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A Digital Twin Framework for Performance Monitoring and Anomaly Detection in Fused Deposition Modeling

机译:熔融沉积建模中用于性能监控和异常检测的数字孪生框架

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Digital twin (DT) and additive manufacturing (AM) technologies are key enablers for smart manufacturing systems. DTs of AM systems are proposed in recent literature to provide additional analysis and monitoring capabilities to the physical AM processes. This work proposes a DT framework for real-time performance monitoring and anomaly detection in fused deposition modeling (FDM) AM process. The proposed DT framework can accommodate AM process measurement data to model the AM process as a cyber-physical system with continuous and discrete event dynamics, and allow for the development of various applications. A new performance metric is proposed for performance monitoring and a formal specification based anomaly detection method is proposed for AM processes. Implementation of the proposed DT on an off-the-shelf FDM printer and experimental results of anomaly detection and process monitoring are presented at the end.
机译:数字孪生(DT)和增材制造(AM)技术是智能制造系统的关键推动力。在最近的文献中提出了AM系统的DT,以为物理AM过程提供附加的分析和监视功能。这项工作提出了一个DT框架,用于在熔融沉积建模(FDM)AM过程中进行实时性能监控和异常检测。提出的DT框架可以容纳AM过程测量数据,以将AM过程建模为具有连续和离散事件动态的电子物理系统,并允许开发各种应用程序。提出了一种新的性能指标用于性能监测,并提出了一种基于形式规范的增材制造工艺异常检测方法。最后介绍了在现成的FDM打印机上所建议的DT的实现以及异常检测和过程监视的实验结果。

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