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Digital twin-driven supervised machine learning for the development of artificial intelligence applications in manufacturing

机译:数字双向监督机器学习制造业人工智能应用的发展

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摘要

Digital Twin (DT) implementations can contribute to smart manufacturing by integrating the physical and the cyber space. Artificial Intelligence (AI) applications based on Machine Learning (ML) are widely accepted as promising technologies in manufacturing. However, ML methods require large volumes of quality training datasets and in the case of supervised ML, manual input is usually required for labelling those datasets. Such an approach is expensive, prone to errors and labour as well as time-intensive, especially in a highly complex and dynamic production environment. DT models can be utilized for accelerating the training phase in ML by creating suitable training datasets as well as by automatic labelling via the simulation tools chain and thus alleviating user's involvement during training. These synthetic datasets can be enhanced and cross-validated with real-world information which is not required to be extensive. A framework for implementing the proposed DT-driven approach for developing ML models is presented. The proposed framework has been implemented in an industrially relevant use case. The use case has provided evidence that the proposed concept can be used for training vision-based recognition of parts' orientation using simulation of DT models, which in turn can be used for adaptively controlling the production process.
机译:数字双(DT)实现可以通过整合物理和网络空间来促进智能制造。基于机器学习(ML)的人工智能(AI)应用被广泛被广泛被认为是制造业的有前途的技术。但是,ML方法需要大量的质量训练数据集,并且在监督ML的情况下,通常需要制造这些数据集的手动输入。这种方法昂贵,容易出现错误和劳动以及时间密集,特别是在高度复杂和动态的生产环境中。通过通过模拟工具链创建合适的训练数据集,可以使用DT模型来加速ML中的训练阶段,从而减轻用户在训练期间减轻用户的参与。可以增强这些合成数据集,并通过现实世界信息进行交叉验证,这不需要广泛。提出了用于实现用于开发ML模型的所提出的DT驱动方法的框架。拟议的框架已在工业相关用例中实施。使用案例提供了证据表明,拟议的概念可用于使用DT模型的模拟来培训基于视觉的零件方向的识别,这反过来可用于自适应控制生产过程。

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