OTHER
Data-driven Models for Fault Classification and Prediction of Industrial Robots
Corbinian Nentwich, Sebastian Junker, Günther Reinhart
- Year
- 2020
- Citations
- 16
Abstract
Economic data acquisition and storage have been key enablers to pave the way for data-driven predictions of machine downtimes. Regarding industrial robots, such predictions can maximize the robot’s availability and effective life span. This paper focuses on the comparison of different data-driven models for robot fault prediction and classification by applying them to a data set derived from a robot test bed and illuminates the data transformation process from raw sensor data to domain knowledge motivated robot health indicators.
Keywords
RobotRaw dataKey (lock)Process (computing)EngineeringData-drivenDomain (mathematical analysis)Data setSet (abstract data type)Fault (geology)
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