Advanced Modeling for Exoplanet Detection and Characterization
Krishna Chamarthy

TL;DR
This paper presents a machine learning-enhanced approach to analyze star light curves from the Kepler dataset for efficient exoplanet detection and characterization, estimating key planetary parameters from transit data.
Contribution
It introduces a novel combination of established light curve analysis methods with machine learning classification to improve exoplanet detection and parameter estimation efficiency.
Findings
Successful identification of exoplanet candidates using machine learning.
Accurate estimation of planetary parameters like orbital period and radius.
Enhanced speed in analyzing large astronomical datasets.
Abstract
Research into light curves from stars (temporal variation of brightness) has completely changed how exoplanets are discovered or characterised. This study including star light curves from the Kepler dataset as a way to discover exoplanets (planetary transits) and derive some estimate of their physical characteristics by the light curve and machine learning methods. The dataset consists of measured flux (recordings) for many individual stars and we will examine the light curve of each star and look for periodic dips in brightness due to an astronomical body making a transit. We will apply variables derived from an established method for deriving measurements from light curve data to derive key parameters related to the planet we observed during the transit, such as distance to the host star, orbital period, radius. The orbital period will typically be measured based on the time between…
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