Kilonova evolution -- the rapid emergence of spectral features

(2023)

Authors:

Albert Sneppen, Darach Watson, James H Gillanders, Kasper E Heintz

Exploring the Impact of the Ejecta Velocity Profile on the Evolution of Kilonova: Diversity of the Kilonova Lightcurves

The Astrophysical Journal American Astronomical Society 958:2 (2023) 121

Authors:

Donggeun Tak, Z Lucas Uhm, James H Gillanders

Filling the radio transients gap

Astronomy & Geophysics Oxford University Press (OUP) 64:6 (2023) 6.24-6.30

Authors:

R Fender, A Horesh, P Charles, P Woudt, J Miller-Jones, J Bright

SN 2023emq: A Flash-ionized Ibn Supernova with Possible C iii Emission

The Astrophysical Journal Letters American Astronomical Society 959:1 (2023) l10

Authors:

M Pursiainen, G Leloudas, S Schulze, P Charalampopoulos, CR Angus, JP Anderson, F Bauer, T-W Chen, L Galbany, M Gromadzki, CP Gutiérrez, C Inserra, J Lyman, TE Müller-Bravo, M Nicholl, SJ Smartt, L Tartaglia, P Wiseman, DR Young

AutoSourceID-Classifier

Astronomy & Astrophysics EDP Sciences 680 (2023) A109-A109

Authors:

F Stoppa, S Bhattacharyya, R Ruiz de Austri, P Vreeswijk, S Caron, G Zaharijas, S Bloemen, G Principe, D Malyshev, V Vodeb, PJ Groot, E Cator, G Nelemans

Abstract:

Aims.Traditional star-galaxy classification techniques often rely on feature estimation from catalogs, a process susceptible to introducing inaccuracies, thereby potentially jeopardizing the classification’s reliability. Certain galaxies, especially those not manifesting as extended sources, can be misclassified when their shape parameters and flux solely drive the inference. We aim to create a robust and accurate classification network for identifying stars and galaxies directly from astronomical images.Methods.The AutoSourceID-Classifier (ASID-C) algorithm developed for this work uses 32x32 pixel single filter band source cutouts generated by the previously developed AutoSourceID-Light (ASID-L) code. By leveraging convolutional neural networks (CNN) and additional information about the source position within the full-field image, ASID-C aims to accurately classify all stars and galaxies within a survey. Subsequently, we employed a modified Platt scaling calibration for the output of the CNN, ensuring that the derived probabilities were effectively calibrated, delivering precise and reliable results.Results.We show that ASID-C, trained on MeerLICHT telescope images and using the Dark Energy Camera Legacy Survey (DECaLS) morphological classification, is a robust classifier and outperforms similar codes such as SourceExtractor. To facilitate a rigorous comparison, we also trained an eXtreme Gradient Boosting (XGBoost) model on tabular features extracted by SourceExtractor. While this XGBoost model approaches ASID-C in performance metrics, it does not offer the computational efficiency and reduced error propagation inherent in ASID-C’s direct image-based classification approach. ASID-C excels in low signal-to-noise ratio and crowded scenarios, potentially aiding in transient host identification and advancing deep-sky astronomy.