使用深度学习建模精益和六西格玛集成:应用于服装公司

IF 1.1 4区 工程技术 Q3 MATERIALS SCIENCE, TEXTILES Autex Research Journal Pub Date : 2021-09-26 DOI:10.2478/aut-2021-0043
Raja Elboq, Mouhsene Fri, M. Hlyal, J. el Alami
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引用次数: 3

摘要

摘要精益和六西格玛方法的实施使公司能够提高竞争力和效率。然而,在摩洛哥的纺织和服装行业,采用这些方法受到很大限制。事实上,尽管这些方法和实际方法取得了所有进展,但确定合理的实施战略,如适当的时间安排和预期成功水平的预测,仍然是激烈辩论的一部分,也是从业者的障碍。结果是,在1200家摩洛哥服装公司中,只有11家公司成功实施了精益和六西格玛。本文基于一个智能模型,为服装利益相关者制定了一个支持工具,或者旨在使用深度学习成功集成精益和六西格玛。在一组常见关键成功因素(CSF)的权重和成熟度的帮助下,神经网络被训练用于预测成功率和定制精益和六西格玛实施时间表。选择这些CFS作为输入数据。然后,将数据集用于训练、测试和验证神经网络模型。为了评估训练后的网络,使用了25%的数据,并设计了一个调整超参数过程来增强模型性能。对于分类交叉熵(CCE)等性能指标,对定义的损失函数、精度和精度进行了评估和优化。然后,所开发的模型可以定义适当的年表,并以97%的准确率预测成功水平。训练后的神经网络随后被应用于一家服装公司,作为其持续改进项目成功的指南。
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Modeling Lean and Six Sigma Integration using Deep Learning: Applied to a Clothing Company
Abstract Implementation of Lean and Six Sigma methodologies enable companies to boost their competitiveness and their efficiency. However, the adoption of these approaches is very much restricted in the Textile and Clothing sector in Morocco. In fact, despite all the advances in these methodologies and practical approaches, defining a rational implementation strategy such as the adequate chronology and the prediction of the expected success level are still a part of a fierce debate and an impediment for practitioners. The result is that only 11 companies out of 1,200 Moroccan clothing companies have successfully implemented Lean and Six Sigma. This article, based on an intelligent model, draws up a support tool to the clothing stakeholders, or otherwise aims to successfully integrate Lean and Six Sigma using Deep Learning. The neural network was trained for the prediction of success level rate and customizing of Lean and Six Sigma implementation chronology with the help of weights and maturity of a set of common critical success factors (CSFs). These CFSs were selected as input data. Then, the dataset have been used for training, testing, and validating the neural network model. To evaluate the trained network, 25% of the data have been used and a tuning hyperparameter process has been designed to reinforce the model performance. For the performance indices such as Categorical Cross Entropy (CCE), the defined loss function, accuracy, and precision have been evaluated and optimized. The developed model can then define the adequate chronology and predict success level with an accuracy of 97%. The trained neural network was then applied to a clothing company as a guide to the success of its continuous improvement project.
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来源期刊
Autex Research Journal
Autex Research Journal MATERIALS SCIENCE, TEXTILES-
CiteScore
2.80
自引率
9.10%
发文量
40
审稿时长
>12 weeks
期刊介绍: Only few journals deal with textile research at an international and global level complying with the highest standards. Autex Research Journal has the aim to play a leading role in distributing scientific and technological research results on textiles publishing original and innovative papers after peer reviewing, guaranteeing quality and excellence. Everybody dedicated to textiles and textile related materials is invited to submit papers and to contribute to a positive and appealing image of this Journal.
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