Process-Monitoring-for-Quality - Big Models Academic Article in Scopus uri icon

abstract

  • © 2018 General Motors.Process Monitoring for Quality (PMQ) is a big data-driven quality philosophy aimed at defect detection (through binary classification) and empirical knowledge discovery. It was originally developed to solve a complex manufacturing quality problem. It is founded on Big Models, a predictive modeling paradigm based on machine learning, statistics and optimization, that includes a learning aspect that requires many models to be developed to find the final model. When dealing with big data, the data structure is not known in advance; therefore, there is no a priori distinction between learning algorithms, and a plethora of options to choose from. The learning scheme of Big Models is described, which is based on several well known learning algorithms with the capacity to effectively solve a wide spectrum of binary classification problems. The main challenges of manufacturing pattern recognition problems are discussed and addressed to provide a strong foundation to the Big Models learning paradigm. Finally, two defect detection case studies are presented with highly unbalanced data derived from real manufacturing systems to validate the proposal.

publication date

  • January 1, 2018