentialenergyof star cluster (such as mass function, virial status, mass seg- thesinks(virialratio,Ek/Ep),thedashedgreenlineindicatesthe regation, escapers, binaries) in the three different runs, to virialequilibrium.Bottompanel:starformationefficiencyevolu- understand the role of feedback (FB) in shaping the star tion with time computed as the mass fraction in sinks (MSINKS cluster itself. indicates the total mass in sinks, MTOT, the total initial mass of thegascloud).Theionisingradiationsuppressestheformationof Figure 1 shows ratios of kinetic to potential energies of stars by clearing gas out of the cloud, and it increases the virial sinks (upper panel) and the SFE (lower panel) as a func- stabilityoftheemergingstarcluster. tion of time. Focusing first on the SFE, the ionising radia- tionclearlyhasamajoreffectinsuppressingstarformation. In Figures 2 and 3 we demonstrate the effects of the radi- ation qualitatively, plotting time-sequences of gas density and temperature maps, to compare the strong, weak and no feedback cases. The initial phase of the cloud collapse proceeds identically in the three cases. The cloud gravita- tionally contracts and starts forming filaments, where local andwenowfollowthephoto-chemistryofHydrogen.Differ- overdensitiesallowthecreationofstars,hererepresentedby ences with the no-feedback case start being visible around sinks (in yellow or turquoise, depending on the map). already 0.4 Myr in the temperature map, when the most Intheno-feedbackcasethiscontractionproceedswith- massive stars in the lower part of the filament start emit- out resistance until, eventually all the gas is converted into tingUVphotonsandcausethegastemperaturetoincrease stellarobjects;fromFigure2wecanseehoweveninthelat- locally. This bubble of hot gas becomes more and more ex- estsnapshottheamountofdensegasisstillhighandbythe tendedsincemorestarsareformed,accretingmoregas.The endofthesimulationtime(2Myr)thefractionoftotalmass neutral HI gets dissipated, due to the quick expansion of stillavailableingasis∼10%.Ingeneral,wecannoticehow the HII region. At the end of the simulation, the star clus- the final shape of the star cluster becomes more and more ter is completely free of dense and neutral gas. The strong- spherical with the simulation progressing. The gas temper- feedbackcaseisanaloguetotheweak-feedbackcasebutthe ature in the no-feedback case does not show huge changes process of photoionisation and gas expulsion is much more throughout the collapse. rapidandviolent,soasaresultthestarclusterisdevoidof Intheweak-feedbackcase,starsemitionisingradiation gas already at 1.2 Myr. MNRAS000,1–19(2017) 6 E. Gavagnin et al. No FB Weak FB Strong FB Density [H/cc] 10-2 10-1 100 101 102 103 104 105 Figure 2.Massweightedline-of-sightprojectionsofgasdensityforallthreerunsatdifferenttimes.Thestrongfeedbackcaseinalways denotedwithdarkbluecolour,weakfeedbackcasewithmagentaandtherunwithoutfeedbackwithazur).Sinkparticlesareindicated inyellow. MNRAS000,1–19(2017) Star cluster formation with photo-ionisation 7 No FB Weak FB Strong FB Temperature [K] 10-1 100 101 102 103 104 105 Figure3.Massweightedline-of-sightprojectionsofgastemperatureforallthreeruns(strong,weakandnofeedback)atdifferenttimes. Sinkparticlesareindicatedinturquoise. MNRAS000,1–19(2017) 8 E. Gavagnin et al. 3.1 Virial properties mass is lower, around 250 M(cid:12) and the mass function flat- tens, with a slight increase of very low mass stars (close to InthetoppanelofFigure1weshowtheevolutionovertime ourresolutionlimitof0.1M(cid:12)).Thetrendgetsevenclearer of the virial ratio of the star cluster, Ek/Ep (where Ek and if we look at the case with strong feedback, where there is Ep are respectively the total kinetic and potential energy a significant peak of stars with mass around 0.1 M(cid:12) (corre- of the sinks) for