Evaluating the Efficacy of Targeted Pesticide Applications and Machine Learning Integration for Precision Turfgrass Management
dc.contributor.author | Kitchin, Elisabeth Clover Artemis | en |
dc.contributor.committeechair | McCall, David Scott | en |
dc.contributor.committeemember | Zeng, Yuan | en |
dc.contributor.committeemember | Askew, Shawn D. | en |
dc.contributor.department | Plant Pathology, Physiology and Weed Science | en |
dc.date.accessioned | 2025-05-30T08:00:54Z | en |
dc.date.available | 2025-05-30T08:00:54Z | en |
dc.date.issued | 2025-05-29 | en |
dc.description.abstract | There is an increasing demand for sustainability in turfgrass pest management, emphasizing the need to reduce chemical inputs while maintaining effective pest control. Precision turfgrass management (PTM), a subsect of precision agriculture, addresses these sustainability goals by tailoring management practices to the site-specific variability of the landscape. Targeted pesticide applications are a fundamental practice within PTM, involving precisely delineating pest outbreaks to create pest maps. These pest maps are then used as a guide for Global Navigation Satellite System (GNSS)-guided sprayers to apply pesticides solely to pest-affected areas as opposed to traditional broadcast pesticide applications. However, significant barriers have hindered the widespread adoption of these practices. A prominent limiting factor to the adoption of GNSS-guided sprayers is turfgrass manager's skepticism of the technology's accuracy due to a lack of documented quantifiable data demonstrating its capabilities. Additionally, the considerable labor, technical skills, and resources needed to create spatially accurate pest maps create another substantial barrier for turfgrass practitioners. An investigation into the accuracy and precision of GNSS-guided sprayers examined the influence of operational parameters such as travel speed and target size on spray deposition patterns. Fluorescent dye imaging under ultraviolet illumination, coupled with digital image analysis, quantified spray accuracy, overspray, and overlap. Results showed that the sprayer applied solution less accurately when operated at 4.8 kilometers per hour (km/h) compared to 7.2 or 9.7 km/h. Target size had no significant impact on any metric tested, indicating that targeted pesticide applications made while traveling 7.2-9.7 km/h were highly accurate, no matter the target size. An automated solution for pest mapping using machine learning was developed to identify and quantify dollar spot (Clarireedia spp.), a common turfgrass disease. A semantic segmentation model (DeepLabV3+) was trained on diverse images featuring various turfgrass species, disease severities, and environmental conditions. The developed model successfully automated the identification and quantification of dollar spot, offering significant improvements in efficiency, consistency, and accuracy compared to manual visual assessments. Overall, these findings demonstrate the efficacy of GNSS-guided sprayers under specific operational conditions and validate machine learning as a viable method for automating pest mapping. Future research should focus on optimizing technological and operational aspects to improve the practicality and effectiveness of precision turfgrass management. | en |
dc.description.abstractgeneral | There is a growing emphasis on making turfgrass management more sustainable, especially in pest control. Traditional pest management methods often involve applying pesticides broadly across entire landscapes, which can be environmentally harmful and costly. Precision turfgrass management (PTM) addresses this issue by tailoring practices to the localized needs of the turfgrass, rather than applying uniform management across the entire system. PTM includes targeted pesticide applications, which involve creating detailed pest outbreak maps and using GNSS-guided sprayers to apply pesticides only to affected areas. Despite the potential environmental and economic benefits of targeted applications, their adoption is limited due to skepticism regarding their effectiveness and the substantial time, expertise, and resources required to create accurate pest maps. Documenting the accuracy and consistency of these sprayers and developing solutions to reduce the time and resource required for pest mapping is necessary in order to promote the widespread adoption of targeted pesticide applications. A GNSS-guided sprayer was evaluated for its accuracy and consistency when making targeted pesticide applications on turfgrass. Factors that may influence the sprayer's performance, such as the speed of travel and the target size, were assessed to measure their impact on the application accuracy. Fluorescent dye illuminated by ultraviolet (UV) lights was used to measure the sprayer deposition's proximity to the intended target and the consistency of applications across repeated trials. Applications at 4.8 km/h were significantly less accurate than those at 7.2 or 9.7 km/h. Target size had no significant impact on any metric tested, indicating that targeted pesticide applications made while traveling 7.2-9.7 km/h were highly accurate, no matter the target size. A machine learning model was trained to detect and quantify instances of dollar spot, a common turfgrass disease, across images of various turfgrass types and conditions. This model greatly reduced the effort needed for pest mapping, providing faster, more consistent, and more accurate results compared to manual inspections. Together, these efforts demonstrate that GNSS-guided sprayers can be effective when operated under optimal conditions and that automated mapping techniques using machine learning can significantly simplify and improve pest identification. Advancements in GNSS-guided sprayers and automated pest mapping will improve their practicality, encouraging broader adoption of sustainable turfgrass management practices. | en |
dc.description.degree | Master of Science in Life Sciences | en |
dc.format.medium | ETD | en |
dc.identifier.other | vt_gsexam:43377 | en |
dc.identifier.uri | https://hdl.handle.net/10919/134289 | en |
dc.language.iso | en | en |
dc.publisher | Virginia Tech | en |
dc.rights | In Copyright | en |
dc.rights.uri | http://rightsstatements.org/vocab/InC/1.0/ | en |
dc.subject | Precision Agriculture | en |
dc.subject | Turfgrass | en |
dc.subject | Pest Mapping | en |
dc.subject | Golf Courses | en |
dc.subject | Targeted Pesticide Application | en |
dc.title | Evaluating the Efficacy of Targeted Pesticide Applications and Machine Learning Integration for Precision Turfgrass Management | en |
dc.type | Thesis | en |
thesis.degree.discipline | Plant Pathology, Physiology and Weed Science | en |
thesis.degree.grantor | Virginia Polytechnic Institute and State University | en |
thesis.degree.level | masters | en |
thesis.degree.name | Master of Science in Life Sciences | en |
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