|
This article is cited in 5 scientific papers (total in 5 papers)
Robotics, Automation and Control Systems
Review on automatic variable-rate spraying systems based on orchard canopy characterization
S. S. Patila, Y. M. Patila, S. B. Patilb a KIT’s College of Engineering
b D.Y. Patil College of Agricultural Engineering and Technology
Abstract:
Pesticide consumption and environmental pollution in orchards can be greatly decreased by combining variable-rate spray treatments with proportional control systems. Nowadays, farmers can use variable-rate canopy spraying to apply weed killers only where they are required which provides environmental friendly and cost-effective crop protection chemicals. Moreover, restricting the use of pesticides as Plant Protection Products (PPP) while maintaining appropriate canopy deposition is a serious challenge. Additionally, automatic sprayers that adjust their application rates to the size and shape of orchard plantations has indicated a significant potential for reducing the use of pesticides. For the automatic spraying, the existing research used an Artificial Intelligence and Machine Learning. Also, spraying efficiency can be increased by lowering spray losses from ground deposition and off-target drift. Therefore, this study involves a thorough examination of the existing variable-rate spraying techniques in orchards. In addition to providing examples of their predictions and briefly addressing the influences on spraying parameters, it also presents various alternatives to avoiding pesticide overuse and explores their advantages and disadvantages.
Keywords:
variable-rate spraying system, canopy detection and characterization, deep learning, machine learning, canopy structural characteristics, sensing.
Received: 18.10.2022
Citation:
S. S. Patil, Y. M. Patil, S. B. Patil, “Review on automatic variable-rate spraying systems based on orchard canopy characterization”, Informatics and Automation, 22:1 (2023), 57–86
Linking options:
https://www.mathnet.ru/eng/trspy1231 https://www.mathnet.ru/eng/trspy/v22/i1/p57
|
Statistics & downloads: |
Abstract page: | 253 | Full-text PDF : | 184 |
|