The Fast and the Frame-Dragging: Efficient waveforms for asymmetric-mass eccentric equatorial inspirals into rapidly-spinning black holes
Christian E. A. Chapman-Bird, Lorenzo Speri, Zachary Nasipak, Ollie Burke, Michael L. Katz, Alessandro Santini, Shubham Kejriwal, Philip Lynch, Josh Mathews, Hassan Khalvati, Jonathan E. Thompson, Soichiro Isoyama, Scott A. Hughes, Niels Warburton, Alvin J. K. Chua, Maxime Pigou

TL;DR
This paper introduces an efficient waveform model for eccentric inspirals into spinning black holes, enabling rapid and accurate gravitational wave analysis for future space-based detectors like LISA.
Contribution
The authors extend the FEW framework to model eccentric equatorial inspirals into highly spinning black holes, supporting longer waveforms with high accuracy and computational speed.
Findings
Model achieves mismatches of ~10^{-5} with error-free waveforms.
Kludge models can significantly misestimate SNRs and biases in parameter estimation.
LISA can detect such signals up to redshift 3 for EMRIs and 15 for IMRIs.
Abstract
Observations of gravitational-wave signals emitted by compact binary inspirals provide unique insights into their properties, but their analysis requires accurate and efficient waveform models. Intermediate- and extreme-mass-ratio inspirals (I/EMRIs), with mass ratios , are promising sources for future detectors such as the Laser Interferometer Space Antenna (LISA). Modelling waveforms for these asymmetric-mass binaries is challenging, entailing the tracking of many harmonic modes over thousands to millions of cycles. The FastEMRIWaveforms (FEW) modelling framework addresses this need, leveraging precomputation of mode data and interpolation to rapidly compute adiabatic waveforms for eccentric inspirals into zero-spin black holes. In this work, we extend FEW to model eccentric equatorial inspirals into black holes with spin magnitudes . Our model supports…
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