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STARE Operations Experience and its Data Quality Control IAC Roi Alonso Hans Deeg Juan A. Belmonte HAO Boulder Tim Brown David Charbonneau

STARE Operations Experience and its Data Quality Control

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STARE Operations Experience and its Data Quality Control. IAC Roi Alonso Hans Deeg Juan A. Belmonte. HAO Boulder Tim Brown David Charbonneau. STARE telescope. St ellar A strophysics and R esearch on E xoplanets. HAO, NASA funding; IAC logistics and personnel. - PowerPoint PPT Presentation

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Page 1: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

IAC

Roi Alonso

Hans Deeg

Juan A. Belmonte

HAO BoulderTim Brown

David Charbonneau

Page 2: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #2

STARE telescope• Stellar Astrophysics and Research on Exoplanets.• HAO, NASA funding; IAC logistics and personnel.• Detection of first planet transit in 1999, during commision at

HAO• Located at Teide Observatory, Tenerife since July 2001• Schmidt optics, 10.1 cm Ø,

f=286mm. • CCD: 2k x 2k Loral, 15m pix• 6.1x6.1 deg2 FOV, 10.8 arcsec/pix • R, V, B manual filters.

Page 3: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #3

Transit Detection Observations

STARE observation strategy:• One (two) field observed all night, typ. declination 30°-40°.• Observation of a field for 2 - 3 months ( 150-400 hrs)• R band exposures of 100 sec, 13 sec readout• typical field: few 1000 stars rms < 1%

Requirements :

•precision F/F better than 0.5%

•observational coverage O(103-4) hrs

•data points every few minutes

•surveying thousands of stars

Page 4: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #4

In collaboration with similar projects

• PSST: Lowell Obsv., Arizona. T. Dunham, G. Mandushev

• SLEUTH: Mt. Palomar, California. D. Charbonneau, F. O’Donovan

Page 5: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #5

Instrument control

• Hardware: 2 PCs: {Dome, Mount},{CCD,guiding}• Optical fiber interfaces computers telescope dome• Control software

– Unified user interface withVisual C++ (Windows98)

– Telescope: Orchestrate Scripting Software (Software Bisque):

– Dome: AutomaDome (Software Bisque):

– CCD: Pixel View (Pixel Vision)

Page 6: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #6DLT, DVD

Operations schemeoperator opens dome, starts scriptAfternoon

Nightfall; if fieldhigh enough

End of night/fieldtoo low

Morning

script starts observations

PC butch (script) PC sundance

Mount+dome CCD+autoguide

script return telesc. to home pos

operator closes dome, saves data (2Gb/night)

Observingperiod

operator watchesweather;

closes if needed

Page 7: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #7

Data reduction schemeraw data saved on DLT, now DVDTeide Obsv

IDL programs: quality control, image processing, photometry, classification, transit search

IAC, La Laguna

PSST Lowell, Sleuth Palomar

Confirmation of events in other’s data.

Combination of data from 3 sites and transit search in combined data

Future

HAO, BoulderCoordination of follow-up obsv.

Page 8: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #8

STARE statusField

 Observing

dateObserving

nights (Teide)Stars with

rms<1%

Observing time (h) (Teide)

Coll. Telesc.

Status

Jul-Oct 01 38 of 91 ~7300 195 1 Reduced

Boo1 Abr-Jul 02 39 of 118 ~1500 238 2 Reduced Teide and

Lowell

Cyg1 Jul-Oct 02 16 of 78 ~7300 67 2 Reduced Teide

Per2 Oct-Nov 02 30 of 58 ~6300 193 2 Reduced Teide

Cnc0 Feb-May 03 16 of 89 ? 127 2 Reduced Reduced Lowell

Her0 May-Jun 03 44 of 54 ~1600 291 3 Reduced All

Lyr0 Jul-Sep 03 ~50 of 68 ? 367 3 Red. Teide Lowell

Cyg0

42 And Sep03-Jan04 56 of 121 ~3000 397 3 Not reduced

27 Lyn Jan-Mar04 29 of 61 ? 103 3 Not reduced

Since March: Technical problems (110V supply, UPS)

Page 9: STARE Operations Experience and its Data Quality Control

Instrumental & atmospheric sources of false alarms

Sources : instrumental:•guiding errors (moving psf over zones with varying flat-field correct.)•temperature/focus variations

Sources : atmospheric:•unrecognized extinction variations (cirrus, dust)•simple high-sigma events in photon noise (star, sky), scintillation

“Transits are rare events in hugh data sets which compete with other rare events to become detected”

False alarm: any event that appears to be a transit, but isn’t

Page 10: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #10

Astron. source of false alarms(Brown 2003)

Confusion from:• grazing eclisping binaries

• diluted eclising binaries (by foreground star)

• diluted eclising binaries (triple sys)

• Planetary transits

We look for:

Page 11: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #12

Data quality control Photometric, moon rise

extinction sky bright.

guiding alignment

Page 12: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #13

Data quality control Cirrus in early night

Page 13: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #14

Data quality control Dusty night

Page 14: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #15

Data quality control guiding unstable, moon setting

Page 15: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #17

Follow-up tecniques for transit candidates

• Careful interpretation of the lightcurve:– non-transit-like shape, search for primary/secondary eclipses– verify that transit is compatible with planet (Seager & Mallén-Ornelas, 2003)

• Multicolor transit photometry (incidentially with higher spatial resolution)– detects many cases of Ecl. binaries.

• Imaging with very high resolution (adapt. optics)– indicates if there are nearby stars, potentially Ecl. Binaries

• Radial velocity measures– low res: may detect Ecl. binaries (false alarm rejection)

– high res: independent verification of planet

Reject astronomical sources of false alarms by a sequence of tests, from simple (light) to sophisticated (resource-intensive) ones:

Page 16: STARE Operations Experience and its Data Quality Control

STARE Operations Experience and its Data Quality Control

Potsdam, July04 #27

Summary and future• Routine transit search operation since 2001

• Operations will continue for at least 3 years

• Well-coordinated collaboration is in place for follow-up observations. Sequence of methods to reject false alarms.

• Some interesting planet candidates which need final verifications.