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Enhancing Surface Fault Detection Using Machine Learning for 3D Printed Products

Vaibhav Kadam, Satish Kumar, Arunkumar Bongale, Seema Wazarkar, Pooja Kamat, Shruti Patil

2021Applied System Innovation103 citationsDOIOpen Access PDF

Abstract

In the era of Industry 4.0, the idea of 3D printed products has gained momentum and is also proving to be beneficial in terms of financial and time efforts. These products are physically built layer-by-layer based on the digital Computer Aided Design (CAD) inputs. Nonetheless, 3D printed products are still subjected to defects due to variation in properties and structure, which leads to deterioration in the quality of printed products. Detection of these errors at each layer level of the product is of prime importance. This paper provides the methodology for layer-wise anomaly detection using an ensemble of machine learning algorithms and pre-trained models. The proposed combination is trained offline and implemented online for fault detection. The current work provides an experimental comparative study of different pre-trained models with machine learning algorithms for monitoring and fault detection in Fused Deposition Modelling (FDM). The results showed that the combination of the Alexnet and SVM algorithm has given the maximum accuracy. The proposed fault detection approach has low experimental and computing costs, which can easily be implemented for real-time fault detection.

Topics & Concepts

Fault detection and isolationComputer scienceLayer (electronics)Fault (geology)Machine learningArtificial intelligenceFused deposition modelingCADSupport vector machineAlgorithmEngineering drawingEngineering3D printingOrganic chemistrySeismologyChemistryGeologyMechanical engineeringActuatorAdditive Manufacturing and 3D Printing TechnologiesIndustrial Vision Systems and Defect DetectionManufacturing Process and Optimization
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