Published 2015 | Version v1
Publication

Performance assessment and uncertainty quantification of predictive models for smart manufacturing systems

Description

We review in this paper several methods from Statistical Learning Theory (SLT) for the performance assessment and uncertainty quantification of predictive models. Computational issues are addressed so to allow the scaling to large datasets and the application of SLT to Big Data analytics. The effectiveness of the application of SLT to manufacturing systems is exemplified by targeting the derivation of a predictive model for quality forecasting of products on an assembly line.

Additional details

Created:
April 14, 2023
Modified:
November 22, 2023