Transit Timing Observations from Kepler: I. Statistical Analysis of the First Four Months
Eric B. Ford, Jason F. Rowe, Daniel C. Fabrycky, Josh Carter, Matthew, J. Holman, Jack J. Lissauer, Darin Ragozzine, Jason H. Steffen, Natalie M., Batalha, William J. Borucki, Steve Bryson, Douglas A. Caldwell, Thomas N., Gautier III, Jon M. Jenkins, David G. Koch, Jie Li

TL;DR
This paper analyzes Kepler transit timing data to identify TTV signals, revealing that at least 12% of candidates show evidence of TTVs, which can help confirm and characterize multi-planet systems and their dynamics.
Contribution
It provides the first statistical analysis of TTVs in Kepler data, estimating the fraction of candidates with TTVs and discussing implications for planet confirmation and system dynamics.
Findings
At least 12% of suitable candidates show TTV evidence.
TTV detection fraction does not vary with number of transiting planets.
Extended observations could confirm ~12 additional multi-planet systems.
Abstract
The architectures of multiple planet systems can provide valuable constraints on models of planet formation, including orbital migration, and excitation of orbital eccentricities and inclinations. NASA's Kepler mission has identified 1235 transiting planet candidates (Borcuki et al 2011). The method of transit timing variations (TTVs) has already confirmed 7 planets in two planetary systems (Holman et al. 2010; Lissauer et al. 2011a). We perform a transit timing analysis of the Kepler planet candidates. We find that at least ~12% of planet candidates currently suitable for TTV analysis show evidence suggestive of TTVs, representing at least ~65 TTV candidates. In all cases, the time span of observations must increase for TTVs to provide strong constraints on planet masses and/or orbits, as expected based on n-body integrations of multiple transiting planet candidate systems (assuming…
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