Volume : 9, Issue : 6, JUN 2023

NATIONAL CONFERENCE ON INNOVATIONS IN COMPUTING TECHNOLOGIES (NCICT'23)

LORA BASED SUSTAINABLE LIVESTOCK MONITORING SYSTEM

DR. P M BENSON MANSINGH*, RAGUVEER PRASATH.V, SABAREESWARAN.M, SHANMUGARAJAN.S

Abstract

The goal of the project that agricultural farmers manage and watch over is various kinds of cattle. Since, cattle do not remain in one place for extended periods of time, manual inspection and monitoring of livestock is laborious. The cost of fencing many cattle is high, and farmers must physically monitor the animals to prevent them from straying past the entry points. It takes time and effort to visually track cattle and fencing. This project offers a cutting-edge IoT-based smart solution for geofencing and livestock tracking.

Keywords

LORA, LIVESTOCK, RF TRANSMITTER, RF RECEIVER, GEO – FENCING, ATMEGA328.

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