Monday, November 15 |
07:30 - 09:00 |
Breakfast (Restaurant at your assigned hotel) |
08:45 - 09:00 |
Introduction and welcome (Conference Room San Felipe and Zoom) |
09:00 - 09:50 |
Leïla Haegel: Probes of new physics during gravitational waves propagation - Leila Haegel ↓ The direct detection of gravitational waves opened an unprecedented channel to probe fundamental physics. Proposed extensions of our current theories predict a dispersion of the gravitational waves during their propagation, distorting the signals observed by ground-based interferometers compared to their predictions from general relativity. In this talk, I present several analysis probing different alternative theories of gravitation. Using the multimessenger events consisting of gravitational waves and their electromagnetic counterpart, extra dimensions and scalar-tensor theories are constrained from the comparison of the luminosity distance inferred independently from both signals. Relying only on gravitational wave signals, a large class of proposed theories (e.g. massive gravity) predict a frequency-dependent dispersion of the gravitational waves breaking local CPT and/or Lorentz symmetry. Constraints on the corresponding effective field theories coefficients are obtained from the analysis of 31 events from the second LIGO-Virgo detections catalog. (Conference Room San Felipe and Zoom) |
09:50 - 10:40 |
Michael Coughlin: Inference as a service for gravitational-wave astronomy ↓ We present a novel paradigm for the deployment of computing infrastructure for the low-latency analyses of gravitational wave (GW) data. Here, we specifically discuss two deep-learning algorithms, 'DeepClean' and 'BBHNet', which are used for GW data denoising and compact binary source identification respectively. Using “replayed” streams of the GW data of LIGO Hanford and Livingston from their third observing run, we demonstrate the subtraction of stationary and non-stationary noise sources followed by identification of candidates for the astrophysical transient detections at low latency. Depending on the computing platform used, we show that it is possible to achieve these at latencies of ~ a few hundreds of milliseconds to a few seconds. Real-time delivery of gravitational-wave alerts is important for enabling rapid multi-messenger follow-up, especially to capture short-lived electromagnetic counterparts. Additionally, our implementation offers seamless incorporation of hardware accelerators and enables the use of as-a-service computing, which would be capable of meeting the future needs of gravitational-wave data analysis. (Conference Room San Felipe and Zoom) |
10:40 - 11:10 |
Coffee Break (Conference Room San Felipe) |
11:10 - 12:00 |
Massimiliano Razzano: Deep learning methods to investigate noise features in gravitational wave detectors ↓ Gravitational waves have opened a new window on the Universe and paved the way to multimessenger astronomy. Advanced LIGO and Advanced Virgo interferometers are probing an increasingly larger volume of space, discovering more and more signals produced by the coalescence of compact binary systems. Characterizing these detectors and their noise is crucial to optimize the sensitivity. In particular, glitches are transient noise events impacting the data quality, and their detection and classification is very important to improve the performance of the interferometers. Deep learning techniques are a promising approach to recognize and classify glitches and to study noise in general. We will present how machine learning can help in investigating the time-frequency evolution of glitches and thus contribute to the low-latency characterization of gravitational wave detectors. (Conference Room San Felipe and Zoom) |
12:00 - 12:50 |
Adam Coogan: Observing and characterizing the dark matter environments of black hole binaries with gravitational waves ↓ Gravitational wave measurements provide a new opportunity to determine whether dark matter is truly a cold, collisionless particle. Intermediate mass-ratio inspirals (IMRIs) embedded in dark matter halos are particularly promising targets. These IMRIs can compress their dark halos to extreme densities as they form, leading to distinctive gravitational wave signals. In this talk I will show that future interferometers could observe and characterize these "dark dress" systems over large swaths of their parameter space. After explaining their waveform modeling, I will map out which dark dresses could be detected, distinguished from astrophysical IMRIs and accurately measured. (Conference Room San Felipe and Zoom) |
12:50 - 13:00 |
Group Photo (Hotel Hacienda Los Laureles) |
13:00 - 15:00 |
Lunch (Restaurant Hotel Hacienda Los Laureles) |
15:00 - 15:45 |
Lorena Magana Zertuche: High precision ringdown fitting ↓ Understanding the aftermath, or ringdown, of a binary black hole merger is crucial in understanding astrophysical black holes. As gravitational-wave detectors increase their sensitivity, they will be able to detect more ringdown frequencies that correspond to higher order multipole modes. However, most current models focus on fitting just for the dominant mode. In this talk, I will present recent work on multimode ringdown modeling and the importance of being in the correct frame of reference when performing ringdown fits. Also, I will briefly mention an example of how machine learning is applied to ringdown modeling. With these tools ready, we will be able to take full advantage of the gravitational-wave data when third generation detectors begin their observing runs. (Conference Room San Felipe and Zoom) |
15:45 - 16:30 |
Ryan Quitzow-James: Estimating glitch contaminated gravitational-wave signals using artificial neural networks with NNETFIX ↓ Instrumental and environmental transient noise bursts in gravitational-wave detectors, or glitches, may impair astrophysical observations by adversely affecting the sky localization and the parameter estimation of gravitational-wave signals. Denoising of detector data is especially relevant during low-latency operations because electromagnetic follow-up of candidate detections requires accurate, rapid sky localization and inference of astrophysical sources. NNETFIX is a machine learning-based algorithm designed to remove glitches detected in coincidence with transient gravitational-wave signals. NNETFIX uses artificial neural networks to estimate the portion of the data lost due to the presence of the glitch, which allows the recalculation of the sky localization of the astrophysical signal. The sky localization of the denoised signal may be significantly more accurate than the sky localization obtained from the original data or by excising the portion of the data impacted by the glitch. We test NNETFIX in simulated scenarios of binary black hole coalescence signals and discuss the potential for its use in future low-latency LIGO-Virgo-KAGRA searches. (Conference Room San Felipe and Zoom) |
16:30 - 17:00 |
Coffee Break (Conference Room San Felipe) |
17:00 - 18:00 |
Round table/discussion session (Conference Room San Felipe and Zoom) |
18:00 - 19:00 |
Free time/small group discussions (Hotel Hacienda Los Laureles) |
19:00 - 21:00 |
Dinner (Restaurant Hotel Hacienda Los Laureles) |