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Analysis of the role of digital twins in achieving Industry 4.0 objectives in smart manufacturing-A Review

Vinay Kumar Agrahari, Sachin Jain, Harimohan Soni

Abstract


Digital twins are virtual models of physical systems that are increasingly being used in smart
manufacturing to achieve Industry 4.0 objectives. This paper analyzes the character of digital twins in
achieving these objectives, including real-time monitoring and optimization of manufacturing processes,
predictive maintenance, and improved collaboration and communication across stakeholders.Digital twins
are a powerful tool for manufacturers looking to achieve Industry 4.0 objectives in smart manufacturing.
By facilitating predictive maintenance, improving quality control, and optimizing energy consumption,
digital twins can help manufacturers to improve productivity, increase efficiency, reduce costs, and
enhance quality control. As the industries continues to evolve, the character of digital twins in achieving
Industry 4.0 objectives, become even more important. The critical role of digital twins in achieving
Industry 4.0 objectives in smart manufacturing and provides insights into how companies can
successfully implement digital twins in their manufacturing processes to gain a competitive advantage.


Keywords


Industry 4.0, smart manufacturing, virtual models, simulation, real-time monitoring, optimization.

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DOI: https://doi.org/10.37628/ijpe.v8i2.1504

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