Deep Learning for real-time gravitational wave detection and parameter estimation: Results with Advanced LIGO data

被引:266
作者
George, Daniel [1 ,2 ]
Huerta, E. A. [2 ]
机构
[1] Univ Illinois, Dept Astron, Urbana, IL 61801 USA
[2] Univ Illinois, NCSA, Urbana, IL 61801 USA
基金
美国国家科学基金会;
关键词
Deep Learning; Convolutional neural networks; Gravitational waves; LIGO; Time-series signal processing; Classification and regression; BURSTS;
D O I
10.1016/j.physletb.2017.12.053
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
The recent Nobel-prize-winning detections of gravitational waves from merging black holes and the subsequent detection of the collision of two neutron stars in coincidence with electromagnetic observations have inaugurated a new era of multimessenger astrophysics. To enhance the scope of this emergent field of science, we pioneered the use of deep learning with convolutional neural networks, that take time-series inputs, for rapid detection and characterization of gravitational wave signals. This approach, Deep Filtering, was initially demonstrated using simulated LIGO noise. In this article, we present the extension of Deep Filteringusing real data from LIGO, for both detection and parameter estimation of gravitational waves from binary black hole mergers using continuous data streams from multiple LIGO detectors. We demonstrate for the first time that machine learning can detect and estimate the true parameters of real events observed by LIGO. Our results show that Deep Filtering achieves similar sensitivities and lower errors compared to matched- filtering while being far more computationally efficient and more resilient to glitches, allowing real-time processing of weak time-series signals in non-stationary non-Gaussian noise with minimal resources, and also enables the detection of new classes of gravitational wave sources that may go unnoticed with existing detection algorithms. This unified framework for data analysis is ideally suited to enable coincident detection campaigns of gravitational waves and their multimessenger counterparts in real-time. (C) 2018 The Authors. Published by Elsevier B.V.
引用
收藏
页码:64 / 70
页数:7
相关论文
共 67 条
[1]   Advanced LIGO [J].
Aasi, J. ;
Abbott, B. P. ;
Abbott, R. ;
Abbott, T. ;
Abernathy, M. R. ;
Ackley, K. ;
Adams, C. ;
Adams, T. ;
Addesso, P. ;
Adhikari, R. X. ;
Adya, V. ;
Affeldt, C. ;
Aggarwal, N. ;
Aguiar, O. D. ;
Ain, A. ;
Ajith, P. ;
Alemic, A. ;
Allen, B. ;
Amariutei, D. ;
Anderson, S. B. ;
Anderson, W. G. ;
Arai, K. ;
Araya, M. C. ;
Arceneaux, C. ;
Areeda, J. S. ;
Ashton, G. ;
Ast, S. ;
Aston, S. M. ;
Aufmuth, P. ;
Aulbert, C. ;
Aylott, B. E. ;
Babak, S. ;
Baker, P. T. ;
Ballmer, S. W. ;
Barayoga, J. C. ;
Barbet, M. ;
Barclay, S. ;
Barish, B. C. ;
Barker, D. ;
Barr, B. ;
Barsotti, L. ;
Bartlett, J. ;
Barton, M. A. ;
Bartos, I. ;
Bassiri, R. ;
Batch, J. C. ;
Baune, C. ;
Behnke, B. ;
Bell, A. S. ;
Bell, C. .
CLASSICAL AND QUANTUM GRAVITY, 2015, 32 (07)
[2]  
Abbott BP, 2017, PHYS REV LETT, V118, DOI [10.1103/PhysRevLett.118.121102, 10.1103/PhysRevLett.118.221101]
[3]   Binary Black Hole Mergers in the First Advanced LIGO Observing Run [J].
Abbott, B. P. ;
Abbott, R. ;
Abbott, T. D. ;
Abernathy, M. R. ;
Acernese, F. ;
Ackley, K. ;
Adams, C. ;
Adams, T. ;
Addesso, P. ;
Adhikari, R. X. ;
Adya, V. B. ;
Affeldt, C. ;
Agathos, M. ;
Agatsuma, K. ;
Aggarwal, N. ;
Aguiar, O. D. ;
Aiello, L. ;
Ain, A. ;
Ajith, P. ;
Allen, B. ;
Allocca, A. ;
Altin, P. A. ;
Anderson, S. B. ;
Anderson, W. G. ;
Arai, K. ;
Araya, M. C. ;
Arceneaux, C. C. ;
Areeda, J. S. ;
Arnaud, N. ;
Arun, K. G. ;
Ascenzi, S. ;
Ashton, G. ;
Ast, M. ;
Aston, S. M. ;
Astone, P. ;
Aufmuth, P. ;
Aulbert, C. ;
Babak, S. ;
Bacon, P. ;
Bader, M. K. M. ;
Baker, P. T. ;
Baldaccini, F. ;
Ballardin, G. ;
Ballmer, S. W. ;
Barayoga, J. C. ;
Barclay, S. E. ;
Barish, B. C. ;
Barker, D. ;
Barone, F. ;
Barr, B. .
PHYSICAL REVIEW X, 2016, 6 (04)
[4]   Directly comparing GW150914 with numerical solutions of Einstein's equations for binary black hole coalescence [J].
Abbott, B. P. ;
Abbott, R. ;
Abbott, T. D. ;
Abernathy, M. R. ;
Acernese, F. ;
Ackley, K. ;
Adams, C. ;
Adams, T. ;
Addesso, P. ;
Adhikari, R. X. ;
Adya, V. B. ;
Affeldt, C. ;
Agathos, M. ;
Agatsuma, K. ;
Aggarwal, N. ;
Aguiar, O. D. ;
Aiello, L. ;
Ain, A. ;
Ajith, P. ;
Allen, B. ;
Allocca, A. ;
Altin, P. A. ;
Anderson, S. B. ;
Anderson, W. G. ;
Arai, K. ;
Araya, M. C. ;
Arceneaux, C. C. ;
Areeda, J. S. ;
Arnaud, N. ;
Arun, K. G. ;
Ascenzi, S. ;
Ashton, G. ;
Ast, M. ;
Aston, S. M. ;
Astone, P. ;
Aufmuth, P. ;
Aulbert, C. ;
Babak, S. ;
Bacon, P. ;
Bader, M. K. M. ;
Baker, P. T. ;
Baldaccini, F. ;
Ballardin, G. ;
Ballmer, S. W. ;
Barayoga, J. C. ;
Barclay, S. E. ;
Barish, B. C. ;
Barker, D. ;
Barone, F. ;
Barr, B. .
PHYSICAL REVIEW D, 2016, 94 (06)
[5]  
Abbott B.P., 2017, ARXIV170909660
[6]  
Abbott B. P., 2016, Phys. Rev. Lett, V116, DOI DOI 10.1103/PHYSREVLETT.116.061102
[7]  
Adam J, 2016, PHYS REV LETT, V116, DOI [10.1103/PhysRevLett.116.241103, 10.1103/PhysRevLett.116.222302]
[8]  
[Anonymous], 2017, Gen Relativ Quantum Cosmol Univ, DOI DOI 10.1103/PHYSREVD.97.101501
[9]  
[Anonymous], ARXIV171001422
[10]  
[Anonymous], ARXIV161104596