How many times should we matched-filter gravitational wave data? A performance comparison of the GstLAL online and offline analyses

ORAL

Abstract

Gravitational Wave (GW) search pipelines for compact binary coalescences utilize matched-filtering to identify GW candidates in the strain data. Traditionally, two types of analysis are performed on every stretch of data, a low-latency (online) analysis, and a high-latency (offline) analysis. The online mode is crucial for multi-messenger follow up, whereas the offline mode uses acausal methods to produce more robust results. Matched-filtering represents the vast majority of the computational burden in both analysis modes. We describe a novel method that applies acasual techniques to the data products created by an online analysis to effectively deliver an offline analysis without repeating the process of matched filtering. This method enables a dramatic reduction in the computational cost of an offline analysis. To estimate the effectiveness of our method, we perform an online analysis to which we apply our method, as well as a traditional offline analysis using the GstLAL pipeline over a 40-day stretch of data from the third observing run (O3) of the LVK collaboration. We find that our method is around 90-100% as sensitive as a traditional offline analysis.

*The authors are grateful for computational resources provided by the the LIGO Lab culster at the LIGO Laboratory and supported by PHY-0757058 and PHY−0823459, the Pennsylvania State University's Institute for Computational and Data Sciences gravitational-wave cluster, and supported by OAC2103662, PHY-2308881, PHY-2011865, OAC-2201445, OAC-2018299, and PHY-2207728. The authors acknowledge generous support from the Eberly College of Science, the Department of Physics, the Institute for Gravitation and the Cosmos, the Institute for Computational and Data Sciences, and the Freed Early Career Professorship.

Presenters

  • Prathamesh Joshi

    • Pennsylvania State University

Authors

  • Prathamesh Joshi

    • Pennsylvania State University
  • Wanting Niu

    • Pennsylvania State University