A simple Node-RED implementation for digital twins in the area of manufacturing

Main Article Content

Blessing Ngonidzashe Musungate*
Tuncay Ercan

Abstract

Interest in digital twins continues to strengthen with technological advancements in Industrial IoT. A digital twin is a virtual representation that models a physical object and effectively provides a two-way interaction with the real system. Digital twin models can be set up to test or analyze industrial applications before deployment thereby improving the efficiency of industries. In this work, a Node-RED implementation for digital twins in the manufacturing sector is developed. Plastic injection molding is the chosen case study for the implementation of this digital twin. Node-RED is a platform that allows developers to quickly build Internet of Things applications using a simple web browser interface. The digital twin uses the Random Forest Classifier algorithm to do predictive maintenance tasks including classification of quality of products. An easy-to-use dashboard is developed to enable the user to interact with the digital twin. Important modules such as communication with the real environment, SMS, and email notifications are successfully implemented in the digital twin. The findings show that it is feasible to build a Node-RED digital twin. The flexibility of Node-RED makes it suitable for building architecture of varying complexity.

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Article Details

Musungate, B. N., & Ercan, T. (2023). A simple Node-RED implementation for digital twins in the area of manufacturing. Trends in Computer Science and Information Technology, 8(2), 050–054. https://doi.org/10.17352/tcsit.000068
Research Articles

Copyright (c) 2023 Musungate BN, et al.

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This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.

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