Utilize este identificador para referenciar este registo: http://hdl.handle.net/10362/165723
Título: Can Grapevine Leaf Water Potential Be Modelled from Physiological and Meteorological Variables? A Machine Learning Approach
Autor: Damásio, Miguel
Barbosa, Miguel
Deus, João
Fernandes, Eduardo
Leitão, André
Albino, Luís
Fonseca, Filipe
Silvestre, José
Palavras-chave: modelling
precision irrigation
predawn leaf water potential
Vitis vinifera
water status indicators
Ecology, Evolution, Behavior and Systematics
Ecology
Plant Science
SDG 13 - Climate Action
Data: Dez-2023
Resumo: Climate change is affecting global viticulture, increasing heatwaves and drought. Precision irrigation, supported by robust water status indicators (WSIs), is inevitable in most of the Mediterranean basin. One of the most reliable WSIs is the leaf water potential ((Formula presented.)), which is determined via an intrusive and time-consuming method. The aim of this work is to discern the most effective variables that are correlated with plants’ water status and identify the variables that better predict (Formula presented.). Five grapevine varieties grown in the Alentejo region (Portugal) were selected and subjected to three irrigation treatments, starting in 2018: full irrigation (FI), deficit irrigation (DI), and no irrigation (NI). Plant monitoring was performed in 2023. Measurements included stomatal conductance ((Formula presented.)), predawn water potential (Formula presented.), stem water potential ((Formula presented.)), thermal imaging, and meteorological data. The WSIs, namely (Formula presented.) and (Formula presented.), responded differently according to the irrigation treatment. (Formula presented.) measured at mid-morning (MM) and mid-day (MD) proved unable to discern between treatments. MM measurements presented the best correlations between WSIs. (Formula presented.) showed the best correlations between the other WSIs, and consequently the best predictive capability to estimate (Formula presented.). Machine learning regression models were trained on meteorological, thermal, and (Formula presented.) data to predict (Formula presented.), with ensemble models showing a great performance (ExtraTrees: (Formula presented.), (Formula presented.) ; Gradient Boosting: (Formula presented.) ; (Formula presented.)).
Descrição: Funding Information: This research work was developed in the context of the project AI4RealAg—Artificial Intelligence and Data Science solutions for the implementation and democratisation of digital agriculture—which was funded by both the Operacional Competitividade e Internacionalização program (POCI-01-0247-FEDER-069670) and the Operacional Regional de Lisboa 2020 program (LISBOA-01-0247-FEDER-069670). This project aims to help the agricultural sector transition into the new digital era through the adoption of artificial intelligence methods—in particular, techniques of data science. This project was formed by a consortium of three entities: Promotor: SISCOG, a world-leading technological company in the development of AI applications in the transportation sector, with more than 140 highly experienced technical professionals; Co-Promotor: INIAV, a Portuguese national institute which has domain expertise on agriculture, experimental farms, equipment, and necessary laboratories for data validation; Co-Promotor: BEYOND VISION, a technological company which specialises in the production of drones, that has vast experience in the area of image processing and fusion (in both the software and hardware ends), being capable of integrating data from multiple sensors. Publisher Copyright: © 2023 by the authors.
Peer review: yes
URI: http://hdl.handle.net/10362/165723
DOI: https://doi.org/10.3390/plants12244142
ISSN: 2223-7747
Aparece nas colecções:Home collection (ITQB)

Ficheiros deste registo:
Ficheiro Descrição TamanhoFormato 
Can_Grapevine_Leaf_Water_Potential_Be_Modelled_from_Physiological_and.pdf2,72 MBAdobe PDFVer/Abrir


FacebookTwitterDeliciousLinkedInDiggGoogle BookmarksMySpace
Formato BibTex MendeleyEndnote 

Todos os registos no repositório estão protegidos por leis de copyright, com todos os direitos reservados.