RAILWAY TRACK DETECTION STRUCTURE BASED IOT
DOI:
https://doi.org/10.61841/h05jpr26Keywords:
Raspberry Pi3b,, GPS, Ultrasonic distance sensor, Pi camera,, L293D Motor Driver.Abstract
The Southern railroads has one of the biggest railroad organizes on the planet, confusing more than 2,97,000 km in separation all over India. Right now looking presented the mix of ultrasonic for railroad track geometry over framework .Its motor travels on the lane, as well as the lens installed on its front edge of that same truck must monitor the route on the way. It affirms each single person and obstacle. Human obstruction are available in the way or not then those data send to the stations through the web. The significance of this advanced methods is relevant both day and evening time recognition reason.
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