"Revolutionizing Lawn Care: AI-Driven Solar-Powered Humorless Grassland Mower With IoT Integration"

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K. Murugan
G. Balambigai
B. Manikandan
S. Karthick
R. Kishore
A. Jagan

Abstract

The primary objective of an AI-driven solar-powered humorless grassland mower with IoT integration is to provide an innovative, sustainable, and efficient solution for grassland maintenance, addressing the challenges of traditional lawn care methods while promoting environmental stewardship and technological advancement. Methods: Developing an AI-driven solar-powered humorless grassland mower with IoT integration involves integrating various technologies and methodologies such as AI Algorithm, Solar Power System Design, Robotics and Automation, IoT Integration, User Interface and Control System. Findings: It can vary depending on the specific objectives, implementation, and testing conducted. It can provide valuable insights into its performance, sustainability, reliability, and user acceptance, helping to inform further development and optimization efforts. Novelty: By introducing novel features and approaches in these areas, an AI-driven solar-powered grassland mower with IoT integration can offer unique capabilities and benefits that set it apart from conventional lawn care equipment and contribute to advancements in sustainable landscaping practices. This paper proposes an innovative AI-Driven Solar-Powered Humorless Grassland Mower with IoT Integration. Traditional manual lawn mowing not only demands labor but also contributes to environmental pollution through nonrenewable resource consumption. To address these challenges, our solution leverages advanced technologies to transform grassland upkeep. The mower is equipped with a range of IoT sensors including ultrasonic, proximity, GPS, and cameras. These sensors enable real-time data collection and decision-making, allowing the mower to adjust its mowing schedule based on forecasted data and navigate around obstacles. Furthermore, during periods of poor sunlight or low battery levels, the mower autonomously returns to its self-charging station for recharging. Data collected by the mower can be sent to the cloud for further analysis and storage. Users have the convenience of remotely controlling the mower through a smartphone app or web interface, enabling initiation, termination, or scheduling of mowing sessions from anywhere. Our AI-integrated IoT solution offers a sustainable and efficient approach to grassland maintenance, reducing labuor requirements and environmental impact while maximizing operational autonomy.

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How to Cite
K. Murugan, G. Balambigai, B. Manikandan, S. Karthick, R. Kishore, & A. Jagan. (2024). "Revolutionizing Lawn Care: AI-Driven Solar-Powered Humorless Grassland Mower With IoT Integration". Journal of Advanced Zoology, 45(3), 892–898. https://doi.org/10.53555/jaz.v45i3.4465
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Articles
Author Biographies

K. Murugan

AP/Department of Computer Science and Engineering, Hindusthan Institute of Technology, Coimbatore

G. Balambigai

AP/Electrical and  Electronics  Engineering, Akshaya College of Engineering and Technology, Coimbatore

B. Manikandan

AP/Department of Information Technology, Hindusthan Institute of Technology ,Coimbatore

S. Karthick

Student /Department of computer Science and Engineering, Hindusthan Institute of Technology, Coimbatore

R. Kishore

Student /Department of computer Science and Engineering, Hindusthan Institute of Technology ,Coimbatore

A. Jagan

Student /Department of computer Science and Engineering, Hindusthan Institute of Technology, Coimbatore

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