Development of a standardized data collection and intelligent fabric quality prediction system for the weaving department

The diversity of weaving equipment has led to inconsistencies in communication protocols, impeding data collection and interoperability between devices, and ultimately reducing production efficiency. Additionally, fabric defects significantly impact product quality, while current visual inspection t...

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Main Authors: Ning Dai, Lunjun Li, Kaixin Xu, Zhehao Lu, Xudong Hu, Yanhong Yuan
Format: Article
Language:English
Published: SAGE Publishing 2025-01-01
Series:Journal of Engineered Fibers and Fabrics
Online Access:https://doi.org/10.1177/15589250241312778
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author Ning Dai
Lunjun Li
Kaixin Xu
Zhehao Lu
Xudong Hu
Yanhong Yuan
author_facet Ning Dai
Lunjun Li
Kaixin Xu
Zhehao Lu
Xudong Hu
Yanhong Yuan
author_sort Ning Dai
collection DOAJ
description The diversity of weaving equipment has led to inconsistencies in communication protocols, impeding data collection and interoperability between devices, and ultimately reducing production efficiency. Additionally, fabric defects significantly impact product quality, while current visual inspection technologies are primarily reactive and traditional quality prediction methods often exhibit considerable errors. This study leverages the standardization and interoperability features of open platform communications unified architecture technology to facilitate data acquisition within the weaving department, establishing a reliable Internet of Things framework that supports subsequent fabric quality prediction, and optimizing the back propagation neural network through the K-means clustering algorithm and particle swarm optimization to predict the type and number of fabric defects. A comparative analysis with traditional BP and PSO-BP prediction models was conducted, ultimately verifying the feasibility of using OPC UA to transmit weaving data for fabric quality prediction. The research results demonstrate that using OPC UA technology enables the unified transmission of weaving equipment data, addressing the issue of heterogeneity in weaving department equipment. The K-means-PSO-BP model can effectively predict defects such as double weft, hundred feet, and broken warp with minimal error, achieving a root mean square error of less than 0.15.
format Article
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institution Kabale University
issn 1558-9250
language English
publishDate 2025-01-01
publisher SAGE Publishing
record_format Article
series Journal of Engineered Fibers and Fabrics
spelling doaj-art-3bfea12251cb409686ebb30edd29ae652025-01-13T08:03:45ZengSAGE PublishingJournal of Engineered Fibers and Fabrics1558-92502025-01-012010.1177/15589250241312778Development of a standardized data collection and intelligent fabric quality prediction system for the weaving departmentNing DaiLunjun LiKaixin XuZhehao LuXudong HuYanhong YuanThe diversity of weaving equipment has led to inconsistencies in communication protocols, impeding data collection and interoperability between devices, and ultimately reducing production efficiency. Additionally, fabric defects significantly impact product quality, while current visual inspection technologies are primarily reactive and traditional quality prediction methods often exhibit considerable errors. This study leverages the standardization and interoperability features of open platform communications unified architecture technology to facilitate data acquisition within the weaving department, establishing a reliable Internet of Things framework that supports subsequent fabric quality prediction, and optimizing the back propagation neural network through the K-means clustering algorithm and particle swarm optimization to predict the type and number of fabric defects. A comparative analysis with traditional BP and PSO-BP prediction models was conducted, ultimately verifying the feasibility of using OPC UA to transmit weaving data for fabric quality prediction. The research results demonstrate that using OPC UA technology enables the unified transmission of weaving equipment data, addressing the issue of heterogeneity in weaving department equipment. The K-means-PSO-BP model can effectively predict defects such as double weft, hundred feet, and broken warp with minimal error, achieving a root mean square error of less than 0.15.https://doi.org/10.1177/15589250241312778
spellingShingle Ning Dai
Lunjun Li
Kaixin Xu
Zhehao Lu
Xudong Hu
Yanhong Yuan
Development of a standardized data collection and intelligent fabric quality prediction system for the weaving department
Journal of Engineered Fibers and Fabrics
title Development of a standardized data collection and intelligent fabric quality prediction system for the weaving department
title_full Development of a standardized data collection and intelligent fabric quality prediction system for the weaving department
title_fullStr Development of a standardized data collection and intelligent fabric quality prediction system for the weaving department
title_full_unstemmed Development of a standardized data collection and intelligent fabric quality prediction system for the weaving department
title_short Development of a standardized data collection and intelligent fabric quality prediction system for the weaving department
title_sort development of a standardized data collection and intelligent fabric quality prediction system for the weaving department
url https://doi.org/10.1177/15589250241312778
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AT zhehaolu developmentofastandardizeddatacollectionandintelligentfabricqualitypredictionsystemfortheweavingdepartment
AT xudonghu developmentofastandardizeddatacollectionandintelligentfabricqualitypredictionsystemfortheweavingdepartment
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