Understanding and analysing time-correlated stochastic signals in pulsar timing

Although it is widely understood that pulsar timing observations generally contain time-correlated stochastic signals (TCSSs; red timing noise is of this type), most data analysis techniques that have been developed make an assumption that the stochastic uncertainties in the data are uncorrelated, i...

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Veröffentlicht in:Monthly notices of the Royal Astronomical Society 2013-01, Vol.428 (2), p.1147-1159
Hauptverfasser: van Haasteren, Rutger, Levin, Yuri
Format: Artikel
Sprache:eng
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Zusammenfassung:Although it is widely understood that pulsar timing observations generally contain time-correlated stochastic signals (TCSSs; red timing noise is of this type), most data analysis techniques that have been developed make an assumption that the stochastic uncertainties in the data are uncorrelated, i.e. 'white'. Recent work has pointed out that this can introduce severe bias in the determination of timing-model parameters and that better analysis methods should be used. This paper presents a detailed investigation of timing-model fitting in the presence of TCSSs and gives closed expressions for the post-fit signals in the data. This results in a Bayesian technique to obtain timing-model parameter estimates in the presence of TCSSs, as well as computationally more efficient expressions of their marginalized posterior distribution. A new method to analyse hundreds of mock data set realizations simultaneously without significant computational overhead is presented, as well as a statistically rigorous method to check the internal consistency of the results. As a by-product of the analysis, closed expressions of the rms introduced by a stochastic background of gravitational waves in timing residuals are obtained, valid for regularly sampled data. Using T as the length of the data set and h c(1 yr− 1) as the characteristic strain, this is .
ISSN:0035-8711
1365-2966
DOI:10.1093/mnras/sts097