the three simulations. We do not consider sponding to the sink seed mass) and the most massive star snapshotsbefore0.5Myrbecausetherateofsinkformation is now around 120 M(cid:12). We observe in the simulation that isstilltohighandstronglyinfluencesthevirialanalysis.As this excess of low mass stars close to the resolution limit is seeninthefigure,thetwocaseswithfeedbackresultinvirial causedbythefragmentationoftheouterdenseshellsofHII orevensub-virialstate.Thecasewithoutfeedbackisclearly regions. super-virial, hence expanding. This can be explained as a Looking at the mass function at earlier times (specifi- result of feedback, which halted the collapse of the cloud, cally, t=0.25 Myr and t=0.5 Myr, paler lines in figure 3), ionisinganddispersingtheneutralgas.Thisdeterminedthe it is clear that the onset of the sink mass function proceeds formation of a much less dense aggregation of stars than similarlyinthethreecases.Itismainlythefinalmassdistri- in the control simulation. In the run without feedback, the bution that shows visible differences between the feedback collapse proceeds unhindered and the new-born stars are andno-feedbackcases.Tosummarise,theseare1)thehigh- immersedinadense,highly-collisionalenvironment,experi- masscut-offduetofeedbackeffectsthatstopaccretiononto encing very strong close interactions. This inevitably leads massive sinks, 2) a peak at the low-mass end, due to frag- to the ejections of many sinks and expansion of the cluster. mentation of dense gas around HII regions. On the other hand, the feedback opposes this runaway col- lapse and allows the onset of a lower density regime, where the stellar distribution finds a stable configuration. It is interesting to notice how this result goes against 3.2.1 Comparison to observations traditional predictions (see the Introduction), which argue It is very instructive to compare the results of our sim- for a complete disintegration of the star cluster after a vi- ulations to available observations. We choose to consider olent expulsion of gas. However, these often assume a fully NGC 3603 and the Arches cluster, since they are among formed star cluster still embedded in gas, which at some the youngest (< 2 Myr) well-studied star clusters and are point gets ejected. In our case, stars are created while the still very actively star forming. gas is expelled in a self-regulating fashion. Therefore the NGC3603YC(alsoknownasHD97950)isaverycom- virialstatusoftheemergingstarclusterchangesalongwith pactandmassiveyoungstarclusteratthecentreofthevast thecollapse.Inoursimulations,thetwomainagentsdeter- homonym HII region. It is composed of three Wolf-Rayet miningtheinternaldynamicsandsurvivaloftheclusterare stars and around 40 O-type stars, a dozen of which resides thevirialratioofthemolecularcloud(highlysubvirial)and intheverycentralpartofthecore,withinlessthan1lyfrom thestrengthofthefeedback:averysubvirialcloudproduces thecentre(Drissenetal.1995).Harayamaetal.(2008)esti- a cluster too dense to survive, unless feedback slows down matedthetotalmasstobebetween1and2×104 M(cid:12).The the collapse. We also conclude that the star formation effi- H-RdiagraminMelenaetal.(2008)revealsthepresenceof ciency alone is not a good indicator of the survivability, as atleast15starswithmassesgreaterthan60M(cid:12).Themost it is usually believed. massive stars in the cluster seem to be coeval with ages be- In the lower part of Figure 1 we show the fraction tween1and2Myr(Kudryavtsevaetal.2012;Melenaetal. of gas transformed into stars. Stellar feedback is very ef- 2008; Stolte et al. 2004). However, the age spread between ficient in stopping the collapse and lowering the SFE. In the pre-main-sequence stars (Beccari et al. 2010) and the fact in the case with the strongest feedback the SFE halts slightly older stars in the cluster outskirts (Sung & Bessell at ∼20% (while virtually unity for the control simulation). 