Proceedings Article10.1109/ISSREW.2014.52
Event Based Robot Prognostics Using Principal Component Analysis
V Sathish,Sithu D. Sudarsan,Srini Ramaswamy +2 more
- 03 Nov 2014
- pp 14-17
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TL;DR: This paper provides a Principal component Analysis (PCA) based approach of failure prediction in industrial robots using event log information and is able to detect abnormal behavior of event pattern within 30 days before failure.
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Abstract: As industrial systems are getting complicated, challenges in coming up with efficient maintenance strategies which include predicting failures in the system become important industry specific research topic. Traditionally, research focuses on developing failure prediction models based on physical understanding of the system. But, development of such models are often time consuming and labour intensive for complex systems. Inrecent past, due to advent of cheaper data collection mechanisms and efficient algorithms, data driven approaches for predicting failures are gaining significant interest in industrial research community. In this paper, we provide a Principal component Analysis (PCA) based approach of failure prediction in industrial robots using event log information. The event logs are collected through remote service set-up from a robot controller. The proposed method will reduce the dimensionality of the original data which consist of interrelated events while retaining the variation present in the data. Using PCA and multivariate statistics such as Hotelling T2, Q Residuals and Q contributions charts, we are able to detect abnormal behavior of event pattern within 30 days before failure.
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Mvuyo Khuselo Makhasi
- 01 Jun 2019
TL;DR: A dissertation submitted to the Faculty of Engineering and the Built Environment, University of Witwatersrand, Johannesburg, in fulfilment of the requirements for the degree of Master of Science in Engineering, June 2019 as mentioned in this paper.
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