Vela Pulsar: Single Pulses Analysis with Machine Learning Techniques
Carlos O. Lousto, Ryan Missel, Harsh Prajapati, Valentina Sosa, Fiscella, Federico G. L\'opez Armengol, Prashnna Kumar Gyawali, Linwei Wang,, Nathan Cahill, Luciano Combi, Santiago del Palacio, Jorge A. Combi, Guillermo, Gancio, Federico Garc\'ia, Eduardo M. Guti\'errez

TL;DR
This study applies machine learning techniques to analyze individual pulses of the Vela pulsar, revealing correlations between pulse properties and supporting models of emission regions at different magnetospheric heights.
Contribution
It introduces the use of density-based clustering and self-organizing maps with autoencoder reconstruction to classify and analyze pulsar pulses, providing new insights into pulsar emission mechanisms.
Findings
Correlation between pulse amplitude and arrival time.
Identification of mini-giant pulse clusters.
Robust pulse classification across multiple observations.
Abstract
We study individual pulses of Vela (PSR\ B0833-45\,/\,J0835-4510) from daily observations of over three hours (around 120,000 pulses per observation), performed simultaneously with the two radio telescopes at the Argentine Institute of Radioastronomy. We select 4 days of observations in January-March 2021 and study their statistical properties with machine learning techniques. We first use density based DBSCAN clustering techniques, associating pulses mainly by amplitudes, and find a correlation between higher amplitudes and earlier arrival times. We also find a weaker (polarization dependent) correlation with the mean width of the pulses. We identify clusters of the so-called mini-giant pulses, with the average pulse amplitude. We then perform an independent study, with Self-Organizing Maps (SOM) clustering techniques. We use Variational AutoEncoder (VAE) reconstruction…
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