Adapting Models to Warn Fungal Diseases in Vineyards Using In-Field Internet of Things (IoT) Nodes
Abstract
:1. Introduction
2. Material and Methods
2.1. Study Sites and Data Sources
2.2. Vineyard Disease Models
2.2.1. Downy Mildew
- Contamination. In spring, the oospores reach maturity and germinate as zoospores. These may be transported by rain and wind, thus reaching the green parts of the vine and colonising them. The conditions needed for contamination are: an air temperature of around 10 C, a young plant with a height of at least 10 cm and a rainfall of at least 10 mm/day.
- Incubation. This takes from 4 to 21 days, depending on the temperatures and relative humidity.
- Sporulation. During this step, the fungus is propagated along the vine.
- Propagation. Dissemination to nearby plants with the help of rebounding raindrops and wind. The optimal condition for ambient temperature is between 20 and 25 C, with the help of rain during the night.
2.2.2. Powdery Mildew
- On leaves. An ashy white dust is observed on both the upper and lower leaf surfaces (Figure 5). Under the dust, there are some necrotic dots. Sometimes the beginnings of the attack manifest themselves as oily stains on the upper side of the leaf, along with some brown areas. When the attacks are intense, the leaves appear tense or parachute-shaped and are covered with dust on both the upper and the lower sides.
- Sprouts and shoots. Symptoms appear as diffuse dark green patches, the colour turning to chocolaty-brown tones as the evolution progresses and then a blackish colour until outbreak.
- Grapes. At first the grains appear with a certain leaden-grey colour, becoming covered in a short time by an ashy dust. The most important damage is located in the grape clusters because strong attacks cause the growth of the skin to stop and so the fruit splits open.
2.2.3. Black Rot
- On leaves. This is where the invasion begins and it is characterised by pustular splashes with a dark brown colour, which enlarge and increase, eventually drying out the affected parts of the leaflet.
- In sprouts and shoots. The invasion only takes place in the herbaceous parts that are not yet lignified.
- In grapes. This is where the parasite causes more damage. The symptoms manifest as reddish spots that decompose the pulp. The skin is wrinkled and covered with small black pustules, and the grain dries out and usually falls off. If the invasion occurs in full bloom it can drain the cluster completely.
2.2.4. Botrytis
- On leaves. Extensive necrosis that looks like burns appears on the edge of the leaves and in wet conditions can take the form of a grey dust. Leaf attacks are not usually economically important.
- In sprouts and shoots. The first symptoms manifest as the presence of elongated brown spots, which are covered with a greyish fuzz if the weather is humid. At the ends of the plant, elongated blackish spots on a whitish background appear along the branch and mainly at the end, which smells bad and has little consistency. The attacks can lead to the loss of some young shoots, with the consequent decrease in harvest, and later affect some buds at the base of the shoots, which do not sprout the following year.
- In grapes. Symptoms during flowering and fruit set manifest on the inflorescences and with a dark brown colour in the bunch. During infection they present a rotten appearance and a characteristic greyish mould develops on their surface. It also causes a decrease in the quality of future wines.
2.3. SEnviro Connect
3. Results
3.1. Downy Mildew
3.2. Powdery Mildew
3.3. Black Rot
