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Serbian Astronomical Journal

A PHYSICS-INSPIRED FRAMEWORK FOR AGN CLASSIFICATION IN TIME-DOMAIN SURVEYS

S. J. Shamsi.

Special issues No. 2,
Pages: 79-80,
https://doi.org/10.69646/15scslsa50

XV Serbian Conference on Spectral Line Shapes in Astrophysics
Published by: Astronomical Observatory Belgrade
Published: 2025

Abstract
The classification of active galactic nuclei (AGNs) in large-scale optical time-domain surveys is challenged by irregular sampling and diverse variability behavior. Traditional methods often focus on direct time-series statistics and/or spectral features, overlooking the dynamical structure of lightcurves. We propose a novel deep learning pipeline that employs physically inspired representations of variability: the first derivative, characterizing the rate of flux variation, and the second derivative, describing the temporal acceleration of variability. Using high-quality light curves from a highly imbalanced dataset of ∼ 40,000 AGNs from the Zwicky Transient Facility (ZTF) Data Release 6 (DR6), we construct 2D maps of these variability derivatives—encoding both smooth modulations and rapid transitions in observed magnitudes. These dynamic feature maps are used as input to a ResNet-based convolutional neural network (CNN) trained to classify AGN sources as core-dominated Type-1 AGNs (Q ∼ 20,000), Type-1 AGNs with X-ray emission (QX ∼ 4,000), and Type-1 AGNs with radio emission (QR ∼ 2,000). The pilot results from this master’s thesis show that this dual-derivative approach improves classification accuracy of AGN subclasses, providing a scalable, physically motivated basis for light curve classification in current (ZTF) and upcoming Vera C. Rubin Observatory Legacy Survey of Space and Time.
XV Serbian Conference on Spectral Line Shapes in Astrophysics