A digital twin ecosystem for additive manufacturing using a real-time development platform

被引:0
|
作者
Minas Pantelidakis
Konstantinos Mykoniatis
Jia Liu
Gregory Harris
机构
[1] Auburn University,Industrial and Systems Engineering
来源
The International Journal of Advanced Manufacturing Technology | 2022年 / 120卷
关键词
Additive manufacturing; Digital twin; Fused deposition modeling; Simulation; Unity 3D;
D O I
暂无
中图分类号
学科分类号
摘要
Additive manufacturing is often used in rapid prototyping and manufacturing, allowing the creation of lighter, more complex designs that are difficult or too expensive to build using traditional manufacturing methods. This work considers the implementation of a novel digital twin ecosystem that can be used for testing, process monitoring, and remote management of an additive manufacturing–fused deposition modeling machine in a simulated virtual environment. The digital twin ecosystem is comprised of two approaches. One approach is data-driven by an open-source 3D printer web controller application that is used to capture its status and key parameters. The other approach is data-driven by externally mounted sensors to approximate the actual behavior of the 3D printer and achieve accurate synchronization between the physical and virtual 3D printers. We evaluate the sensor-data-driven approach against the web controller approach, which is considered to be the ground truth. We achieve near-real-time synchronization between the physical machine and its digital counterpart and have validated the digital twin in terms of position, temperature, and run duration. Our digital twin ecosystem is cost-efficient, reliable, replicable, and hence can be utilized to provide legacy equipment with digital twin capabilities, collect historical data, and generate analytics.
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页码:6547 / 6563
页数:16
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