A Low-cost Autonomous Lawn Mower with AI-Based Obstacle Avoidance and GPS Guidance System

dc.contributor.authorThanapon Kosri
dc.contributor.authorTossawat Seekhamharn
dc.contributor.authorPhasawut Phoonsrichaiyasit
dc.contributor.authorPoowadon Khungpo
dc.contributor.authorPhaophak Sirisuk
dc.contributor.authorTheerayod Wiangtong
dc.date.accessioned2026-05-08T19:25:24Z
dc.date.issued2025-9-19
dc.description.abstractThis paper presents a cost-effective robotic system capable of manual control via RF remote and autonomous navigation using GPS-based information. The system employs artificial intelligence to dynamically classify and avoid non-grass obstacles, ensuring safe operation in real environments. The prototype integrates affordable hardware including Arduino board, sensors, actuators and Raspberry Pi with lightweight algorithms to balance performance and cost. Experimental validation confirms its ability to follow predefined paths with ±1.5 meters deviation in open area and 90% obstacle avoidance success rate. With a total hardware cost under $200, this prototype highlights feasibility for larger-scale implementation.
dc.identifier.doi10.55003/eth.420305
dc.identifier.urihttps://dspace.kmitl.ac.th/handle/123456789/20096
dc.publisherEngineering and Technology Horizons
dc.subjectRadio Wave Propagation Studies
dc.subjectInertial Sensor and Navigation
dc.subjectIndoor and Outdoor Localization Technologies
dc.titleA Low-cost Autonomous Lawn Mower with AI-Based Obstacle Avoidance and GPS Guidance System
dc.typeArticle

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