Inference on white dwarf binary systems using the first round Mock LISA Data Challenges data sets
Abstract
We report on the analysis of selected single source data sets from the first round of the Mock LISA Data Challenges (MLDC) for white dwarf binaries. We implemented an end-to-end pipeline consisting of a grid-based coherent pre-processing unit for signal detection, and an automatic Markov Chain Monte Carlo post-processing unit for signal evaluation. We demonstrate that signal detection with our coherent approach is secure and accurate, and is increased in accuracy and supplemented with additional information on the signal parameters by our Markov Chain Monte Carlo approach. We also demonstrate that the Markov Chain Monte Carlo routine is additionally able to determine accurately the noise level in the frequency window of interest.
Cite
@article{arxiv.0704.0048,
title = {Inference on white dwarf binary systems using the first round Mock LISA Data Challenges data sets},
author = {Alexander Stroeer and John Veitch and Christian Roever and Ed Bloomer and James Clark and Nelson Christensen and Martin Hendry and Chris Messenger and Renate Meyer and Matthew Pitkin and Jennifer Toher and Richard Umstaetter and Alberto Vecchio and Graham Woan},
journal= {arXiv preprint arXiv:0704.0048},
year = {2008}
}
Comments
GWDAW-11 proceeding, submitted to CQG, 10 pages, 3 figures, 1 table; revised values in table