Predicting the Risk of Verticillium Wilt in Olive Orchards Using Fuzzy Logic

Author:

López-Escudero Francisco Javier1,Romero Joaquín1ORCID,Bocanegra-Caro Rocío1,Santos-Rufo Antonio12ORCID

Affiliation:

1. Excellence Unit ‘María de Maeztu’ 2020-23, Department of Agronomy, Campus de Rabanales, University of Cordoba, 14071 Cordoba, Spain

2. Department of Agroforestry Sciences, ETSI University of Huelva, 21007 Huelva, Spain

Abstract

Developing models to understand disease dynamics and predict the risk of disease outbreaks to facilitate decision making is an integral component of plant disease management. However, these models have not yet been developed for one of the most damaging diseases in Mediterranean olive-growing areas (verticillium wilt (VW), caused by the fungus Verticillium dahliae Kleb.), although there are parameters (e.g., level of V. dahliae inoculum in the soil, level of susceptibility of the olive cultivar, isothermality, coefficient of variation of seasonal precipitation, etc.) that have previously been correlated with the severity of the disease. Using the data from previous VW studies conducted in the Guadalquivir Valley of Andalusia (one of the most damaged areas worldwide), in this work, a set of fuzzy logic (FL) models is developed with the aforementioned disease and climatic parameters, and the results are compared with machine learning (ML) models, of known effectiveness, to predict the risk levels of VW appearance in an olive orchard. Under these conditions, both groups of models were less effective than those previously studied with simpler models or models used under controlled conditions. However, the accuracy achieved with the most efficient FL model (60%; classification system based on fuzzy rules using the Ishibuchi method with a weighting factor) was somewhat greater than the efficiency achieved with the most efficient ML model (59.0%; decision tree classifier), in addition to being more appropriate (from a practical point of view) for the incorporation into a decision support system by allowing the risk of appearance of each observation to be known by providing rules for each of the combinations of the different parameters with similar precision. Therefore, in this study, we propose the FL methodology as suitable to act as an expert system for the future creation of a decision support system for VW in olives.

Funder

Seresco S.L. Company

Spanish Centre for Industrial Technological Development

Publisher

MDPI AG

Subject

Plant Science,Agronomy and Crop Science,Food Science

Reference52 articles.

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2. Reliable Detection of Unevenly Distributed Verticillium dahliae in Diseased Olive Trees;Keykhasaber;Plant Pathol.,2017

3. Montes-Osuna, N., and Mercado-Blanco, J. (2020). Verticillium Wilt of Olive and Its Control: What Did We Learn during the Last Decade?. Plants, 9.

4. Verticillium Wilt, a Major Threat to Olive Production: Current Status and Future Prospects for Its Management;Cirulli;Plant Dis.,2012

5. MAPA (2023, March 18). Encuesta Sobre Superficies y Rendimientos de Cultivos. Available online: https://www.mapa.gob.es/es/estadistica/temas/estadisticas-agrarias/agricultura/esyrce/.

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