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An Active Transfer Learning (ATL) Framework for Smart Manufacturing with Limited Data: Case Study on Material Transfer in Composites Processing

机译:具有有限数据的智能制造的主动转移学习(ATL)框架:复合材料处理中材料转移的案例研究

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Unprecedented advances in Machine Learning (ML), cloud computing and sensory technology promise to enable the manufacturing industry to respond rapidly to changes in marked needs while maintaining product quality and minimizing costs. Despite the unparalleled advantages that ML offers, critical limiting factors have prevented the exhaustive cultivation of ML in advanced manufacturing. Constant shifts in the process configuration and lack of sufficient fully-descriptive data restrict the performance of predictive ML models. This paper proposes to partly address these shortfalls with an active transfer learning (ATL) model that is applied to an aerospace composites manufacturing case study. The proposed ATL framework requires 1) developing an AI-based optimal experimental design using Active Learning (AL) to maximize the information gain from the limited number of allowable manufacturing trials, and 2) equipping the manufacturing process with a robust Transfer Learning (TL) model that is trained on limited available data and is immune to shifts in the process settings. The results suggest that uncertainty-based AL approaches can significantly decrease the dependency on large datasets for obtaining accurate process models. Furthermore, in comparison with traditional TL approaches, the proposed framework represents a practical solution to further reduce the necessity for generating expensive data in advanced manufacturing applications for developing reliable and transferable predictive models.
机译:机器学习(ML),云计算和感官技术的前所未有的进展承诺使制造业能够迅速应对明显需要的变化,同时保持产品质量,最大限度地降低成本。尽管ML优惠具有无与伦比的优势,但关键限制因素已经阻止了先进制造中ML的详尽培养。过程配置的恒定移位且缺乏足够的完全描述性数据限制了预测ML模型的性能。本文建议将这些短缺与主动转移学习(ATL)模型进行了部分地解决了应用于航空航天复合材料的制造案例研究。所提出的ATL框架需要1)使用主动学习(AL)开发基于AI的最佳实验设计,以最大限度地从有限数量的允许的制造试验中获得信息增益,以及2)用强大的转移学习(TL)为制造过程配备了制造过程在有限的可用数据上培训的模型,并在流程设置中免疫以转移。结果表明,基于不确定性的AL方法可以显着降低对大型数据集的依赖性,以获得准确的过程模型。此外,与传统的TL方法相比,所提出的框架代表了一种实用的解决方案,以进一步降低在高级制造应用中产生昂贵数据的必要性,以开发可靠和可转移的预测模型。

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