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Published July 20, 2017 | public
Journal Article

An architecture for efficient gravitational wave parameter estimation with multimodal linear surrogate models

Abstract

The recent direct observation of gravitational waves has further emphasized the desire for fast, low-cost, and accurate methods to infer the parameters of gravitational wave sources. Due to expense in waveform generation and data handling, the cost of evaluating the likelihood function limits the computational performance of these calculations. Building on recently developed surrogate models and a novel parameter estimation pipeline, we show how to quickly generate the likelihood function as an analytic, closed-form expression. Using a straightforward variant of a production-scale parameter estimation code, we demonstrate our method using surrogate models of effective-one-body and numerical relativity waveforms. Our study is the first time these models have been used for parameter estimation and one of the first ever parameter estimation calculations with multi-modal numerical relativity waveforms, which include all ℓ ⩽ 4 modes. Our grid-free method enables rapid parameter estimation for any waveform with a suitable reduced-order model. The methods described in this paper may also find use in other data analysis studies, such as vetting coincident events or the computation of the coalescing-compact-binary detection statistic.

Additional Information

© 2017 IOP Publishing Ltd. Received 5 January 2017; Accepted 1 June 2017; Accepted Manuscript online 1 June 2017; Published 27 June 2017. We acknowledge helpful discussions with Chad Galley and Rory Smith, Chad Galley for significant coding effort on the gwsurrogate project, and both anonymous reviewers for numerous helpful suggestions. R O'Shaughnessy was supported by NSF PHY-1505629 and PHY 1607520. S Field was partially supported by the NSF under award nos. TCAN AST-1333129 and PHY-1606654, and by the Sherman Fairchild Foundation. The group gratefully acknowledges Caltech and AEI-Hannover for computational resources.

Additional details

Created:
October 3, 2023
Modified:
October 24, 2023