3.9 Article

Data analytics framework for Industry 4.0: enabling collaboration for added benefitsInspec keywordsOther keywords

期刊

出版社

WILEY
DOI: 10.1049/iet-cim.2019.0012

关键词

production engineering computing; small-to-medium enterprises; manufacturing industries; data analysis; decision making; groupware; SMEs; manufacturing facilities collaborate; share data; decision-making processes; collaborative data analytics; manufacturing enterprises; mutual benefits; CDA framework; data analytics framework; added benefits; manufacturing sector; enable collecting storing; detailed data; industry processes; data-driven decision

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Industry 4.0 is a promising vision for advancing the manufacturing sector through the recent innovations in information and Communication Technologies that enable collecting, storing, and processing detailed and accurate data about industry processes. This data enables manufacturers for data-driven decision making to significantly improve their operations and profitability. Most of the large manufacturing enterprises can benefit from this as they can collect more data that can be utilised to enhance their decision-making processes. Small and medium enterprises (SMEs) have limited data and resources, thus reducing the possible gains. However, if SMEs and small manufacturing facilities collaborate and share data, which is then jointly analysed, feasibility and quality of their data analytics and decision-making processes could be significantly enhanced. This study discusses collaborative data analytics (CDAs) in Industry 4.0, summarising findings into a novel CDA framework that can be used by manufacturing enterprises of any size and scale to enable and enhance the mutual benefits of CDAs and decision-making processes. The CDA framework can enhance the key factors and performance metrics of manufacturing facilities such as reliability, availability, and efficiency. The study also provides a preliminary benefit analysis of utilising the proposed CDA framework for manufacturing SMEs.

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