English

Predicting dust temperature from molecular line data using machine learning

Astrophysics of Galaxies 2026-01-12 v2 Solar and Stellar Astrophysics

Abstract

We conducted experiments with machine learning techniques to construct dust temperature maps from the CO isotopologue molecular line data in the Orion A molecular cloud. In the classical astrophysical methodology, multi-band continuum data are required to derive the dust temperature. The present study aims to investigate the capability and limitations of machine learning techniques to derive dust temperatures in regions without multi-band dust continuum data. We investigated how the number of pixels used for training influences prediction accuracy, and how the dust temperatures sampled in the training area influence prediction accuracy. We found that \sim5\% of the total number of pixels in the observational region is sufficient for training to obtain accurate predictions. Furthermore, a dust temperature sample within the training area should cover the whole temperature range and have a similar sample distribution to that of the entire observing region for an accurate prediction. The 12^{12}CO / 13^{13}CO ratio is often found to be the most important feature in predicting the dust temperature. As the 12^{12}CO / 13^{13}CO ratio is a tracer of PDR, the machine learning technique could connect the dust temperatures to the PDRs. We also found that the condition of thermal gas-dust coupling is not required for accurate prediction of the dust temperature from the molecular line data, and that machine learning is capable of capturing information more than classical astrophysical concepts.

Keywords

Cite

@article{arxiv.2601.03680,
  title  = {Predicting dust temperature from molecular line data using machine learning},
  author = {Tenta Dougome and Yoshito Shimajiri and Kazuya Saigo and Sanemichi Takahashi and Miyu Kido and Shu Ishibashi and Shigehisa Takakuwa},
  journal= {arXiv preprint arXiv:2601.03680},
  year   = {2026}
}

Comments

20 pages, 16 figures, 4 tables, submitted

R2 v1 2026-07-01T08:53:53.583Z