KMT-2021-BLG-2609Lb and KMT-2022-BLG-0303Lb: Microlensing planets identified through signals produced by major-image perturbations
Cheongho Han, Michael D. Albrow, Chung-Uk Lee, Sun-Ju Chung, Andrew, Gould, Kyu-Ha Hwang, Youn Kil Jung, Chung-Uk Lee, Yoon-Hyun Ryu, Yossi, Shvartzvald, In-Gu Shin, Jennifer C. Yee, Hongjing Yang, Weicheng Zang,, Sang-Mok Cha, Doeon Kim, Dong-Jin Kim, Seung-Lee Kim

TL;DR
This paper analyzes microlensing data from the KMTNet survey to identify and characterize two planetary systems, revealing degeneracies in interpretation and providing estimates of host star and planet masses.
Contribution
It presents the first detailed analysis of planetary signals produced by major-image perturbations in microlensing events, highlighting degeneracies and deriving physical parameters.
Findings
Identification of two planetary systems via microlensing anomalies.
Detection of degeneracies affecting interpretation of lensing signals.
Estimation of host star and planet masses using Bayesian analysis.
Abstract
We investigate microlensing data collected by the Korea Microlensing Telescope Network (KMTNet) survey. Our investigation reveals that the light curves of two lensing events, KMT-2021-BLG-2609 and KMT-2022-BLG-0303, exhibit a similar anomaly, in which short-term positive deviations appear on the sides of the low-magnification lensing light curves. To unravel the nature of these anomalies, we meticulously analyze each of the lensing events. Our investigations reveal that these anomalies stem from a shared channel, wherein the source passed near the planetary caustic induced by a planet with projected separations from the host star exceeding the Einstein radius. We find that interpreting the anomaly of KMT-2021-BLG-2609 is complicated by the "inner--outer" degeneracy, whereas for KMT-2022-BLG-0303, there is no such issue despite similar lens-system configurations. In addition to this…
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