Detecting stress caused by nitrogen deficit using deep learning techniques applied on plant electrophysiological data.

Journal: Scientific reports
PMID:

Abstract

Plant electrophysiology carries a strong potential for assessing the health of a plant. Current literature for the classification of plant electrophysiology generally comprises classical methods based on signal features that portray a simplification of the raw data and introduce a high computational cost. The Deep Learning (DL) techniques automatically learn the classification targets from the input data, overcoming the need for precalculated features. However, they are scarcely explored for identifying plant stress on electrophysiological recordings. This study applies DL techniques to the raw electrophysiological data from 16 tomato plants growing in typical production conditions to detect the presence of stress caused by a nitrogen deficiency. The proposed approach predicts the stressed state with an accuracy of around 88%, which could be increased to over 96% using a combination of the obtained prediction confidences. It outperforms the current state-of-the-art with over 8% higher accuracy and a potential for a direct application in production conditions. Moreover, the proposed approach demonstrates the ability to detect the presence of stress at its early stage. Overall, the presented findings suggest new means to automatize and improve agricultural practices with the aim of sustainability.

Authors

  • Daniel González I Juclà
    School of Engineering and Management Vaud, HES-SO University of Applied Sciences and Arts Western Switzerland, 1401, Yverdon-les-Bains, Switzerland.
  • Elena Najdenovska
    University of Applied Sciences and Arts of Western Switzerland (HES-SO), Haute Ecole d'Ingénierie et de Gestion du Canton de Vaud (HEIG-VD), Route de Cheseaux 1, CH-1401, Yverdon-les-Bains, Switzerland.
  • Fabien Dutoit
    University of Applied Sciences and Arts of Western Switzerland (HES-SO), Haute Ecole d'Ingénierie et de Gestion du Canton de Vaud (HEIG-VD), Route de Cheseaux 1, CH-1401, Yverdon-les-Bains, Switzerland.
  • Laura Elena Raileanu
    University of Applied Sciences and Arts of Western Switzerland (HES-SO), Haute Ecole d'Ingénierie et de Gestion du Canton de Vaud (HEIG-VD), Route de Cheseaux 1, CH-1401, Yverdon-les-Bains, Switzerland.