From fault detection to one-class severity discrimination of 3D printers with one-class support vector machine
The lack of faulty condition data reduces the feasibility of supervised learning for fault detection or fault severity discrimination in new manufacturing technologies. To deal with this issue, one-class learning arises for building binary discriminative models using only healthy condition data. How...
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Veröffentlicht in: | ISA transactions 2021-04, Vol.110, p.357-367 |
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creator | Li, Chuan Cabrera, Diego Sancho, Fernando Cerrada, Mariela Sánchez, René-Vinicio Estupinan, Edgar |
description | The lack of faulty condition data reduces the feasibility of supervised learning for fault detection or fault severity discrimination in new manufacturing technologies. To deal with this issue, one-class learning arises for building binary discriminative models using only healthy condition data. However, these models have not been extrapolated to severity discrimination. This paper proposes to extend OCSVM, which is typically used for fault detection, to 3D printer fault severity discrimination. First, a set of features is extracted from a set of normal signals. An optimized OCSVM model is obtained by tuning the kernel and model hyperparameters. The resulting models are evaluated for fault detection and fault severity discrimination using a proposed performance evaluation approach. Experimental comparisons for belt-based faults in 3D printers show that the distance to the hyperplane has the information to discriminate the severity level, and its use is feasible. The proposed hyperparameter optimization technique improves the OCSVM for fault detection and severity discrimination compared to some other methods.
•A fault severity discrimination model can be built using only healthy signals.•The distance to the hyperplane in OCSVM contains information about the severity degree.•Other kernels show almost the same performance to RBF in severity discrimination. |
doi_str_mv | 10.1016/j.isatra.2020.10.036 |
format | Article |
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source | ScienceDirect Journals (5 years ago - present) |
subjects | 3D printer Bidirectional generative adversarial network Fault detection One-class support vector machine Severity discrimination |
title | From fault detection to one-class severity discrimination of 3D printers with one-class support vector machine |
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