Fr. 57.50

Design of LIDAR Based Train Safety Model for Railway - DE

English · Paperback / Softback

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Description

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Object detection is an essential technology for surveillance systems, particularly in areas with a high risk of accidents such as unnamed railway crossings, and railway track maintenance location, etc. To prevent future accident, the system must detect the train passing through the area with high accuracy and this process must be performed fulfilling real-time applications. In this work, an edge of WSN (Wireless Sensor Network) is capable of informing the user about the incoming train from a distance of more than a km. The response of the system has to be calculated and sent from the proposed XBEE wireless protocol, so as to trigger a warning action to avoid a possible accident. The system uses a LIDAR sensor that provides an accurate detection capability of the train. The element used to process the information is a custom embedded edge platform with low computing resources and low-power consumption.

About the author










DR SHALINI SAHAY travaille comme professeur associé au département EC du SAGAR INSTITUTE OF RESEARCH &TECHNOLOGY,BHOPAL. Elle a plus de 25 ans d'expérience dans l'enseignement et a obtenu un doctorat à RGPV Bhopal.

Product details

Authors RAMESH JHA, Navneet Kaur, Shalini Sahay
Publisher LAP Lambert Academic Publishing
 
Languages English
Product format Paperback / Softback
Released 13.09.2023
 
EAN 9786206784128
ISBN 9786206784128
No. of pages 64
Subject Natural sciences, medicine, IT, technology > Technology > Electronics, electrical engineering, communications engineering

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