Large Multistream Data Analytics for Monitoring and Diagnostics in Manufacturing Systems
Ebrahimi, Samaneh, Ranjan, Chitta, Paynabar, Kamran
The high-dimensionality and volume of large scale multistream data has inhibited significant research progress in developing an integrated monitoring and diagnostics (M&D) approach. This data, also categorized as big data, is becoming common in manufacturing plants. In this paper, we propose an integrated M\&D approach for large scale streaming data. We developed a novel monitoring method named Adaptive Principal Component monitoring (APC) which adaptively chooses PCs that are most likely to vary due to the change for early detection. Importantly, we integrate a novel diagnostic approach, Principal Component Signal Recovery (PCSR), to enable a streamlined SPC. This diagnostics approach draws inspiration from Compressed Sensing and uses Adaptive Lasso for identifying the sparse change in the process. We theoretically motivate our approaches and do a performance evaluation of our integrated M&D method through simulations and case studies.
Dec-26-2018
- Country:
- Oceania > New Zealand (0.04)
- North America > United States
- Georgia > Fulton County > Atlanta (0.04)
- Genre:
- Research Report (1.00)
- Technology: