What's in Your Transit? Towards Reliably Getting 5× More Science from Exoplanet Transit Data
Abstract
Exoplanetary science heavily relies on transit depth (D) measurements. Yet, as instrumental precision increases, the uncertainty on D appears to increasingly drift from expectations driven solely by photon-noise. Here we characterize this shortfall (the Transit-Depth Precision Problem, TDPP), by defining an amplification factor, A, quantifying the discrepancy between the measured transit-depth uncertainty and the measured baseline scatter on a same time bin size. While in theory A should be 3, we find that it can reach values 10 notably due to correlations between D and the limb-darkening coefficients (LDCs). This means that (1) the performance of transit-based exoplanet studies (e.g., atmospheric studies) can be substantially improved with reliable priors on LDCs and (2) low-fidelity priors on the LDCs can yield substantial biases on D--potentially affecting atmospheric studies due to the wavelength-dependence of such biases. For the same reason, biases may emerge on stellar-density and planet-shape/limb-asymmetry measurements. With current photometric precisions, we recommend using a 3 rd-order polynomial law and a 4 th-order non-linear law, as they provide an optimal compromise between bias and A, while testing the fidelity for each parametrization. While their use combined with existing LDC priors (10-20% uncertainty) currently implies A10, we show that targeted improvements to limb-darkening models can bring A down to 2. Improving stellar models and transit-fitting practices is thus essential to fully exploit transit datasets, and reliably increasing their scientific yield by 5×, thereby enabling the same science with up to 25× fewer transits.
Turn this paper into a full lesson
ArcXiv compiles a staged curriculum from this paper: 8-12 lessons across beginner → advanced, synthesised section guides, visuals, flashcards, a quiz, exercises, and on-demand deep dives per section. Grounded in the abstract, never invented.