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Data stream forecasting for system fault prediction
Authors:Ahmad Alzghoul  Magnus Löfstrand  Björn Backe
Affiliation:1. Division of Computer Aided Design, Luleå University of Technology, Room E218P, SE-97187 Luleå, Sweden;2. Division of Computer Aided Design, Luleå University of Technology, Room E218D, SE-97187 Luleå, Sweden
Abstract:Competition among today’s industrial companies is very high. Therefore, system availability plays an important role and is a critical point for most companies. Detecting failures at an early stage or foreseeing them before they occur is crucial for machinery availability. Data analysis is the most common method for machine health condition monitoring. In this paper we propose a fault-detection system based on data stream prediction, data stream mining, and data stream management system (DSMS). Companies that are able to predict and avoid the occurrence of failures have an advantage over their competitors. The literature has shown that data prediction can also reduce the consumption of communication resources in distributed data stream processing.
Keywords:Data stream prediction  Availability  Data stream mining  Data stream management system  Fault detection system  Fault detection forecasting
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