Published October 20, 2022
| Version v1
Journal article
Open
AI and extreme scale computing to learn and infer the physics of higher order gravitational wave modes of quasi-circular, spinning, non-precessing black hole mergers
Creators
- 1. Argonne National Laboratory
- 2. University of Chicago
- 3. International Centre for Theoretical Sciences
Description
We use artificial intelligence (AI) to learn and infer the physics of higher order gravitational wave modes of quasi-circular, spinning, non precessing binary black hole mergers. We trained AI models using 14 million waveforms, produced with the surrogate modelNRHybSur3dq8, that include modes up to l ≤ 4 and (5, 5), except for (4, 0) and (4, 1), that describe binaries with mass-ratios q ≤ 8, individual spins sz{1,2} ∈ [−0.8, 0.8], and inclination angle θ ∈ [0, π]. Our probabilistic AI surrogates can accurately constrain the mass-ratio, individual spins, effective spin, and inclination angle of numerical relativity waveforms that describe such signal manifold. We compared the predictions of our AI models with Gaussian process regression, random forest, k-nearest neighbors, and linear regression, and with traditional Bayesian inference methods through thePyCBC Inferencetoolkit, finding that AI outperforms all these approaches in terms of accuracy, and are between three to four orders of magnitude faster than traditional Bayesian inference methods. Our AI surrogates were trained within 3.4 hours using distributed training on 1,536 NVIDIA V100 GPUs in the Summit supercomputer.
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Additional details
Identifiers
- DOI
- 10.1016/j.physletb.2022.137505
- Other
- oai:uchicago.tind.io:5293
Funding
- U.S. National Science Foundation
- OAC-1931561
- U.S. National Science Foundation
- OAC-1934757
- Department of Atomic Energy, Government of India
- RTI4001
- International Centre for Theoretical Sciences
- Ashok and Gita Vaish Early Career Faculty Fellowship
- SCOAP3