Scientific Reports (Mar 2024)

Physics-assisted machine learning for THz time-domain spectroscopy: sensing leaf wetness

  • Milan Koumans,
  • Daan Meulendijks,
  • Haiko Middeljans,
  • Djero Peeters,
  • Jacob C. Douma,
  • Dook van Mechelen

DOI
https://doi.org/10.1038/s41598-024-57161-4
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 11

Abstract

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Abstract Signal processing techniques are of vital importance to bring THz spectroscopy to a maturity level to reach practical applications. In this work, we illustrate the use of machine learning techniques for THz time-domain spectroscopy assisted by domain knowledge based on light–matter interactions. We aim at the potential agriculture application to determine the amount of free water on plant leaves, so-called leaf wetness. This quantity is important for understanding and predicting plant diseases that need leaf wetness for disease development. The overall transmission of 12,000 distinct water droplet patterns on a plastized leaf was experimentally acquired using THz time-domain spectroscopy. We report on key insights of applying decision trees and convolutional neural networks to the data using physics-motivated choices. Eventually, we discuss the generalizability of these models to determine leaf wetness after testing them on cases with increasing deviations from the training set.