Physics Monthly -- Radio-Astronomy and ML

Europe/Berlin
Zoom (Online)

Zoom

Online

Description

Exchange of Topics, Use-Cases and Projects at the Intersection of Physics and Machine Learning

Registration
Participants
Participants
  • Andrei Kazantsev
  • Anno Knierim
  • Jens Buß
  • Matthias Jakobs
  • Mirko Bunse
  • Sascha Mücke
  • Zorah Lähner
    • 14:00 14:05
      Welcome and Introduction 5m
      Speaker: Dr Jens Buß (Lamarr Institute, TU Dortmund University)
    • 14:05 14:35
      Deep Learning for Real-time Classification of Astronomical Radio Signals: Current Status 30m

      Abstract:
      In this work, we investigate the use of DM-time images (dispersion measurement) as input for convolutional neural networks (CNNs) to classify pulsar and transient radio signals. Our previous work highlighted significant limitations with spectrogram-based models, particularly low sensitivity in detecting faint pulses amidst noise. The decision was made to use DM-time images, which capture detailed dispersion characteristics, offering enhanced detection capabilities for weak signals. We developed minimalist CNN architectures, ranging from one to three convolutional layers, optimized for real-time processing with reduced computational demands. The models were trained and tested using datasets derived from Crab Pulsar observations, with promising results demonstrating robust pulse detection even under challenging signal-to-noise conditions. The sensitivity of the models was evaluated against both real and synthetic data, showing high accuracy for pulses with SNR greater than 7. Furthermore, performance tests on a high-performance cluster revealed the feasibility of using these models in real-time applications, with scalable improvements in execution time as CPU resources were increased. This work provides a foundation for efficient and scalable real-time pulse classification in radio astronomy.

      Speaker: Andrei Kazantsev
    • 14:35 14:55
      Discussion 20m

      Open discussion on the presented topic:

      • Feedback to the presented research?
      • Identification of potentials for imporvements
      • Exploration of collaboration potentials and joint research