Implementation of an Industrial Automation Remote Lab (IARL) and validation using a deep learning approach during the COVID pandemic

Author:

Sekaran Julius Fusic1ORCID,Hildas Ramesh1

Affiliation:

1. Department of Mechatronics Engineering Thiagarajar College of Engineering Madurai India

Abstract

AbstractThe purpose of this study is to demonstrate a novel remote lab development for improving student psychomotor skills in the Industry 4.0 course. In this work, the vision and Internet of Things‐based lab setup for third‐year undergraduates is proposed as Industrial Automation Remote Lab (IARL). The major motivation of this novel approach is to replicate Industry 4.0 in the laboratory for learning purposes to undergraduate students during pandemic condition. In industries, it is essential to collect all the data from the machines to make optimal use of resources and increase the efficiency of the system. The stored data are interfaced through the user datagram protocol to control the speed of the hydraulic actuator. In the proposed experimental work, a vision sensor‐based anydesk remote control software technique is employed to conduct programmable logic circuit (PLC) experiments. To collect the various output image data sets, numerous PLC experiments were conducted. The collection of images is classified to investigate the student performance using deep learning algorithms like YOLOv4, VGG, and YOLOv5. Based on the simulation and validation results, the IARL‐based approach with YOLOv5 outperforms the other two algorithms with 98% accuracy. Additionally, the validated statistical internal and external results show that the remote laboratory Conceive, Design, Implement, and Operate (CDIO) batch performance is highly improved over virtual laboratory CDIO batch students.

Publisher

Wiley

Subject

General Engineering,Education,General Computer Science

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