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Application of artificial neural networks to the prediction of sewing performance of fabrics

机译:人工神经网络在织物缝制性能预测中的应用

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摘要

Purpose - This paper aims to investigate the use of artificial neural networks (ANN) to predict the sewing performance of fabrics. The purpose of this study is to verify the ANN techniques that could be emulated as human decision in the prediction of sewing performance of fabrics. Design/methodology/approach - In order to verify the ANN techniques that could be emulated as human decision in the prediction of sewing performance of fabrics, 109 data sets of fabrics were tested by using fabric assurance by simple testing system and the sewing performance of each fabric's specimen was assessed by the domain experts. Of these 109 input-output data pairs, 94 were used to train the proposed backpropagation (BP) neural network for the prediction of the unknown sewing performance of a given fabric, and 15 were used to test the proposed BP neural network. Findings - After 10,000 iterations of training of BP neural network, the neural network converged to the minimum error level. The experimental results reveal the great potential of the proposed approach in predicting the sewing performance of fabrics for apparel production. Originality/value - Generally, the fabric's performance in the manufacturing process is judged subjectively by the operators and/or their supervisors. Current methodologies of acquiring fabric property information and predicting fabric sewing performance are still incapable of providing a means for efficient planning and control for the sewing operation. Further, development of techniques to predict the sewing performance of fabric is essential for the current apparel production environment In this paper, the use of ANN to predict the sewing performance of fabrics in garment manufacturing is investigated.
机译:目的-本文旨在研究使用人工神经网络(ANN)预测织物的缝纫性能。这项研究的目的是验证可在人工预测织物缝制性能方面被模拟为人工决策的人工神经网络技术。设计/方法/方法-为了验证可以人工模拟的人工神经网络技术来预测织物的缝制性能,通过简单的测试系统使用织物保证对109个织物数据集进行了测试,每种织物的缝制性能织物样品由领域专家评估。在这109个输入/输出数据对中,有94个用于训练提议的反向传播(BP)神经网络,以预测给定织物的未知缝制性能,而有15个用于测试提议的BP神经网络。结果-经过10,000次BP神经网络训练后,神经网络收敛到最小误差水平。实验结果表明,该方法在预测服装服装的缝纫性能方面具有巨大的潜力。原创性/价值-通常,织物在制造过程中的性能由操作员和/或他们的主管主观判断。当前获取织物特性信息和预测织物缝合性能的方法仍然不能提供有效地规划和控制缝合操作的手段。此外,开发预测织物缝制性能的技术对于当前的服装生产环境至关重要。本文研究了在服装制造中使用ANN预测织物缝制性能的方法。

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