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Discovery Process for Finding ARM Candidate Targets Using PanStarrs2 and New Atlas Telescopes. Eva Schunova, Robert Jedicke with Peter Veres & Larry Denneau Institute for Astronomy University of Hawaii at Manoa Target NEO 2 Conference July 9, 2013 1 Purpose • ARM candidate target detection capability with 100% NEO dedicated surveys • PS2 survey (2nd Panoramic Survey Telescope and Rapid Response System) • ATLAS survey (Asteroid Terrestrial-impact Last Alert System) • 3 performance configurations assessed for both: (underperformed: -0.5 mag, nominal, overperformed: +0.5 mag) • Located in Hawaii • Both in development stage 2 Issues • Annual discovery rates of NEOs by PS2 and ATLAS • Follow-up with optical telescopes (IRTF) and radar • ULTIMATE QUESTION: What is the total number of available target candidates in the NEO population? • REQUIRES: – Reliable NEO model – Accurate survey simulations 3 NEO model • Greenstreet et al. (2012) • Based on Bottke et al. (2002) - finer resolution in (a, e, i) • SFD of NEOs according to Brown et al. 2002 • Problem with small size NEO models: – Discoveries are subject to huge selection effects – Large non-gravitational effects (YORP, Yarkovsky ) 4 Synthetic ARM candidate targets population • 2.4 x 1011 NEOs generated • 27 < H < 31 • 2m < D < 30m (albedo dependent) • 5 dynamical criteria => Earth-like heliocentric orbits • Survey simulation pre-selection: MOID < Δ(H) • => 7.3 x 106 ARM candidate targets 5 Only 0.003% of model NEOs pass ARM target dynamical & size cuts 6 ATLAS Asteroid Terrestrial-impact Last Alert System • • • • • • • • Fully automatized => cheap System operational in 2015 1-4 telescopes/ 2 sites 40 deg2 field-of-view 80,000 deg2/night Scans most of the visible night sky 4x/night Nominal Vlim=20.0 SELF FOLLOW UP 7 PS2 2nd Panoramic Survey Telescope and Rapid Response System • • • • • • 7 deg2 field-of-view ~ 3,600 deg2/night 1/11th ATLAS coverage Nominal Vlim = 22.0 Detects NEOs 2.5 x further away Visits to the same bore site separated by 3 nights. 8 ATLAS nightly coverage PS2 nightly coverage 9 Survey simulations with MOPS (Moving Object Processing System) Generate NEOs Fulfilling ARM Target Criteria Survey Simulation (ATLAS-N, ATLAS-S, PS2) Implement Weather Losses Implement fillfactor losses Implement trailing losses Determine IRTF and Radar Recovery Availability 10 Total synthetic ARM target discoveries over 2 years with nominal systems 11 Discrepancy between simulations and real data PS1 finds 8x more ARM candidates than predicted! 12 Possible explanations • Imperfect survey simulation • Imperfect NEO model & Size-Frequency distribution • Small NEOs more prone to non-gravitational effects • Unknown dynamical process more efficient in transporting small objects from MB to NEO region • Temporary local NEO density enhancement • (due to tidal disruption, collision, ...) 13 Typical target follow-up window IRTF Arecibo radar window window Little time for characterization after discovery! 14 Typical discoveries of nominal systems • • • • ATLAS PS2 >2 NEOs/month Easier IRTF follow-up (30%) Short window (~ 4 days) All discoveries observable by radar • • • • >1 NEOs/month Difficult for IRTF follow-up!! (10%) Longer window (~12 days) 50% discoveries observable by radar 15 Summary • Observed discrepancy between predicted discovery rates and PS1 data - 8 x more real discoveries! • ATLAS and PS2 surveys will discover dozens of ARM candidates per year • Windows for characterization are typically few days (IRTF) and few weeks (radar) • ATLAS has advantages over PS2 for ARM candidate detection • ATLAS: Vlim=20.5 - up to 70 ARM candidates/year This work was supported by the NASA NEOO grant. 16 17 Fill factor and trailing losses Courtesy: Denneau et al. 2013 18 Total synthetic ARM target discoveries over 2 years with over-performing systems 19 Annual ARM candidate detections for nominal systems Collectively we will find XXX/year. 20