Digital twins (DT) of industrial processes have become increasingly important. They aim to digitally represent the physical world to help evaluate, optimize, and predict physical processes and behaviors. Therefore, DT is a vital tool to improve production automation through digitalization and becomes more sophisticated due to rapidly evolving simulation and modeling capabilities, integration of IoT sensors with DT, and high-capacity cloud/edge computing infrastructure. However, the fidelity and reliability of DT software are essential to represent the physical world. This paper shows an automated and systematic test architecture for DT that correlates DT states with real-time sensor data from a production line in the forging industry. Our evaluation shows that the architecture can significantly accelerate the automatic DT testing process and improve its reliability. A systematic online DT testing method can significantly detect the performance shift and continuously improve the DT's fidelity. The snapshot creation methodology and testing agent architecture can be an inspiration and can be generally applicable to other industrial processes that use DT to generalize their automated testing.
翻译:工业过程的数字双胞胎(DT)越来越重要,目的是通过数字代表实际世界,帮助评估、优化和预测物理过程和行为。因此,DT是通过数字化改进生产自动化的重要工具,由于模拟和建模能力迅速发展,IoT传感器与DT结合,以及高容量云层/顶尖计算基础设施,因此变得更加复杂。然而,DT软件的忠实性和可靠性对于代表物理世界至关重要。本文展示了DT国家与制造行业生产线实时传感器数据相联系的自动和系统的测试结构。我们的评估表明,该结构可以大大加快自动DT测试进程并提高其可靠性。系统的在线DT测试方法可以显著地检测性能变化,并不断改进DT的忠诚性。快照创建方法和测试代理结构可以起到启发作用,并且可以普遍适用于使用DT对其自动化测试进行普及的其他工业进程。</s>