3.4. Botrytis
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Sensor No. | Location (lat, lon) | Area (Metres2) | Grape Variety |
---|---|---|---|
1 | 40.133098, −0.061000 | 20,000 | Monastrell |
2 | 40.206870, 0.015536 | 18,000 | Merlot, cabernet, chardonnay and syrah |
3 | 40.141384, −0.026397 | 15,000 | Bonicaire |
4 | 40.167529, −0.097165 | 20,000 | Tempranillo, Merlot, Syrah, Cabernet sauvignon and others |
Tm (C) | Hm < 75% | Hm > 75% | Tm (C) | Hm < 75% | Hm > 75% | Tm (C) | Hm < 75% | Hm > 75% | |||
---|---|---|---|---|---|---|---|---|---|---|---|
12. | 00 | 0.00 | 0.21875 | 17. | 00 | 0.4166 | 0.5104 | 22. | 00 | 0.6916 | 0.925 |
25 | 0.1833 | 0.2395 | 25 | 0.429 | 0.6916 | 25 | 0.7083 | 0.9416 | |||
50 | 0.1958 | 0.2583 | 50 | 0.4375 | 0.5958 | 50 | 0.7208 | 23.50 | |||
75 | 0.2083 | 0.2791 | 75 | 0.4479 | 0.6145 | 75 | 0.7375 | 1.0166 | |||
13. | 00 | 5.30 | 0.258 | 18 | 00 | 0.4625 | 0.6375 | 23 | 00 | 0.7541 | 1.0416 |
25 | 0.2375 | 0.3208 | 25 | 0.4783 | 0.6333 | 25 | 0.7541 | 1.0416 | |||
50 | 0.25 | 0.3333 | 50 | 0.4875 | 0.6666 | 50 | 0.7541 | 1.0416 | |||
75 | 0.2625 | 0.3541 | 75 | 0.5041 | 0.6791 | 75 | 0.7541 | 1.0416 | |||
14. | 00 | 6.6 | 0.375 | 19. | 00 | 0.5208 | 0.6916 | 24. | 00 | 0.7541 | 1.0416 |
25 | 0.2833 | 0.3916 | 25 | 0.5375 | 0.7291 | 25 | 0.7375 | 1.0125 | |||
50 | 0.2958 | 0.4041 | 50 | 0.5583 | 0.7625 | 50 | 0.7208 | 0.9833 | |||
75 | 0.3041 | 0.425 | 75 | 0.5708 | 0.8041 | 75 | 0.6916 | 0.9666 | |||
15. | 00 | 0.3166 | 0.4416 | 20. | 00 | 0.5916 | 0.8333 | 25. | 00 | 0.6916 | 0.9666 |
25 | 0.325 | 0.45 | 25 | 0.6041 | 0.8541 | ||||||
50 | 0.3375 | 0.4625 | 50 | 0.6166 | 0.875 | ||||||
75 | 0.3458 | 0.4708 | 75 | 0.625 | 0.8962 | ||||||
16. | 00 | 0.3541 | 0.4875 | 21. | 00 | 0.6375 | 0.925 | ||||
25 | 0.375 | 0.5 | 25 | 0.6541 | 0.925 | ||||||
50 | 0.3875 | 0.5208 | 50 | 0.6666 | 0.925 | ||||||
75 | 0.4 | 0.5375 | 75 | 0.6791 | 0.925 |
Temperature (C) | Days for Spores to Develop and Infect Grapevine Parts and Produce New Spores | Value per Hour |
---|---|---|
6.0 | 32 | 0.13 |
9.0 | 25 | 0.16 |
12.0 | 18 | 0.23 |
15.0 | 11 | 0.37 |
17.0 | 7 | 0.59 |
23.0 | 6 | 0.69 |
26.0 | 5 | 0.83 |
30.0 | 6 | 0.69 |
33.0 (for at least 3 days) | 0 | - |
40.5 (for at least 6 h) | 0 (the fungus disappears) | - |
Temperature (C) | Days for Spores to Develop and Infect Grapevine Parts and Produce New Spores | Value per Hour |
---|---|---|
10.0 | 24 | 4.16 |
13.0 | 12 | 8.33 |
15.5 | 9 | 11.11 |
18.5 | 8 | 12.5 |
21.0 | 7 | 14.28 |
24.0 | 7 | 14.28 |
26.0 | 6 | 16.66 |
29.0 | 9 | 11.11 |
29.0 | 12 | 8.33 |
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Trilles Oliver, S.; González-Pérez, A.; Huerta Guijarro, J. Adapting Models to Warn Fungal Diseases in Vineyards Using In-Field Internet of Things (IoT) Nodes. Sustainability 2019, 11, 416. https://doi.org/10.3390/su11020416
Trilles Oliver S, González-Pérez A, Huerta Guijarro J. Adapting Models to Warn Fungal Diseases in Vineyards Using In-Field Internet of Things (IoT) Nodes. Sustainability. 2019; 11(2):416. https://doi.org/10.3390/su11020416
Chicago/Turabian StyleTrilles Oliver, Sergio, Alberto González-Pérez, and Joaquín Huerta Guijarro. 2019. "Adapting Models to Warn Fungal Diseases in Vineyards Using In-Field Internet of Things (IoT) Nodes" Sustainability 11, no. 2: 416. https://doi.org/10.3390/su11020416
APA StyleTrilles Oliver, S., González-Pérez, A., & Huerta Guijarro, J. (2019). Adapting Models to Warn Fungal Diseases in Vineyards Using In-Field Internet of Things (IoT) Nodes. Sustainability, 11(2), 416. https://doi.org/10.3390/su11020416