Prognostics and Health Management of the Robotic Servo-Motor under Variable Operating Conditions
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Date
2023-01-12
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Citation of Original Publication
Lee, Hyewon, Izaz Raouf, Jinwoo Song, Heung Soo Kim, and Soobum Lee. 2023. "Prognostics and Health Management of the Robotic Servo-Motor under Variable Operating Conditions" Mathematics 11, no. 2: 398. https://doi.org/10.3390/math11020398
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Attribution 4.0 International (CC BY 4.0)
Attribution 4.0 International (CC BY 4.0)
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Abstract
A robot is essential in many industrial and manufacturing facilities due to its efficiency,
accuracy, and durability. However, continuous use of the robotic system can result in various
component failures. The servo motor is one of the critical components, and its bearing is one of
the vulnerable parts, hence failure analysis is required. Some previous prognostics and health
management (PHM) methods are very limited in considering the realistic operating conditions of
industrial robots based on various operating speeds, loading conditions, and motions, because they
consider constant speed data with unloading conditions. This paper implements a PHM for the servo
motor of a robotic arm based on variable operating conditions. Principal component analysis-based
dimensionality reduction and correlation analysis-based feature selection are compared. Two machine
learning algorithms have been used to detect fault features under various operating conditions. This
method is proposed as a robust fault-detection model for industrial robots under various operating
conditions. Features from different domains not only improved the generalization of the model’s
performance but also improved the computational efficiency of massive data by reducing the total
number of features. The results showed more than 90% accuracy under various operating conditions.
As a result, the proposed method shows the possibility of robust failure diagnosis under various
operating conditions similar to the actual industrial environment.