Discovery of 37 new pulsars through GPU-accelerated reprocessing of archival data of the Parkes Multibeam Pulsar Survey
R. Sengar, M. Bailes, V. Balakrishnan, M. C. i Bernadich, M. Burgay,, E. D. Barr, C. M. L. Flynn, R. Shannon, S. Stevenson, J. Wongphechauxsorn

TL;DR
This paper reports the discovery of 37 new pulsars from archival data using a GPU-accelerated FFT search pipeline, demonstrating the effectiveness of reprocessing old data with improved methods to find previously missed pulsars.
Contribution
The study introduces a new GPU-accelerated search pipeline optimized for narrow-duty cycle pulsars, revealing many candidates and confirming 37 new pulsars from archival data.
Findings
37 new pulsars discovered in archival data
Enhanced detection of narrow-duty cycle pulsars
Identification of unique pulsar behaviors such as nulling and eclipsing
Abstract
We present the discovery of 37 pulsars from 20 years old archival data of the Parkes Multibeam Pulsar Survey using a new FFT-based search pipeline optimised for discovering narrow-duty cycle pulsars. When developing our pulsar search pipeline, we noticed that the signal-to-noise ratios of folded and optimised pulsars often exceeded that achieved in the spectral domain by a factor of two or greater, in particular for narrow duty cycle ones. Based on simulations, we verified that this is a feature of search codes that sum harmonics incoherently and found that many promising pulsar candidates are revealed when hundreds of candidates per beam with even with modest spectral signal-to-noise ratios of S/N5--6 in higher-harmonic folds (up to 32 harmonics) are folded. Of these candidates, 37 were confirmed as new pulsars and a further 37 would have been new discoveries if our search…
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Taxonomy
TopicsAlgorithms and Data Compression
