Frontiers in Artificial Intelligence (Aug 2024)

Real-time temperature anomaly detection in vaccine refrigeration systems using deep learning on a resource-constrained microcontroller

  • Mokhtar Harrabi,
  • Abdelaziz Hamdi,
  • Bouraoui Ouni,
  • Jamel Bel Hadj Tahar

DOI
https://doi.org/10.3389/frai.2024.1429602
Journal volume & issue
Vol. 7

Abstract

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Maintaining consistent and accurate temperature is critical for the safe and effective storage of vaccines. Traditional monitoring methods often lack real-time capabilities and may not be sensitive enough to detect subtle anomalies. This paper presents a novel deep learning-based system for real-time temperature fault detection in refrigeration systems used for vaccine storage. Our system utilizes a semi-supervised Convolutional Autoencoder (CAE) model deployed on a resource-constrained ESP32 microcontroller. The CAE is trained on real-world temperature sensor data to capture temporal patterns and reconstruct normal temperature profiles. Deviations from the reconstructed profiles are flagged as potential anomalies, enabling real-time fault detection. Evaluation using real-time data demonstrates an impressive 92% accuracy in identifying temperature faults. The system’s low energy consumption (0.05 watts) and memory usage (1.2 MB) make it suitable for deployment in resource-constrained environments. This work paves the way for improved monitoring and fault detection in refrigeration systems, ultimately contributing to the reliable storage of life-saving vaccines.

Keywords