2004) suggests a possible extended star formation scenario. Foraweakerfeedback,wegetahigherfraction.Despitethe TheArchesclusterisconsideredtobethedensestclus- factthatinthesimulationwithoutfeedbackallgasiseven- ter in our Galaxy. It also falls in the category of so-called tuallytransformedintostars,westressthattheoutcomeof starburststarclusters.ItislocatedneartheGalacticcentre the simulation is the dispersal of the emerging star cluster, and its age is estimated to be around 2 Myr. Its total mass while for the strong feedback case, which results in a very isestimatedtobearound2×104 M(cid:12)(Espinozaetal.2009) lowstarformationefficiency,theoutcomeisastable(oreven and it contains 160 O-stars and 13 Wolf-Rayet1 (Martins subvirial) star cluster. et al. 2008; Figer 2004). ForNGC3603YC,weconsideredthemassfunctionre- sultspublishedbyPangetal.(2013)andforArchestheone 3.2 Mass function published by Stolte et al. (2005). To derive the mass func- tionofNGC3603YC,theauthorsconsideredstarsinabso- In Figure 4, we plot the stellar mass function for all the lute V-magnitude bins and then derived the correspondent feedbackcaseswehaveconsideredandatdifferenttimes.In massesusingtheisochronemodelsfromLejeune&Schaerer therunwithoutfeedback,ourmassfunctionpeaksatarela- (2001) for high mass stars and Siess et al. (2000) for low tivelylargemassof∼10M(cid:12)andshowsastrongaccumulation mass stars. Their mass bins have a logarithmic size of 0.2. of very massive stars at the high mass end, with the mean sink mass being around 15 M(cid:12) and the most massive sink reaching460M(cid:12).Thisisduepartlytoourlimitedresolution (seelater)andtothelackoffeedbacktolimitthemaximum 1 This is about 5% of all known Wolf-Rayet stars in the Milky stellar mass. In the weak feedback scenario, the maximum Way(Figeretal.2002). MNRAS000,1–19(2017) Star cluster formation with photo-ionisation 9 No FB Weak FB Strong FB 103 3.3x NGC 3603 t [Myr] : 2.0 1.5x NGC 3603 t [Myr] : 2.0 1.2x NGC 3603 t [Myr] : 2.0 1.1x Arches NTOT : 1402 0.5x Arches NTOT : 828 0.4x Arches NTOT : 825 MMEAN [M ] : 15.42 MMEAN [M ] : 11.53 MMEAN [M ] : 5.87 MMAX [M ] : 459.96 MMAX [M ] : 247.4 MMAX [M ] : 115.44 t=2.0Myr M)102 t=2.0Myr t=2.0Myr ( g o t=0.5Myr t=0.5Myr t=0.5Myr L d / N d101 t=0.25Myr t=0.26Myr t=0.25Myr 100 10-2 10-1 100 101 102 10-2 10-1 100 101 102 10-2 10-1 100 101 102 M [M ] M [M ] M [M ] Figure 4.Massfunctionprofileforall3feedbackregimes.Thethickeranddarkerlinesindicateforeveryrunthemassfunctionprofile att=2Myr.Inthetoprightboxofeverysubplottheweindicatedthetotalnumberofsinks,theaverageandmaximumsinkmassesat t=2 Myr. In every subplot we plot also the mass functions at t=0.5 Myr and t=0.25 Myr in paler colours. The green dots correspond tothenormalisedobservationaldataforArchescluster(Stolteetal.2005),theredtrianglesthesameforNGC3603(Pangetal.2013). The normalisation factors are reported in the top left box. Our strong feedback case compares best with the normalised observations, althoughallmodelsfailtoreproducethesteepcurvetowardslowermassesinNGC3603. The data were corrected both for incompleteness and fore- high-mass end, is obtained with the strong feedback (af- groundstarscontaminationandincludeallstarswithin60” terrenormalisation).Theweakandno-feedbackrunsclearly (∼ 2 pc). produce too many very high-mass stars. The agreement is Stolte et al. (2005) derived the present day mass func- worseatlowermasses,especiallybelow10M(cid:12).Asweexplain tion of Arches cluster by converting the K-band mag- below, we believe this is due to our limited resolution. nitudes from the corrected color-magnitude diagram into masses using a 2 Myr Geneva main-sequence solar metal- licity isochrone from Lejeune & Schaerer (2001). They also 3.2.2 Slope of the mass