Skip to main content Start main content

Data Fusion for System Analysis and Improvements

Research Seminar Series

20241113Weihong GuoSandy ToOnline RSS Event Image
  • Date

    13 Nov 2024

  • Organiser

    Department of Industrial and Systems Engineering, PolyU

  • Time

    10:00 - 11:30

  • Venue

    Online via ZOOM  

Speaker

Dr Weihong Guo

Remarks

Meeting link will be sent to successful registrants

20241113Weihong GuoSandy ToOnline RSS Poster

Summary

The wide applications of automatic sensing devices and computer systems have resulted in a temporally and spatially dense data-rich environment, which provides unprecedented opportunities for quality improvement in various applications including manufacturing, supply chain, health care, and so on. The increasing complexity of data structures raises significant research challenges on data analytics. New methodologies for effective data fusion and information integration to support decision-making are in demand. To achieve optimal product and service quality, my current research focuses on process monitoring, prognostics, and diagnostics in advanced manufacturing, with a special focus on the digital thread of metal additive manufacturing, and then expanding the breadth of my research to smart and robust manufacturing supply chain. I will share my research in three areas: (1) Process monitoring, prognostics, and diagnostics in advanced manufacturing; (2) Integrating data science with physics for “process-signature-quality” relationship in additive manufacturing; and (3) Robust and smart manufacturing systems and supply chain.

Keynote Speaker

Dr Weihong Guo

Dr Weihong Guo

Associate Professor
Department of Industrial & Systems Engineering,
Rutgers, The State University of New Jersey, USA

Weihong “Grace” Guo is an Associate Professor in the Department of Industrial and Systems Engineering at Rutgers University. She earned her B.S. degree in Industrial Engineering from Tsinghua University, China, in 2010 and her Ph.D. in Industrial & Operations Engineering from the University of Michigan, Ann Arbor, in 2015. Her research focuses on developing novel methodologies for extracting and analyzing massive and complex data to facilitate effective monitoring of operational quality, early detection of system anomalies, quick diagnosis of fault root causes, and intelligent system design and control. She has collaborated with a domestic logistics/supply chain company, a university-affiliated health system and worldwide manufacturers of automobiles and personal care products. Her research has been funded by NSF, DOT, Ford Motor Company, etc. She received the Barbara M. Fossum Outstanding Young Manufacturing Engineer Award from the Society of Manufacturing Engineers in 2019. She also received several best paper awards/finalists from ASME, INFORMS, IISE, and IEEE. She is an Associate Editor for IISE Transactions, IEEE T-ASE, IEEE RA-L, and IEEE T-ASE, IEEE RA-L, . 

Your browser is not the latest version. If you continue to browse our website, Some pages may not function properly.

You are recommended to upgrade to a newer version or switch to a different browser. A list of the web browsers that we support can be found here