KMT-2021-BLG-0171Lb and KMT-2021-BLG-1689Lb: Two Microlensing Planets in the KMTNet High-cadence Fields with Followup Observations
Hongjing Yang, Weicheng Zang, Andrew Gould, Jennifer C. Yee, Kyu-Ha, Hwang, Grant Christie, Takahiro Sumi, Jiyuan Zhang, Shude Mao, Michael D., Albrow, Sun-Ju Chung, Cheongho Han, Youn Kil Jung, Yoon-Hyun Ryu, In-Gu Shin,, Yossi Shvartzvald, Sang-Mok Cha, Dong-Jin Kim

TL;DR
This paper reports the discovery of two exoplanets through high-magnification microlensing events detected by KMTNet, introduces an automated alert system, and discusses degeneracies in interpreting these events, enhancing future detection and analysis methods.
Contribution
The study presents the HighMagFinder system for real-time detection of high-magnification microlensing events and analyzes degeneracies in planetary interpretations, improving detection efficiency and statistical analysis.
Findings
Discovered two planets in high-magnification microlensing events.
Identified degeneracies in central-resonant caustic solutions.
Proposed a weighting factor to address solution degeneracies.
Abstract
Follow-up observations of high-magnification gravitational microlensing events can fully exploit their intrinsic sensitivity to detect extrasolar planets, especially those with small mass ratios. To make followup more uniform and efficient, we develop a system, HighMagFinder, based on the real-time data from the Korean Microlensing Telescope Network (KMTNet) to automatically alert possible ongoing high-magnification events. We started a new phase of follow-up observations with the help of HighMagFinder in 2021. Here we report the discovery of two planets in high-magnification microlensing events, KMT-2021-BLG-0171 and KMT-2021-BLG-1689, which were identified by the HighMagFinder. We find that both events suffer the ``central-resonant'' caustic degeneracy. The planet-host mass-ratio is or for KMT-2021-BLG-0171, and …
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