Abstract
Analyzing sensor data from a production environment is quite challenging because of the high-dimensional nature of the data. In addition, the generated data is in the form of time-series, where the sequence of registrations may be of utmost significance. One of the main goals of the paper is to determine if the given time-series of feature combinations is normal or rare. This goal could successfully be achieved by combining multiple machine learning models. In this paper, a sliding window based ensemble method is proposed to detect outliers in a streaming fashion. The proposed method uses a combination of clustering algorithms to construct subgroups (clusters) representing different data structures. These structures are later used in a one-class classification algorithm to identfy the outliers. Thus, if a pattern does not belong to any of the common structures or clusters, it is an outlier. Further, based on the rare pattern classification, machine failures could be predicted in advance.
Originalsprog | Engelsk |
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Tidsskrift | Procedia Computer Science |
Vol/bind | 176 |
Sider (fra-til) | 1160-1169 |
Antal sider | 10 |
ISSN | 1877-0509 |
DOI | |
Status | Udgivet - 2020 |
Begivenhed | 24th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems - Virtuel konference Varighed: 16 sep. 2020 → 18 sep. 2020 |
Konference
Konference | 24th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems |
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By | Virtuel konference |
Periode | 16/09/20 → 18/09/20 |
Andet | KES2020 conference will be presented as a virtual conference. |