INNOVATION POLICY AND INNOVATION MANAGEMENT

Development of predictive maintenance based on artificial intelligence methods

  • 1 Univers ity of Žilina, Faculty of Mechanical Engineering, Department of Automation and Production Systems, Slovakia

Abstract

Artificial intelligence become more widespread in all manufacturing subjects. In manufacturing artificial intelligence deals with such tasks as quality control, robot navigation, computer vision, processes controlling, etc. The area of maintenance in machining is a great prospect for implementing artificial intelligence tools for analysis, prediction of monitored parameters, optimization, and improvement of the quality of the maintenance process. In particular, the article refers to predictive maintenance as a modern trend in mechanical engineering. In this article, a quick review of using methods of artificial intelligence and predictive analytics in maintenance and one p ractical implementation case of NAR network for time-series prediction was provided.

Keywords

References

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