1 to 10 of 205,154 Results
May 5, 2025
Kazantsev, Andrei; Karuppusamy, Ramesh, 2025, "Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar", https://doi.org/10.17617/3.HQYC8O, Edmond, V1
Robust realtime identification of dispersed radio astronomical signals that last much less than a second is challenging. Here we explore the utility of machine learning techniques to identify such signals and use data taken on the Crab pulsar using the Effelsberg 100m Radio Teles... |
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Plain Text - 2.0 KB -
MD5: c9e5a026a375996def26e79cf1cd026c
|
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Unknown - 3.1 GB -
MD5: 3cf053e6bc46911eada8d19bcb591bf5
This file contains radio observations of the Crab pulsar (PSR B0531+21) in SIGPROC's filterbank format, recorded with the Effelsberg radio telescope. The data represents rapidly sampled radio spectra spanning the 1210-1530 MHz frequency range. The file contains a minimal metadata... |
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Unknown - 7.3 MB -
MD5: 558f7f3005fedc747fc43db226b95ab6
Numpy array containing labels for the DM-time training dataset. Each label identifies a sample as either a true pulse or an artefact (e.g., broadband RFI or just noise). |
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Unknown - 14.5 GB -
MD5: 20075c6fe8cce8fb86e5535d1ac6084a
Full-resolution DM-time training dataset (256×256) derived from Crab Pulsar observations. |
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Unknown - 3.6 GB -
MD5: 32bad569b51a032250f7882aa0a75d13
DM-time training dataset downsampled to 128×128 resolution. |
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Unknown - 232.4 MB -
MD5: a34392cf601f0768506dee1b21eeb6f8
DM-time training dataset downsampled to 32×32 resolution. |
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Unknown - 929.6 MB -
MD5: 051da3b28302da65eed0f4a1a8b97b58
DM-time training dataset downsampled to 64×64 resolution. |
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Unknown - 494.0 MB -
MD5: a6153f73969376cc87c92ed47558e3ee
Singularity image includes TransientX configured to work with a ringbuffer. |
May 5, 2025 -
Realtime identification of Dispersed Radio signals using ML - A Case Study on the Crab Pulsar
Unknown - 2.7 GB -
MD5: c31dfc0ca3582d31bc09c060ec32f704
The Singularity image includes the necessary Python libraries for the ML pipeline (TensorFlow/Keras, Matplotlib, NumPy, scikit-learn), as well as the psrdada library for working with a ringbuffer. |