Recalibrating Gravitational Wave Phenomenological Waveform Model
We investigate the possibility of improving the accuracy of the phenomenological waveform model, IMRPhenomD, by jointly optimizing all the calibration coefficients at once, given a set of numerical relativity (NR) waveforms. When IMRPhenomD was first calibrated to NR waveforms, different parts (i.e....
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Zusammenfassung: | We investigate the possibility of improving the accuracy of the
phenomenological waveform model, IMRPhenomD, by jointly optimizing all the
calibration coefficients at once, given a set of numerical relativity (NR)
waveforms. When IMRPhenomD was first calibrated to NR waveforms, different
parts (i.e., the inspiral, merger, and ringdown) of the waveform were
calibrated separately. Using ripple, a library of waveform models compatible
with automatic differentiation, we can, for the first time, perform
gradient-based optimization on all the waveform coefficients at the same time.
This joint optimization process allows us to capture previously ignored
correlations between separate parts of the waveform. We found that after
recalibration, the median mismatch between the model and NR waveforms decreases
by 50%. We further explore how different regions of the source parameter space
respond to the optimization procedure. We find that the degree of improvement
correlates with the spins of the source. This work shows a promising avenue to
help understand and treat systematic error in waveform models. |
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DOI: | 10.48550/arxiv.2306.17245 |