Dear CEC Faculty, Staff, and Students,
This is a reminder of tomorrow’s seminar on
“Manufacturing Execution Optimization.”
Thanks,
Tianshu
From:
Tianshu Feng <[log in to unmask]>
Date: Monday, April 24, 2023 at 11:46 AM
To: [log in to unmask] <[log in to unmask]>, [log in to unmask] <[log in to unmask]>
Subject: SEOR/ME Seminar: Manufacturing Execution Optimization
Dear CEC Faculty, Staff, and Students,
Please join us the joint seminar of SEOR and ME this Friday by Dr. Leyuan Shi from the Department of Industrial & Systems Engineering, University of Wisconsin-Madison, on “Manufacturing
Execution Optimization.” Please see below for more information about this seminar. I have also attached the flyer and outlook invite.
Dr. Leyuan Shi
is happy to meet with faculty members or small groups during her visit. If you would like to meet with her, please fill in the form for time and locations:
Schedule for Dr. Shi's visit.
Manufacturing Execution Optimization
Dr. Leyuan Shi
Professor
Department of Industrial & Systems Engineering
University of Wisconsin-Madison
Date: Friday, April 28th
Time: 11:00 AM – 12:00 PM
Location: ENGR 1602
Zoom Link |
Meeting ID: 953 8890 2234
Synopsis:
Many manufacturing firms use aggregated data to provide scheduling/decision solutions for handling their daily operations. Given the nature of shop floor operating in real-time, these average-based
scheduling systems cannot be fully executed since unexpected events will almost always occur such as rush orders, design changes, machine breakdowns, defective parts, and delivery delays etc. Currently, shop-floor responds to unexpected events via manually
scheduling or by Excel, which leads to poor predictability and visibility of performance, slow response to uncertainties and market changes, and low efficiency of their production and supply chain systems.
In this talk, Manufacturing Execution Optimization (MEO) technologies developed by Dr. Shi and her team will be presented. MEO aims to bridge the gap between the top-level management data typically from ERP systems
and the shop-floor operations. By establishing top floor to shop floor communication, manufacturing firms will be able to significantly improve their production and supply chain efficiency while achieving a faster response to changes and disturbances in the
most time-optimal manner. MEO is developed based on Nested Partitions (NP) optimization framework. The coordination nature of the NP framework provides an efficient and effective platform for information sharing and exchange in real time. In this talk, several
simulation optimization methods based on NP framework will also be discussed and a case study will be presented.
Bio:
Leyuan Shi is a Professor in the Department of Industrial and Systems Engineering at University of Wisconsin-Madison.
She received her Ph.D. in Applied Mathematics from Harvard University in 1992. Her research interests include simulation modeling and large-scale optimization with applications to operational planning and scheduling and digital supply chain management. She
has developed a novel optimization framework, the Nested Partitions Method that has been applied to many large-scale and complex systems optimization problems. Her research work has been funded by NSF, NIH, AFSOR, ONR, State of Wisconsin, and many private
industrial companies. Her research work has been published on journals such as Operations Research, Management Science, JDEDS, IIE Trans. and IEEE Trans. She is currently serving as Editor for IEEE Trans on Automation Science and Engineering. She served on
the editorial board for Manufacturing & Service Operations Management and INFORMS Journal on Computing. She was General Chair, co-Chair, and program committee for many national and international conferences. She is also one of the inventors for a set of digital
management systems including Manufacturing Execution Optimization (MEO), Maintenance Repair & Overhaul Optimization (MRO2), and Dynamic Manufacturing Critical-Path Time (DMCT). She is the recipient of the Vilas Associate Award and IEEE fellow.
Best,
Tianshu
-----------------------
Tianshu Feng
Assistant professor
Systems Engineering & Operations Research
George Mason University
Fairfax, VA 22030