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Design and Fabrication of Automatic Floor Cleaning Machine

Sunil Telang, Gaurav Bhange, Jay Dhakate, Mandar Petkar, Rohit Tembhurne, Rajat Shrirame

Abstract


Today, robotics is the supreme power in the globe. It is possible to harness the advantages of automation to do minor home duties when complicated procedures are automated in order to make jobs easier to execute. Cleaning is one example of this. The importance of cleaning is often underestimated because of the nature of the labor involved. Health is a result of cleanliness. However, in today's fast-paced society, it is easy to overlook the importance of cleanliness. Cleaning floors has never been easier or more efficient thanks to our automated floor cleaner. Using the dry mode, it is possible to accomplish thorough cleaning and a healthy environment. This summary covers a smart floor cleaning robot that can be operated by just telling the robot what to do. This robot uses a wireless robotic cleaning technology to quickly and easily clean floors. Using a microcontroller application, the robot may follow the logic it has put into its microcontroller in this wireless system. In order to clean effectively, the suggested robot has an Arduino controller with twelve digital input/output ports and a vacuum pump.

 

Keywords: Floor cleaning, robot, vacuum cleaner


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References


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