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A Deep Lifelong Learning Method for Digital Twin-Driven Defect Recognition With Novel Classes

机译:具有新型课程的数字双向缺陷识别深终终身学习方法

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Recently, digital twins (DTs) have become a research hotspot in smart manufacturing, and using DTs to assist defect recognition has also become a development trend. Real-time data collection is one of the advantages of DTs, and it can help the realization of real-time defect recognition. However, DT-driven defect recognition cannot be realized unless some bottlenecks of the recognition models, such as the time efficiency, have been solved. To improve the time efficiency, novel defect class recognition is an essential problem. Most of the existing methods can only recognize the known defect classes, which are available during training. For new incoming classes, known as novel classes, these models must be rebuilt, which is time-consuming and costly. This greatly impedes the realization of DT-driven defect recognition. To overcome this problem, this paper proposes a deep lifelong learning method for novel class recognition. The proposed method uses a two-level deep learning architecture to detect and recognize novel classes, and uses a lifelong learning strategy, weight imprinting, to upgrade the model. With these improvements, the proposed method can handle novel classes timely. The experimental results indicate that the proposed method achieves good results for the novel classes, and it has almost no delay for production. Compared with the rebuilt methods, the time cost is reduced by at least 200 times. This result suggests that the proposed method has good potential in the realization of DT-driven defect recognition.
机译:最近,数字双胞胎(DTS)已成为智能制造中的研究热点,并使用DTS协助缺陷识别也已成为发展趋势。实时数据收集是DTS的优点之一,它可以帮助实现实时缺陷识别。然而,除非识别模型的一些瓶颈已经解决了,否则不能实现DT驱动的缺陷识别,例如已经解决了识别模型的一些瓶颈。为了提高时间效率,新的缺陷阶级识别是一个重要问题。大多数现有方法只能识别已知的缺陷类,可在培训期间使用。对于新的传入类,称为新颖类,必须重建这些模型,这是耗时和昂贵的。这极大地阻碍了DT驱动的缺陷识别。为了克服这个问题,本文提出了一种深终终身学习方法,用于新型阶级识别。该方法使用两级深度学习架构来检测和识别新颖的类,并使用终身学习策略,重量印记,升级模型。通过这些改进,所提出的方法可以及时处理小说类。实验结果表明,该方法对新型课程实现了良好的效果,并且几乎没有延迟生产。与重建方法相比,时间成本降低了至少200倍。该结果表明该方法在实现DT驱动的缺陷识别方面具有良好的潜力。

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