Applied Sciences (Jul 2024)

A Machine Learning Approach for the Classification of Refrigerant Gases

  • Nikolaos Argirusis,
  • John Konstantaras,
  • Christos Argirusis,
  • Nikos Dimokas,
  • Sotirios Thanopoulos,
  • Petros Karvelis

DOI
https://doi.org/10.3390/app14146230
Journal volume & issue
Vol. 14, no. 14
p. 6230

Abstract

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Combining an Internet of Things-driven approach with machine learning algorithms holds great promise in discerning pure gases across various applications. Interconnecting gas sensors within a network allows for continuous monitoring and real-time environmental analysis, producing valuable data for machine learning models. Utilizing supervised learning algorithms, like random forests, enables the creation of accurate classification models that can effectively distinguish between different pure gases based on their distinct features, such as spectral signatures or sensor responses. This groundbreaking integration of the Internet of Things and Machine Learning fosters the development of robust, automated gas detection systems, ensuring high accuracy and minimal delay in recognizing pure gases. Consequently, it opens avenues for enhanced safety, efficiency, and environmental sustainability in numerous industrial and commercial scenarios.

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