Improving Product Quality Control in Smart Manufacturing through Transfer Learning-Based Fault Detection

Nitesh Bharot, M. Soderi, Priyank Verma, J. Breslin
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Abstract

Reducing product failure rates is crucial to ensure a healthy production line. However, the current approach for inspecting product quality is inefficient, costly, and time-consuming, relying on manual inspection at the end of the production process. This research paper focuses on the utilization of transfer learning, an intelligent machine-learning technique, to improve the accuracy and efficiency of product quality inspection in production lines. The proposed approach utilizes transfer learning to adapt a pre-trained model from a related domain to the target domain, enabling accurate product quality prediction with limited data. The reference architecture provides a framework for implementing the proposed approach in a manufacturing environment, enabling real-time monitoring and decision-making based on product quality predictions. The proposed approach can improve the accuracy of faulty product detection by up to 11% compared to traditional techniques, as demonstrated by evaluations on a real-world production dataset.
基于迁移学习的故障检测改进智能制造中的产品质量控制
降低产品故障率对于确保生产线的健康运行至关重要。然而,目前检测产品质量的方法效率低下,成本高,耗时长,依赖于生产过程结束时的人工检测。本文的研究重点是利用迁移学习这一智能机器学习技术来提高生产线产品质量检测的准确性和效率。该方法利用迁移学习将预训练的模型从相关领域调整到目标领域,从而在有限的数据下实现准确的产品质量预测。参考体系结构提供了一个框架,用于在制造环境中实现所提出的方法,从而实现基于产品质量预测的实时监控和决策。与传统技术相比,所提出的方法可以将故障产品检测的准确性提高11%,正如对真实生产数据集的评估所证明的那样。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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