The background of gravitational waves (GW) has long been studied and remains one of the most exciting aspects in the observation and analysis of gravitational radiation. The paper focuses on the search for the background of gravitational waves using deep neural networks. An astrophysical background due to the presence of many binary black hole coalescences was simulated for Advanced LIGO O3 sensitivity and the Einstein Telescope (ET) design sensitivity. The detection pipeline targets signal data out of the noisy detector background. Its architecture comprises of simulated whitened data as input to three classes of deep neural networks algorithms: a 1D and a 2D convolutional neural network (CNN) and a Long Short Term Memory (LSTM) network. I...
Since 2015 Advanced LIGO and Virgo have detected 93 gravitational wave transients produced by compac...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
The background of gravitational waves (GW) has long been studied and remains one of the most excitin...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
Multi-messenger Astrophysics is an emerging multidisciplinary field that demands fast data analysis....
Many potential sources of gravitational waves still await for detection. Among them, particular atte...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
Since 2015 Advanced LIGO and Virgo have detected 93 gravitational wave transients produced by compac...
Since 2015 Advanced LIGO and Virgo have detected 93 gravitational wave transients produced by compac...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
The background of gravitational waves (GW) has long been studied and remains one of the most excitin...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
International audienceThe background of gravitational waves (GW) has long been studied and remains o...
Multi-messenger Astrophysics is an emerging multidisciplinary field that demands fast data analysis....
Many potential sources of gravitational waves still await for detection. Among them, particular atte...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
The low-latency characterization of detector noise is a crucial step in the detection of gravitation...
Since 2015 Advanced LIGO and Virgo have detected 93 gravitational wave transients produced by compac...
Since 2015 Advanced LIGO and Virgo have detected 93 gravitational wave transients produced by compac...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...
We report on the construction of a deep convolutional neural network that can reproduce the sensitiv...