Time studies are an effective tool to analyze current production systems and propose improvements. The problem that motivated the project was that conducting time studies and observing the progression of components across the factory floor is a manual process. Four Industrial Engineering students worked with a manufacturing company to develop Computer Vision technology that would automate the data collection process for time studies. The team worked in an Agile environment to complete over 120 classification sets, create 8 strategy documents, and utilize Root Cause Analysis techniques to audit and validate the performance of the trained Computer Vision data models. In the future, there is an opportunity to continue developing this product and expand the team’s work scope to apply more engineering skills on the data collected to drive factory improvements.
Details
- Development of Automated Data-Collecting Processes for Current Factory Production Systems: An Investigation to Validate Computer Vision Model Outputs
- de Guzman, Lorenzo (Co-author)
- Chmelnik, Nathan (Co-author)
- Martz, Emma (Co-author)
- Johnson, Katelyn (Co-author)
- Ju, Feng (Thesis director)
- Courter, Brandon (Committee member)
- Industrial, Systems & Operations Engineering Prgm (Contributor, Contributor)
- School of Politics and Global Studies (Contributor)
- Industrial, Systems & Operations Engineering Prgm (Contributor, Contributor)
- Barrett, The Honors College (Contributor)