Implementation of a scalable platform for real-time monitoring of machine tools
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Date
2024-02-01Author
Tapia, Endika
Sastoque Pinilla, Edwar Leonard
López de Lacalle Marcaide, Luis Norberto
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Computers in Industry 155 : (2024) // Article ID 104065
Abstract
In the new hyper connected factories, data gathering, and prediction models are key to keeping both productivity and piece quality. This paper presents a software platform that monitors and detects outliers in an industrial manufacturing process using scalable software tools. The platform collects data from a machine, processes it, and displays visualizations in a dashboard along with the results. A statistical method is used to detect outliers in the manufacturing process. The performance of the platform is assessed in two ways: firstly by monitoring a five-axis milling machine and secondly, using simulated tests. Former tests prove the suitability of the platform and reveal the issues that arise in a real environment, and latter tests prove the scalability of the platform with higher data processing needs than the previous ones.