Data-driven core collapse supernova multilateration with first neutrino events
Farrukh Azfar, Jeff Tseng, Marta Colomer Molla, Kate Scholberg, Alec Habig, Segev BenZvi, Melih Kara, James Kneller, Jost Migenda, Dan Milisavljevic, Evan O'Connor

TL;DR
This paper presents a data-driven multilateration method using first neutrino events to quickly estimate the direction of a galactic supernova, improving early localization for follow-up observations.
Contribution
It introduces a novel, model-independent approach leveraging first neutrino detections and detector size differences to estimate supernova locations with uncertainty quantification.
Findings
Method successfully applied to real detector pairs and supernova distances.
Probability skymaps provide confidence intervals for supernova directions.
Expected localization area is a few thousand square degrees.
Abstract
A Galactic core-collapse supernova (CCSN) is likely to be observed in neutrino detectors around the world minutes to hours before the electromagnetic radiation arrives. The SNEWS2.0 network of neutrino and dark matter detectors aims to use the relative arrival times of the neutrinos at the different experiments to point back to the supernova so as to facilitate follow-up observation. One of the simplest methods to estimate the CCSN direction is to use the first neutrino events detected through the inverse beta decay (IBD) process, . We will consider neutrino detectors sensitive to IBD interactions with low backgrounds. The difference in signal arrival times between a large and a small detector will be biased, however, with the first event at the smaller detector, on average, arriving later than that at the larger detector. This bias can be mitigated…
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