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Lawrence Livermore National Laboratory Preliminary Results from the SuperMACHO Survey Arti Garg Institute of Geophysics and Planetary Physics LLNL-PRES-411078 This work work was performed under the auspices of the U.S. Department of Energy by Lawrence Livermore National Laboratory under Contract DE-AC52-07NA27344. Outline • • • • The Galactic dark matter problem Using microlensing to detect Galactic dark matter The SuperMACHO survey Candidate selection – Follow-up observations – Light curve analysis • Simulations – Detection Efficiency – Contamination Rate • SuperMACHO candidates Galactic Dark Matter Halo: What’s it made of? • MOND? • Dark Matter? – Non-baryonic – Baryonic Visible Galaxy Disk Dark Matter Halo NGC 4216 in a simulated halo from: John Kormendy (http://chandra.as.utexas.edu/~kormendy/dm-halo-pic.html) Dark Matter on Many Scales Observational evidence for Dark Matter on many scales…not a priori necessary that the solution is the same on all scales The Entire Universe: Large Scale Structure Galaxy Clusters Baryons in Galaxies •Gas? - Hot gas emits - Cold gas collapses •MAssive Compact Halo Objects (MACHOs)? Galaxy Halos 2dF Galaxy Redshirt Survey Abel 2218 (NASA HST) Jason Ware Microlensing to Detect MACHOs • In 1986, B. Paczynski suggested using gravitational microlensing toward the Magellanic Clouds to detect MACHOs Milky Way Halo Us Large Magellanic Cloud Anglo-Australian Observatory/ Royal Observatory Edinburgh Light Path MW illustration: Mark Garlick (Space-art) Earth Image: Apollo 17 MACHOs Microlensing Primer Image 1 Source S Observer O b DOL Lens L with Mass M DOS DLS Microlensing Primer Image 1 Source S Observer O b DOL Dimensionless Einstein angle Lens L with Mass M DLS DOS E D GM LS 4 2 D D c OS OL Geometrical factor Microlensing: • Source and image are unresolved - Source appears amplified • Relative motion between source and lens - Temporal effect Lens Mass Microlensing Light Curve Source impact parameter = umin Lens time of maximum Flux Lens Trajectory amplification (umin, θE ) characteristic time (θE and vrel) source brightness Time Microlensing Survey Observables Ensemble of events has a uniform distribution of umin Fraction of sources within rE of a lens at any time Optical meas Depth - tˆi 1 E 4 i E (tˆi ) E total exposure time of survey E (tˆi ) efficiency for detecting an event with tˆi (Mollerach & Roulet 2002, Alcock et al. 2000) Spatial Distribution “Screen-” vs. “Self-” lensing • MACHO survey (Alcock et al 2000, Bennett 2005) – 13-17 microlensing event candidates – MACHO fraction ~16% of Halo • EROS-2 (Tisserand 2008) – Only 1 event observed, 39 expected – Upper limit: MACHO fraction <8% • OGLE (Wyrzykowski et al. 2008) – Upper limit: MACHO fraction <8% • POINT-AGAPE survey (Calchi Novati 2005) M31 Halo MW Halo Results - 6 microlensing event candidates MACHO fraction ~20% (MWG and M31) • MEGA survey (de Jong et al. 2006) - 4 microlensing event candidates Favors self-lensing MACHO fraction <30% MACHO fraction of Halo MW Halo (toward Clouds) Previous Microlensing Surveys log Mlens (M) EROS-2, Tisserand et al. 2007 SuperMACHO Project LLNL/IGPP: A. Garg, K.H. Cook, S.Nikolaev, Harvard: A. Rest, C.W. Stubbs (P.I.), P. Challis, G. Narayan, UPitt: W.M. Wood-Vasey, NOAO: R.C. Smith, K. Olsen, A. Zenteno, JHU: M.E. Huber, UW: A. Becker, A. Miceli, FNAL: G. Miknaitis, McMaster: D.L. Welch, Catolica: L. Morelli, A. Clocchiati, D. Minniti, OSU: J.L. Prieto, Texas A&M: N.B. Suntzeff • CTIO 4m • Mosaic Imager: big FOV • Monitor 68 LMC fields – 23 deg2 and ~50 million sources • 150 half-nights • 5 years (2001-2006) – Blocks of ~3 months/year • Near real-time detection • Single filter: custom VR • Difference imaging SuperMACHO fields Primary field set Secondary field set Difference Imaging Reference Image flux(ttempl) Detection Image flux(timage) Difference Image flux(timage) – flux(ttempl) RR Lyrae from MACHO (black) and SuperMACHO (red) Outline • • • • The Galactic dark matter problem Using microlensing to detect Galactic dark matter The SuperMACHO survey Candidate selection – Follow-up observations – Light curve analysis • Simulations – Detection Efficiency – Contamination Rate • SuperMACHO candidates Determining Optical Depth • Candidate Selection – Establish a set of criteria for classifying an event as microlensing • Detection Efficiency – Likelihood of including a real microlensing event with a given set of parameters (t0, msource, t, umin) Sample Light Curves Challenges to Candidate Selection • High number of events – ~150,000 light curves identified as variable • High rate of contamination – Up to 1455 background type Ia supernovae during survey • Gaps in sampling and low S/N – No bright time (near full moon) observations – Majority of stars near detection limit Microlensing Candidate Selection Intensity (flux) • Microlensing events have a predictable light curve Time Microlensing Candidate Selection Intensity (flux) • But many other things have a similar light curve (e.g. type Ia supernovae) Time Microlensing Candidate Selection • And if your nights off from the telescope and the weather conspire in the wrong way, discrimination is difficult Use follow-up observations to identify contamination and develop better selection criteria. Use simulations to reduce and quantify contamination. Classifying events using follow-up Intensity Intensity • Spectroscopic Observations Wavelength Wavelength Source: http://homepages.wmich.edu/~korista/sun-images/solar_spec.jpg Spectrum of a supernova Spectrum of the Sun, a typical star (How microlensing might look) SM-2004-LMC-821 VR~21 Spectral classification: Broad Absorption Line AGN Classifying events using follow-up • Spectroscopy is an excellent way to classify an event, but... – It is time-consuming and can’t be done for faint events • Obtaining a spectrum for every interesting event is not feasible Classifying events using follow-up • Multi-band observations - “poor man’s spectroscopy” Classifying events using follow-up • Multi-band observations - “poor man’s spectroscopy” • The ratio of intensity in different “filters” gives a crude measure of the event’s wavelength spectrum – The ratios for “vanilla” stars (i.e. microlensing) differ from supernovae • This method is less precise but can be used for faint events Stars have characteristic ratios of filter intensities Classifying events using light curves • Why do we need it? – Only have follow-up for 2 out of 5 years – Follow-up is incomplete and sometimes inconclusive • What is it? – Software analysis tools that calculate ~50 “statistics” describing the light curve • • • • Unique? Significant and Well-sampled? Microlensing-like? Unlike other things? Unique? -Frequent and periodic variability Variable Star -Year-to-Year change in baseline Active Galactic Nucleus (AGN) Significant and well-sampled? -Need more data after peak Microlensing-Like? -This is a Supernova Unlike other phenomena? -Fit well by microlensing and supernova models Passes all Criteria Outline • • • • The Galactic dark matter problem Using microlensing to detect Galactic dark matter The SuperMACHO survey Candidate selection – Follow-up observations – Light curve analysis • Simulations – Detection Efficiency – Contamination Rate • SuperMACHO candidates Models of Light Curves Simulations Fail Simulated Light Curves Selection Criteria Pass Contamination Rate Detection Efficiency Simulating Errors • Multiple sources of error – Random • Poisson error – Systematic • What we do to the image – Image differencing » Image convolution » Imperfect subtraction • How we measure the flux – Photometry (DoPhot) Simulating Errors • Multiple sources of error – Random • Poisson error – analytical model – Systematic • What we do to the image – Image differencing » Image convolution – empirical correction » Imperfect subtraction • How we measure the flux – Photometry (DoPhot) – empirical model Difference Images Simulating Imperfect Subtractions: Add events to a grid of light curves • Obtain light curves for a grid of positions across FOV • Add simulated event to light curve Garg et al. 2008 Simulations Simulations Simulations of of Microlensing type Ia Supernovae events Simulating Imperfect Subtractions • Faster and requires less storage than adding fake stars to each image – Also, do not need to model the PSF – Simulations of >107 ML and SN Ia light curves • Error Propagation – Reproduces systematic effects from reduction pipeline – Preserves correlations in observing conditions • Straightforward to simulate other types of light curves Microlensing Candidates Garg et al., in prep Preliminary Event Rates Inner fields (yellow) sparser Outer fields (green) Number of events and distribution consistent with expected type Ia SN contamination plus ~20% MACHO fraction, but some caveats: Rest et al., in prep. -Did we underestimate the SN rate? -Other forms of contamination (e.g. other types of SNe, CV’s, ???)? Still a Work in Progress!! The SuperMACHO survey was undertaken as part of the NOAO Survey Program. Armin Rest, 02/13/08, UCSD