function binnedtheirdatausinglogarithmicintervalsofsize0.2and The previous analysis was carried out considering all the they computed the mass function 10 times, each time shift- sinks in the simulation box. We now study the mass func- ing the bins by 0.02. The final present-day mass function tion dependency with radius. In Fig. 5, we show the mass was created by averaging all the points from these 10 mass functiontakingintoaccountonlysinkswithinspecificradii2, functions and takes into account all stars within 0.4 pc. namely1,3and5pc,andforallthreefeedbackregimes.The Comparing these observational data to our simulations lastradialbincontains92%,74%and88%ofthesimulated is not trivial, since we do not know the SFE of the parent sinks respectively for strong, weak, no feedback. The solid cloudsofbothNGC3603YCandArches.Thetargetedclus- curve corresponds to the whole box, or a radius of 10 pc. ters have about twice the mass of our simulated ones from Although the mass function appears to be independent of the feedback runs, but roughly equal to the one in our no- radiusforthenofeedbackcase,itlooksclearlyflatterinthe feedback simulation. If the true SFEs of the observed star inner parts and steeper in the outer parts for the two feed- clusters were very low, say 10%, this would imply that the backcases.Pangetal.(2013)showedthatasimilareffectis originalcloudswouldbeasmassiveas105M(cid:12),whichiscom- present in NGC 3603: the slope of the mass function steep- putationallytooexpensivetosimulateatthecurrentresolu- ens with radius, indicating that the most massive stars are tionandwithourradiationsolver.Therefore,wedecidedto mostly concentrated in the centre. This feature is generally re-normalisetheobservations.Thenormalisationfactorsare explainedbymasssegregation.Wewilldevelopthistopicin computed requiring that the mass bin at 15 M(cid:12) in the two the next section. observational datasets have the same value, equal to that If we now quantify the slope of the mass function, we ofoursimulateddataset.Thenormalisationcoefficientsfor foundthatalloursimulationsshowaslope(Γ)muchflatter the Arches dataset are 0.4, 0.5 and 1.1 with respect to the thanthatoftheSalpeterIMF(i.e.Γ=-1.35),dependingsen- strong, weak and no feedback cases, respectively, while the sitively on the range of masses used to compute it (see Fig. normalisationcoefficientsfortheNGC3603datasetare1.2, 5). This is also the case for observed young and embedded 1.5and3.3withrespecttothestrong,weakandnofeedback star clusters. NGC 3603, for example, has Γ=−0.88±0.15, cases, respectively In Figure 4 we compare these renormalised observed mass functions to our simulated ones. Renormalised obser- 2 Unlessotherwisestated,theradiusisalwaysconsideredrespect vationaldataareshowedwithredtriangles(NGC3603)and tothecentreofdensityofthesystemdefinedasinPortegiesZwart greencircles(Arches).Thebestagreement,especiallyatthe etal.(2001). MNRAS000,1–19(2017) 10 E. Gavagnin et al. No FB Weak FB Strong FB 103 All R=3pc All R=3pc All R=3pc R=5pc R=1pc R=5pc R=1pc R=5pc R=1pc )102 M ( g o = -1.35 = -1.35 = -1.35 L d / N d101 100 10-2 10-1 100 101 102 10-2 10-1 100 101 102 10-2 10-1 100 101 102 M [M ] M [M ] M [M ] Figure 5.Massfunctionsatdifferentradii,R=1,3,and5pc.Thesolidthicklinereferstothetotalmassfunction(allsinksincluded). In black the Salpeter slope (Γ = -1.35) is indicated as a reference. In all cases the slope of the simulated mass functions is flatter than theSalpeterone.Moreover,theslopesteepenswithradius,especiallyinthefeedbackcases,indicatingahigherconcentrationofmassive starsinthecentre. consideringonlylog(M/M(cid:12))>0.6forcompletenessreason. Bondi accretion on random seeds, leading also to a Γ=1 ForArches,Stolteetal.