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Process-monitoring-for-quality — A machine learning-based modeling for rare event detection

Carlos A. Escobar, Rubén Morales-Menéndez, Daniela Macias

2020Array20 citationsDOIOpen Access PDF

Abstract

Process Monitoring for Quality is a Big Data-driven quality philosophy aimed at defect detection through binary classification and empirical knowledge discovery. It is founded on Big Models, a predictive modeling paradigm that applies Machine Learning, statistics and optimization techniques to process data to create a manufacturing functional model. Functional refers to a parsimonious model with high detection ability that can be trusted by engineers, and deployed to control production. A parsimonious modeling scheme is presented aimed at rare quality event detection, parsimony is induced through feature selection and model selection. Its unique ability to deal with highly/ultra-unbalanced data structures and diverse learning algorithms is validated with four case studies, using the Support Vector Machine, Logistic Regression, Naive Bayes and k-Nearest Neighbors learning algorithms. And according to experimental results, the proposed learning scheme significantly outperformed typical learning approaches based on the l1-regularized logistic regression and Random Undersampling Boosting learning algorithms, with respect to parsimony and prediction.

Topics & Concepts

Machine learningArtificial intelligenceComputer scienceUndersamplingBoosting (machine learning)Feature selectionNaive Bayes classifierBinary classificationData miningSupport vector machineRandom forestModel selectionExtreme learning machineProcess (computing)Artificial neural networkOperating systemFault Detection and Control SystemsAdvanced Statistical Process MonitoringIndustrial Vision Systems and Defect Detection
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