team photo
no video icon

This video contains proprietary information and cannot be shared publicly at this time.


Team 88

Team Members

Faculty Advisor

Ryan Konon

Dr. Farhad Imani

Sponsor

UConn School of Engineering

sponsored by
sponsor logo

Artificial Intelligence for Cyber-physical Vulnerability Mitigation in Additive Manufacturing Systems

In this project, we investigate an online detection mechanism for malicious attempts on additive manufacturing (AM) systems, which taps into optical images, accelerometer data, and thermal video signals collected during the printing process. Novel cyberattacks are designed and implemented on part g-code files. A new real-time AM process authentication according to artificial intelligence will be developed to leverage in-situ data for real-time alteration detection during AM prints.