(2005)detectedachangeintheslope mass function (Zinnecker 1982). In these two theories, the of the mass function at about 6 M(cid:12), hence they fitted the Salpeter slope was obtained by identifying massive stars as massfunctionintherangelog(M/M(cid:12))>0.8.Theresulting rare events that cannot form in the low-mass available gas valuewasmeasuredtobeΓ=−0.86±0.15.Boththeseclus- clumps of the cluster (Oey 2012). tershaveslopesflatterthantheSalpeterslope,whichseems to be in general a distinguishing feature of young starburst clusters. 3.3 Mass segregation The origin of this discrepancy from the Salpeter slope We have already introduced mass segregation in the previ- is probably due to many reasons. On the simulation side, ous section to explain a steepening of the slope of the mass BertelliMottaetal.(2016)showedthatthe simulatedIMF function as a function of radius. We now analyse our sim- can be affected by resolution, with the peak or turn-over ulations with more traditional tools to quantify mass seg- massdependingdirectlyonit.Thehighertheresolution,the regation in star clusters. A star cluster is considered to be lowertheturn-overmass,whichimpliesaprogressivesteep- mass segregated when the massive stars are more centrally eningofthemassfunctionwithincreasingresolution.These concentrated than the lower mass stars. The main question authorsestimatedthatthepeakmassisroughly∼30times relatedwithmasssegregationiswhetherithasaprimordial the minimum Jeans mass, which is our case corresponds to or a dynamical origin. Mass segregation can indeed be the about 4.5 M(cid:12), and agrees quite well with our no-feedback result of two or three body interactions between stars (dy- case. namical)orthedirectoutcomeofthestarformationprocess So, resolution effects are likely a cause of the low value withinthegasclouditself(primordial).Oursimulationsare for Γ in our simulations in the intermediate mass range ideal experiments to try and answer this question. log(M/M(cid:12)) < 1. Moreover, feedback inevitably plays a role Theproblemofcomparingthemassfunctionfordiffer- inallthis,loweringthenumberofstarsintheintermediate- entradiitocharacterisemasssegregationisthatweneedto highmassrange,thereforecontributingtoanevenshallower define unambiguously the centre of the star cluster, which slope. At larger masses, on the other hand, recent theories is adifficult task. Allison et al. (2009) introduced the Mini- ofturbulentcloudcollapseargueforanasymptoticSalpeter mum Spanning Tree (MST) to quantify the degree of mass slope (Hennebelle & Chabrier 2008; Hopkins 2012). This segregation in a star cluster. The MST is defined as the could be consistent with our simulated star clusters, but shortest path connecting all points, which does not contain also with the observed ones, without being very conclusive, anyclosedloop.Weusedtheroutineincludedinthecsgraph reminding us that the story is probably not so simple. module of scipy, which implements the MST according to It is quite possible that the mass function of these ob- Kruskal’s algorithm (Kruskal 1956). served objects is not yet the final one, due to their very We followed Allison et al. (2009) prescription to quan- young age. The final IMF could evolve into a steeper func- tify mass segregation using the MST. We computed the tionbydynamicalandstellarevolution.Anothertheoryfor length, L , of the MST of the N most massive stars massive theIMFisbasedontheself-similarfragmentationofmolec- and compared this to the average length of the MST of N ular clouds into clumps and clumps into stars, leading to random stars in the cluster, or L . L was calcu- random random a power law mass distribution with Γ=1 (Oey 2012). Yet lated by picking 1000 random sets of N stars, in order to another explanation has been designed using competitive have a small error on the dispersion σ. Mass segregation is MNRAS000,1–19(2017)

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