Sensors (Apr 2024)

Incremental Clustering for Predictive Maintenance in Cryogenics for Radio Astronomy

  • Alessandro Cabras,
  • Pierluigi Ortu,
  • Tonino Pisanu,
  • Paolo Maxia,
  • Roberto Caocci

DOI
https://doi.org/10.3390/s24072278
Journal volume & issue
Vol. 24, no. 7
p. 2278

Abstract

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In a cooling system for radio astronomy receivers, maintaining cold heads and compressors is essential for consistent performance. This project focuses on monitoring the power currents of the cold head’s motor to address potential mechanical deterioration, which could jeopardize the overall functionality of the system. Using Hall effect sensors, a microcontroller-based electronic board, and artificial intelligence, the system detects and predicts anomalies. The model operates using an unsupervised approach based on incremental clustering. Since potential fault scenarios can be multiple and often challenging to simulate or identify during training, the system is initially trained using known operational categories. Over time, the system adapts and evolves by incorporating new data, which can be assigned to existing categories or, in the case of new anomalies, form new categories. This incremental approach enables the system to enhance its performance over the years, adapting to new anomaly scenarios and ensuring precise and reliable monitoring of the cold head’s health.

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