基于人工神经网络的五袋牛仔裤接缝强度预测模型:综述

Textiles Pub Date : 2024-04-22 DOI:10.3390/textiles4020012
Aqsa Zulfiqar, Talha Manzoor, Muhammad Bilal Ijaz, Hafiza Hifza Nawaz, Fayyaz Ahmed, Saeed Akhtar, Fatima Iftikhar, Y. Nawab, Muhammad Qamar Khan, Muhammad Umar
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摘要

本研究探讨了以往有关纺织和聚合物行业预测模型的研究工作,特别是服装接缝强度,强调了缝合密度、织物 GSM、线型、线数、缝合等级和接缝类型等关键参数。这些参数在决定基于纤维素聚合物的牛仔裤的耐用性和整体质量方面起着关键作用。研究重点是预测五袋牛仔裤接缝强度的数学计算模型。讨论提出了人工智能在制造业中的应用,特别是在纺织和服装行业中的应用,并强调了使用机器学习预测模型进行缝纫线消耗、接缝强度分析和接缝性能分析的重要性。因此,作者认为机器学习预测模型非常重要,因为未来趋势预计人工智能驱动的方法将不断进步,有可能带来备受瞩目的预测和卓越的制造工艺。作者还描述了人工智能的局限性,并探讨了人工智能在以制造业为基础的行业,尤其是服装行业中的风险概述综合模型。简而言之,这篇综述是连接人工智能、数学和纺织工程领域的桥梁,让人们清楚地了解基于人工神经网络的模型将如何塑造牛仔布制造领域接缝强度预测的未来。这种基于人工神经网络的演变将支持并提高接缝强力预测的准确性和效率,使模型能够在庞大而多样的数据集中辨别出错综复杂的模式和关系。
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Artificial-Neural-Network-Based Predicted Model for Seam Strength of Five-Pocket Denim Jeans: A Review
This study explores previous research efforts concerning prediction models related to the textile and polymer industry, especially garment seam strength, emphasizing critical parameters such as stitch density, fabric GSM, thread type, thread count, stitch classes, and seam types. These parameters play a pivotal role in determining the durability and overall quality of denim jeans based on cellulosic polymer. A significant focus is dedicated to the mathematical computational models employed for predicting seam strength in five-pocket denim jeans. Herein, the discussion poses the application of AI for manufacturing industries, especially for textile and clothing sectors, and highlights the importance of using a machine learning prediction model for sewing thread consumption, seam strength analysis, and seam performance analysis. Therefore, the authors suggest the significant importance of the machine learning prediction model, as future trends anticipate advancements in AI-driven methodologies, potentially leading to high-profile predictions and superior manufacturing processes. The authors also describe the limitation of AI and address a comprehensive model of risk outlines of AI in the manufacturing-based industries, especially the garments industry. Put simply, this review serves as a bridge between the realms of AI, mathematics, and textile engineering, providing a clear understanding of how artificial-neural-network-based models will be shaping the future of seam strength prediction in the denim manufacturing landscape. This type of evolution, based on ANN, will support and enhance the accuracy and efficiency of seam strength predictions by allowing models to discern intricate patterns and relationships within vast and diverse datasets.
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