Abstract:Aim: This work proposes a workflow monitoring sensor observations over time to identify and predict relevant changes or anomalies in the cure cycle (CC) industrial process. CC is a procedure developed in an autoclave consisting of applying high temperatures to provide composite materials. Knowing anomalies in advance could improve efficiency and avoid product discard due to poor quality, benefiting sustainability and the environment. Methods: The proposed workflow exploits machine learning techniques for moni… Show more
How to cite this article: Loia V, Gaeta A. Editorial for the special issue: cognitive computing and cyber physical systems for smart environments and green manufacturing processes, management and projects.
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