Mechanical fault detection based on machine learning for robotic RV reducer using electrical current signature analysis: a data-driven approachopen access
- Authors
- Raouf, Izaz; Lee, Hyewon; Kim, Heung Soo
- Issue Date
- Apr-2022
- Publisher
- 한국CDE학회
- Keywords
- prognostics and health management (PHM); rotate vector (RV) reducer fault detection and isolation; motor current signature analysis (MCSA); feature selection; feature optimization; machine learning (ML)
- Citation
- Journal of Computational Design and Engineering, v.9, no.2, pp 417 - 433
- Pages
- 17
- Indexed
- SCIE
SCOPUS
KCI
- Journal Title
- Journal of Computational Design and Engineering
- Volume
- 9
- Number
- 2
- Start Page
- 417
- End Page
- 433
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/3564
- DOI
- 10.1093/jcde/qwac015
- ISSN
- 2288-4300
2288-5048
- Abstract
- Recently, prognostic and health management (PHM) has become a prominent field in modern industry. The rotate vector (RV) reducer is one of the widely used mechanical components in industrial systems, specifically in robots. The RV reducer is known for its unique characteristics of small size, efficient speed transmission, and high torsion. The RV reducer is prone to several kinds of faults, due to its continuous operation in an industrial robot. To keep the operation smooth and steady, timely PHM of the RV reducer has become essential. Previously, the RV reducer fault was diagnosed via various techniques, such as ferrography analysis, vibration analysis, and acoustic emission analysis. However, these conventional techniques have various issues. To resolve those issues, we introduce a novel approach to use the embedded electrical current system for the fault detection of the RV reducer. However, this is quite complicated to investigate mechanical fault using an electrical current signature, since the RV reducer is not an integral part of the electric motor, and finding a fault pattern in faulty components needs thorough examination. We therefore focus on the application of machine learning (ML) for fault classifications. We present an approach for feature extraction, feature selection, and feature reduction using the information obtained from the motor current signature analysis to create an ML-based fault classification system with distinguishable prominent features. Finally, the authenticity of the presented approach is justified via the improved values of evaluating parameters, such as accuracy, specificity, and sensitivity, for ML classifiers.
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- Appears in
Collections - College of Engineering > Department of Mechanical, Robotics and Energy Engineering > 1. Journal Articles

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