Interpretable AI forecasting for numerical relativity waveforms of quasi-circular, spinning, non-precessing binary black hole mergers
Asad Khan, E. A. Huerta, Huihuo Zheng

TL;DR
This paper introduces an AI model capable of accurately forecasting the late-inspiral, merger, and ringdown phases of binary black hole waveforms, significantly speeding up gravitational wave data analysis.
Contribution
The authors develop a deep learning model trained on extensive numerical relativity waveform data, achieving rapid and precise waveform predictions with high overlap scores.
Findings
Achieved over 99% waveform overlap accuracy.
Trained the model within 3.5 hours using high-performance computing resources.
Demonstrated the model's ability to forecast waveform evolution over a significant time range.
Abstract
We present a deep-learning artificial intelligence model that is capable of learning and forecasting the late-inspiral, merger and ringdown of numerical relativity waveforms that describe quasi-circular, spinning, non-precessing binary black hole mergers. We used the NRHybSur3dq8 surrogate model to produce train, validation and test sets of waveforms that cover the parameter space of binary black hole mergers with mass-ratios and individual spins . These waveforms cover the time range , where marks the merger event, defined as the maximum value of the waveform amplitude. We harnessed the ThetaGPU supercomputer at the Argonne Leadership Computing Facility to train our AI model using a training set of 1.5 million waveforms. We used 16 NVIDIA DGX A100 nodes, each consisting of 8 NVIDIA A100 Tensor…
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