He Wang PRO
Knowledge increases by sharing but not by saving.
2023年6月27日, 15:00-15:30
量子宇宙理论物理研究中心研讨会
王赫
hewang@ucas.ac.cn
中国科学院大学 · 国际理论物理中心(亚太地区)
Gravitational Wave Detection and AI Technology:
New Methods for Unveiling the Mysteries of the Universe
In 1916, A. Einstein proposed the GR and predicted the existence of GW.
Gravitational waves (GW) are a strong field effect in the GR.
2015: the first experimental detection of GW from the merger of two black holes was achieved.
2017: the first multi-messenger detection of a BNS signal was achieved, marking the beginning of multi-messenger astronomy.
2017: the Nobel Prize in Physics was awarded for the detection of GW.
As of now: more than 90 gravitational wave events have been discovered.
O4, which began on May 24th 2023, is currently in progress.
双星并合系统产生的引力波波源
引力波振幅的测量
地面引力波探测器网络
2017 年诺贝尔物理学奖
—— Bernard F. Schutz
DOI:10.1063/1.1629411
©Floor Broekgaarden (repo)
GWTC-3
GW Data characteristics:
Noise: non-Gaussian and non-stationary
Signal: A low signal-to-noise ratio (SNR) which is typically about 1/100 of the noise amplitude (-60 dB)
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
Matched-filtering Convolutional Neural Network (MFCNN)
PRD 101, 10 (2020) 104003.
GW150914 的实时信号搜寻
The majority of machine learning algorithms used for testing are highly sensitive to non-Gaussian real noise backgrounds, resulting in high false positive rates.
PRD 107, 2 (2023): 023021.
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
Expanding the dimension of the output is to call more information to make decisions in improving AI models.
Ensemble learning leverages statistical approaches to utilize more information for making informed decisions by combining multiple models.
PRD 105, 8 (2022) 083013
PRD 107, 6 (2023) 063029
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
Likelihood
Traditional parameter estimation (PE) techniques rely on Bayesian analysis methods (posteriors + evidence)
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
Nature Physics 18, 1 (2022) 112–17
An example: Posterior probability distribution of the complete 15-dimensional parameters
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
Big Data Mining and Analytics 5, 1 (2021) 53–63.
PRL 127, 24 (2021) 241103.
PRL 130, 17 (2023) 171403.
arXiv:2212.14283
BEFORE
AFTER
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
BEFORE
AFTER
arXiv:2212.14283, DOI: 10.21203/rs.3.rs-2452860/v1
arXiv:2212.14283
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
arXiv:2212.14283
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
Bacon P. et al. arXiv: 2205.13513
arXiv:2212.14283
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
arXiv:2212.14283
Data quality improvement
Credit: Marco Cavaglià
LIGO-Virgo data processing
GW searches
Astrophsical interpretation of GW sources
LIGO-G2300554
PLB 841 (2023) 137904.
arXiv: 2207.07414
PRL 130, 17 (2023) 171402.
GW170817
GW190412
GW190814
Bayes factor (MCMC)
PRD 101, 10 (2020) 104003.
(In preparation)
arXiv:2305.18528
ICML2023
Bayes
AI
Credit: 李宏毅
Text-to-image
Bayes
AI
Credit: 李宏毅
Text-to-image
for _ in range(num_of_audiences):
print('Thank you for your attention! 🙏')
This slide: https://slides.com/iphysresearch/zju_20230626
Smith, Rory. Nature Physics 18, 1 (2022): 9–11
WaveFormer
Transformer: 750x / 2yrs
2016年,AlphaGo 第一版发表在了 Nature 杂志上
2021年,AI预测蛋白质结构登上 Science、Nature 年度技术突破,潜力无穷
2022年,DeepMind团队通过游戏训练AI发现矩阵乘法算法问题
《达摩院2022十大科技趋势》将 AI for Science 列为重要趋势
“人工智能成为科学家的新生产工具,催生科研新范式”
AI for Science:为科学带来了模型与数据双驱动的新的研究范式
AI + 数学、AI + 化学、AI + 医药、AI + 物理、AI + 天文 ...
AlphaGo 围棋机器人
AlphaTensor 发现矩阵算法
AlphaFold 蛋白质结构预测
By He Wang
The detection of gravitational waves has revolutionized our understanding of the universe and has opened new doors to the cosmos. However, the data generated by these detections are often noisy and difficult to analyze. In recent years, the application of AI technology, particularly deep learning, has shown great potential in the field of gravitational wave detection and analysis. In this talk, we will explore the use of AI in gravitational wave detection and discuss how it has enabled us to unveil new mysteries of the universe. We will highlight the challenges and opportunities of this interdisciplinary field and discuss the role of AI in advancing our understanding of the cosmos. The talk will cover topics such as the application of AI in signal processing, gravitational wave denoising, and machine learning for gravitational wave data analysis. We will also discuss future directions and the potential impact of AI on cosmology and astrophysics research.