Open Access
ARTICLE
Using Digital Twin to Diagnose Faults in Braiding Machinery Based on IoT
1 Chengyi University College, Jimei University, Xiamen, 361021, China
2 College of Harbor and Coastal Engineering, Jimei University, Xiamen, 361021, China
* Corresponding Author: Huangbin Lin. Email:
(This article belongs to the Special Issue: Neutrosophic Theories in Intelligent Decision Making, Management and Engineering)
Intelligent Automation & Soft Computing 2023, 37(2), 1363-1379. https://doi.org/10.32604/iasc.2023.038601
Received 20 December 2022; Accepted 10 March 2023; Issue published 21 June 2023
Abstract
The digital twin (DT) includes real-time data analytics based on the actual product or manufacturing processing parameters. Data from digital twins can predict asset maintenance requirements ahead of time. This saves money by decreasing operating expenses and asset downtime, which improves company efficiency. In this paper, a digital twin in braiding machinery based on IoT (DTBM-IoT) used to diagnose faults. When an imbalance fault occurs, the system gathers experimental data. After that, the information is sent into a digital win model of the rotor system to see whether it can quantify and locate imbalance for defect detection. It is possible to anticipate asset maintenance requirements with DT technology by IoT (Internet of Things) sensors, XR(X-Ray) capabilities, and AI-powered analytics. A DT model’s appropriate design and flexibility remain difficult because of the nonlinear dynamics and unpredictability inherent in the degrading process of equipment. The results indicate that the DT in braiding machinery developed allows for precise diagnostic and dynamic deterioration analysis. At least there is 37% growth in efficiency over conventional approaches.Keywords
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