In the last decade, researchers have focused on digital technologies within Industry 4.0. However, it seems the Industry 4.0 hype did not fulfil industry expectations due to many implementation challenges. Today, Industry 5.0 proposes a human-centric approach to implement digital sustainable technologies for smart quality improvement. One important aspect of digital sustainability is reducing the energy consumption of digital technologies. This can be achieved through a variety of means, such as optimizing energy efficiency, and data centres power consumption. Complementing and extending features of Industry 4.0, this research develops a conceptual model to promote Industry 5.0. The aim of the model is to optimize data without losing significant information contained in big data. The model is empowered by edge computing, as the Industry 5.0 enabler, which provides timely, meaningful insights into the system, and the achievement of real-time decision-making. In this way, we aim to optimize data storage and create conditions for further power and processing resource rationalization. Additionally, the proposed model contributes to Industry 5.0 from a social aspect by considering the knowledge, not only of experienced engineers, but also of workers who work on machines. Finally, the industrial application was done through a proof-of-concept using manufacturing data from the process industry, where the amount of data was reduced by 99.73% without losing significant information contained in big data.

Edge Computing Data Optimization for Smart Quality Management: Industry 5.0 Perspective / Bajic, B.; Suzic, N.; Moraca, S.; Stefanovic, M.; Jovicic, M.; Rikalovic, A.. - In: SUSTAINABILITY. - ISSN 2071-1050. - ELETTRONICO. - 15:7(2023), pp. 1-19. [10.3390/su15076032]

Edge Computing Data Optimization for Smart Quality Management: Industry 5.0 Perspective

Suzic N.;
2023-01-01

Abstract

In the last decade, researchers have focused on digital technologies within Industry 4.0. However, it seems the Industry 4.0 hype did not fulfil industry expectations due to many implementation challenges. Today, Industry 5.0 proposes a human-centric approach to implement digital sustainable technologies for smart quality improvement. One important aspect of digital sustainability is reducing the energy consumption of digital technologies. This can be achieved through a variety of means, such as optimizing energy efficiency, and data centres power consumption. Complementing and extending features of Industry 4.0, this research develops a conceptual model to promote Industry 5.0. The aim of the model is to optimize data without losing significant information contained in big data. The model is empowered by edge computing, as the Industry 5.0 enabler, which provides timely, meaningful insights into the system, and the achievement of real-time decision-making. In this way, we aim to optimize data storage and create conditions for further power and processing resource rationalization. Additionally, the proposed model contributes to Industry 5.0 from a social aspect by considering the knowledge, not only of experienced engineers, but also of workers who work on machines. Finally, the industrial application was done through a proof-of-concept using manufacturing data from the process industry, where the amount of data was reduced by 99.73% without losing significant information contained in big data.
2023
7
Bajic, B.; Suzic, N.; Moraca, S.; Stefanovic, M.; Jovicic, M.; Rikalovic, A.
Edge Computing Data Optimization for Smart Quality Management: Industry 5.0 Perspective / Bajic, B.; Suzic, N.; Moraca, S.; Stefanovic, M.; Jovicic, M.; Rikalovic, A.. - In: SUSTAINABILITY. - ISSN 2071-1050. - ELETTRONICO. - 15:7(2023), pp. 1-19. [10.3390/su15076032]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/376867
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