An IOT based Home Automation System (HAS)

Samrajyam Singu, Venkata Ravi Kiran Kolla

Abstract


with the advancement of Automation technology, life is getting simpler and easier in all aspects. In today’s world, Automatic systems are preferred over manual systems. With the rapid increase in the number of users of internet over the past decade has made the Internet a part and parcel of life, and IoT is the latest and emerging internet technology. The Internet of things is a growing network of everyday object-from industrial machines to consumer goods that can share information and complete tasks while you are busy with other activities. Home Automation System  using IoT is a system that uses computers or mobile devices to control basic home functions and features automatically through the internet from anywhere around the world. In this paper, we present a Home Automation System using Arduino UNO that employs the integration of cloud networking and uses I2C communication protocol to communicate through the various devices within the house. The main purpose of the proposed system is to provide the user with remote control of various lights, fans, and appliances within their home and show the data in the cloud.

Keywords


Home Automation, Embedded Systems, Internet of Things, Arduino UNO.

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