Please use this identifier to cite or link to this item: http://hdl.handle.net/2248/8945
Title: Machine learning─based identification of the solar disk and plages in Kodaikanal solar observatory historical suncharts
Authors: Mishra, Dibya Kirti
Chatterjee, Subhamoy
Jha, Bibhuti K
Raju, Hemapriya
Priyadarshi, Aditya
Hegde, M
Routh, Srinjana
Banerjee, D
Khan, M. Saleem
Keywords: Solar cycle
Solar chromosphere
Plages
Convolutional neural networks
The Sun
Issue Date: Mar-2026
Publisher: American Astronomical Society
Citation: The Astrophysical Journal Supplement Series, Vol. 283, No. 1, 19
Abstract: Kodaikanal Solar Observatory (KoSO) is one of the oldest solar observatories, possessing an archive of multiwavelength solar observations, including white light, Ca II K, and Hα images spanning over a century. In addition to these observations, KoSO has preserved hand-drawn suncharts (1904–2022), on which various solar features such as sunspots, plages, filaments, and prominences are marked on the Stonyhurst grid with distinct color coding. In this study, we present the first comprehensive result that includes the entire dataset from these suncharts using a supervised machine learning (ML) model called “convolutional neural networks” (CNNs), first to identify the solar disks from the charts (1909–2007) and second to identify the plages, spanning nine solar cycles (1916–2007). We train the CNN with the manually identified solar disk and plages. We first detect the solar limb and the north–south line in the suncharts, which enables the extraction of disk center coordinates, radius, and P angle. Following that, we use a CNN similar architecture to achieve accurate image segmentation for the identification of plages. We compare plage areas derived from the suncharts with those obtained from Ca II K fulldisk observations, and find good agreement that demonstrates the potential application of such an ML technique for historical data. The results of this study further demonstrate the potential application of sunchart data to fill the existing data gaps in the KoSO multiwavelength observations and contribute toward constructing a composite series over the last century.
Description: Open Access
Original content from this work may be used under the terms of the Creative Commons Attribution 4.0 licence. Any further distribution of this work must maintain attribution to the author(s) and the title of the work, journal citation and DOI.
URI: http://hdl.handle.net/2248/8945
ISSN: 1538-4365
Appears in Collections:IIAP Publications

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