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T4.2.3 - Correlation of gaseous emissions with phenological phases in tomato crops

Event
EUROSENSORS XXXVII
2025-09-07 - 2025-09-10
Wroclaw
Band
Lectures
Chapter
T4.2 - AI for Sensors
Author(s)
M. Tamisari, E. Tavaglione, F. Tralli, B. Fabbri - University of Ferrara, Ferrara (Italy), M. Valt - Bruno Kessler Foundation, Trento (Italy)
Pages
114 - 115
DOI
10.5162/EUROSENSORS2025/T4.2.3
ISBN
978-3-910600-07-2
Price
free

Abstract

Currently, plant phenological phases are determined through models based on historical data series and advanced measurement tools such as satellite imaging, which are not always accurate. This study explores innovatively the relationship between Volatile Organic Compounds emitted by tomato plants and their phenological phases using machine learning algorithms. Supervised models, particularly k-NN, achieved an accuracy of 96.8% in identifying phases. These results highlight the potential ofsensors and AI to accurately monitor crop development.

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