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Reason: Under embargo until 17 July 2024. After this date a copy can be supplied under Section 51(2) of the Australian Copyright Act 1968 by submitting a document delivery request through your library

Health Monitoring of Mining Conveyor Belt using RFID Sensors: A ML Based Approach

thesis
posted on 2023-07-17, 02:39 authored by FATEMA-TUZ ZOHRA
Cracks in coal mining conveyor belts are the budding causes for structural failure and consequent loss of revenue. In this thesis, a novel Machine Learning (ML) based Radio Frequency Identification (RFID) sensing mechanism is proposed and experimentally validated for crack detection of both static and dynamic mine conveyor belt. A wide variety of crack detection scenarios are produced by creating submillimeter cracks of many sizes and orientations and tested with several ML algorithms. Such a pioneering implementation of ML using both chipped and chipless RFID is a novel contribution to the concept of remote monitoring of mining industry.

History

Campus location

Australia

Principal supervisor

Nemai Karmakar

Additional supervisor 1

Omar Salim

Year of Award

2023

Department, School or Centre

Electrical and Computer Systems Engineering

Course

Doctor of Philosophy

Degree Type

DOCTORATE

Faculty

Faculty of Engineering

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