2021
Díez-Pastor, José Francisco; Val, Alain Gil; Veiga, Fernando; Bustillo, Andrés
High-accuracy classification of thread quality in tapping processes with ensembles of classifiers for imbalanced learning Journal Article
In: Measurement, vol. 168, no. 108328, 2021, ISSN: 0263-2241.
Abstract | Links | BibTeX | Tags: Bagging, Cutting taps, Imbalanced datasets, Quality assessment, SELECTED, Threading
@article{Díez-Pastor2021,
title = {High-accuracy classification of thread quality in tapping processes with ensembles of classifiers for imbalanced learning},
author = {José Francisco Díez-Pastor and Alain Gil Val and Fernando Veiga and Andrés Bustillo},
url = {https://www.sciencedirect.com/science/article/pii/S0263224120308654},
doi = {https://doi.org/10.1016/j.measurement.2020.108328},
issn = {0263-2241},
year = {2021},
date = {2021-01-15},
journal = {Measurement},
volume = {168},
number = {108328},
abstract = {Industrial threading processes that use cutting taps are in high demand. However, industrial conditions differ markedly from laboratory conditions. In this study, a machine-learning solution is presented for the correct classification of threads, based on industrial requirements, to avoid expensive manual measurement of quality indicators. First, quality states are categorized. Second, process inputs are extracted from the torque signals including statistical parameters. Third, different machine-learning algorithms are tested: from base classifiers, such as decision trees and multilayer perceptrons, to complex ensembles of classifiers especially designed for imbalanced datasets, such as boosting and bagging decision-tree ensembles combined with SMOTE and under-sampling balancing techniques. Ensembles demonstrated the lowest sensitivity to window sizes, the highest accuracy for smaller window sizes, and the greatest learning ability with small datasets. Fourth, the combination of models with both high Recall and high Precision resulted in a reliable industrial tool, tested on an extensive experimental dataset.},
keywords = {Bagging, Cutting taps, Imbalanced datasets, Quality assessment, SELECTED, Threading},
pubstate = {published},
tppubtype = {article}
}
Industrial threading processes that use cutting taps are in high demand. However, industrial conditions differ markedly from laboratory conditions. In this study, a machine-learning solution is presented for the correct classification of threads, based on industrial requirements, to avoid expensive manual measurement of quality indicators. First, quality states are categorized. Second, process inputs are extracted from the torque signals including statistical parameters. Third, different machine-learning algorithms are tested: from base classifiers, such as decision trees and multilayer perceptrons, to complex ensembles of classifiers especially designed for imbalanced datasets, such as boosting and bagging decision-tree ensembles combined with SMOTE and under-sampling balancing techniques. Ensembles demonstrated the lowest sensitivity to window sizes, the highest accuracy for smaller window sizes, and the greatest learning ability with small datasets. Fourth, the combination of models with both high Recall and high Precision resulted in a reliable industrial tool, tested on an extensive experimental dataset.