Advanced Forecasting Modeling to Early Predict Powdery Mildew First Appearance in Different Vines Cultivars

Author:

Valori Roberto1,Costa Corrado2ORCID,Figorilli Simone2ORCID,Ortenzi Luciano23ORCID,Manganiello Rossella2ORCID,Ciccoritti Roberto4ORCID,Cecchini Francesca5ORCID,Morassut Massimo5,Bevilacqua Noemi5,Colatosti Giorgio6,Pica Giovanni6,Cedroni Daniele6,Antonucci Francesca2ORCID

Affiliation:

1. STAPHYT, Contract Research Organization (CRO) in the Fields of Agrosciences and Regulatory Affairs, Main Facility Italy, Via della Meccanica 28, 04011 Aprilia, Italy

2. Consiglio per la Ricerca in Agricoltura e L’analisi Dell’economia Agraria (CREA), Centro di Ricerca Ingegneria e Trasformazioni Agroalimentari, Via della Pascolare 16, 00015 Rome, Italy

3. Department of Agriculture and Forest Sciences (DAFNE), Tuscia University, Via S. Camillo De Lellis, s.n.c., 01100 Viterbo, Italy

4. Consiglio per la Ricerca in Agricoltura e L’analisi Dell’economia Agraria (CREA), Centro di Ricerca Olivicoltura, Frutticoltura e Agrumicoltura, Via di Fioranello 52, 00134 Rome, Italy

5. Consiglio per la Ricerca in Agricoltura e L’analisi Dell’economia Agraria (CREA), Centro di Ricerca Viticoltura ed Enologia, Via Cantina Sperimentale 1, 00049 Rome, Italy

6. Agenzia Regionale per lo Sviluppo e l’Innovazione dell’Agricoltura del Lazio (ARSIAL), Via Rodolfo Lanciani 38, 00162 Rome, Italy

Abstract

Eurasian grapevine is a widely cultivated horticultural plant worldwide, but it is more susceptible to powdery mildew. In recent years, the high cost and negative environmental impact of calendar-applied sulfur fungicides are leading research to find alternative remedies. In this study, the early prediction (three days) of the first appearance of powdery mildew infection, on two different Italian grapevine cultivars, was detected through a partial least squares discriminant analysis (PLSDA). The treatment indications of the “PLSDA” models (treatments according to the predictive model) were compared with those of the “Standard” (treatments according to the established agricultural practice of the area). This allowed the early containment of the disease, preventing its subsequent propagation. The model was built based on weather-climate data and phytopathological information collected on the “Untreated” control cultivar to monitor the natural spread of the disease (three years of training and two of tests). For both the cultivars and the two test years (2021 and 2022), the “PLSDA” models early predicted the first appearance of fungal disease, reducing the treatment number (about four) with respect to “Standard”. In addition, analyses of key fruit quality parameters were conducted to evaluate the effectiveness of treatment reduction.

Funder

Italian Ministry of Agriculture, Food and Forestry Policies

Publisher

MDPI AG

Subject

Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction

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