南京大学计算机科学与技术系
软件新技术与产业化协同创新中心
摘 要:
Sensors
play an important role in smart manufacturing. Different types of sensors have
been used in process monitoring to ensure the quality of products. As a result,
the life-cycle cost of quality control is rising. The reliability of sensors
also affects the reliability of complex systems with a large number of sensors
onboard. Another challenge is the available bandwidth in communication channels
for transmission of large volumes of data. The original purpose of data cannot
be fulfilled if they are not shared and used. In this research, a new approach
that uses low-fidelity measurements with limited sensors to provide
high-fidelity information in additive manufacturing (AM) process monitoring is
investigated. A physics based compressive sensing (PBCS) framework is proposed
to reduce the number of sensors and amount of data collection, which
significantly improves the compression ratio from traditional compressed
sensing by incorporating the knowledge of physical phenomena in specific
applications. By solving the inverse problems, the PBCS framework will be used
to reconstruct three-dimensional temperature and fluid velocity fields in AM
processes based on limited measurements. The sensing performance will also be
improved by optimizing the sensor locations via dictionary learning. The
systematic error of PBCS can be predicted and compensated based on a Gaussian
process approach. The proposed PBCS scheme provides a systematic and rigorous
approach to design efficient sensing protocols for future manufacturing
systems.
报告人简介:
Yanglong Lu
is a Ph.D.
candidate
in the Woodruff School of Mechanical Engineering at Georgia Institute of
Technology. He received his BS in the Woodruff School of Mechanical Engineering
from Georgia Institute of Technology in 2016 and expects to receive PhD in
2020. His research interests are modeling and monitoring the additive
manufacturing process by introducing physical knowledge for data-driven
approaches. His future research plan is to develop sensing protocols for
different manufacturing systems and cyber-physical systems.
时间:12月30日(星期一)10:00
地点:计算机科学技术楼230室
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