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Precision Agriculture Digital Technologies for Sustainable Fungal Disease Management of Ornamental Plants

期刊

SUSTAINABILITY
卷 13, 期 7, 页码 -

出版社

MDPI
DOI: 10.3390/su13073707

关键词

agronomic practices; fungal risk models; fluorescence sensors; fungicides; hyperspectral; multispectral; thermal imaging sensors; ornamentals; molecular biology; spectroscopy

资金

  1. Italian Ministry of Agriculture, Food and Forestry Policies, sub-project 'Tecnologie digitali integrate per il rafforzamento sostenibile di produzioni e trasformazioni agroalimentari (AgroFiliere)', AgriDigit programme [DM 36503.7305.2018]

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Ornamental plant production is a significant sector of the horticultural industry globally, but fungal infections can cause serious economic losses. Developing new sustainable strategies to control pathogens is necessary to reduce the use of pesticides. Early and accurate detection of symptoms, through digital-based detection and available tools, is essential for effective disease management.
Ornamental plant production constitutes an important sector of the horticultural industry worldwide and fungal infections, that dramatically affect the aesthetic quality of plants, can cause serious economic and crop losses. The need to reduce the use of pesticides for controlling fungal outbreaks requires the development of new sustainable strategies for pathogen control. In particular, early and accurate large-scale detection of occurring symptoms is critical to face the ambitious challenge of an effective, energy-saving, and precise disease management. Here, the new trends in digital-based detection and available tools to treat fungal infections are presented in comparison with conventional practices. Recent advances in molecular biology tools, spectroscopic and imaging technologies and fungal risk models based on microclimate trends are examined. The revised spectroscopic and imaging technologies were tested through a case study on rose plants showing important fungal diseases (i.e., spot spectroscopy, hyperspectral, multispectral, and thermal imaging, fluorescence sensors). The final aim was the examination of conventional practices and current e-tools to gain the early detection of plant diseases, the identification of timing and spacing for their proper management, reduction in crop losses through environmentally friendly and sustainable production systems. Moreover, future perspectives for enhancing the integration of all these approaches are discussed.

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