Examining the challenges and opportunities of using transformative technologies in Industry 5.0

Authors

  • Hamed Nozari Iran university of science and technology

Keywords:

Industry 5.0, Artificial intelligence, Challenges and opportunities, human intelligence

Abstract

Industry 5.0 could be a insurgency in which people and machines discover ways to work together to move forward generation efficiency. If there was no human touch within the revolution within the 4.0 industry, it'll be its center within the fifth industry. Human laborers and worldwide robots together will increment the efficiency of the fabricating world.Therefore, it seems that with the development of Industry 5.0, technologies will take a different form. By approaching human intelligence, in addition to the evolution of technologies, many challenges are always formed in the fields of the future of humanity. People may need to develop completely new skills. Working alongside robots sounds great, but human workers must learn how to work with an intelligent machine, a robot maker. Beyond the soft skills required, technical skills will also be an issue. In this chapter, the category of challenges and benefits of using technologies in Industry 5.0 will be discussed.

Downloads

Download data is not yet available.

References

Aliahmadi, A., & Nozari, H. (2023, January). Evaluation of security metrics in AIoT and blockchain-based supply chain by Neutrosophic decision-making method. In Supply Chain Forum: An International Journal (Vol. 24, No. 1, pp. 31-42). Taylor & Francis.

Aliahmadi, A., Movahed, A. B., & Nozari, H. (2024). Collaboration Analysis in Supply Chain 4.0 for Smart Businesses. In Building Smart and Sustainable Businesses With Transformative Technologies (pp. 103-122). IGI Global.

Asgharizadeh, E., Daneshvar, A., Homayounfar, M., Salahi, F., & Amini Khouzani, M. (2023). Modeling the supply chain network in the fast-moving consumer goods industry during COVID-19 pandemic. Operational Research, 23(1), 14.

Fallah, M., & Nozari, H. (2021). Neutrosophic mathematical programming for optimization of multi-objective sustainable biomass supply chain network design. Computer Modeling in Engineering & Sciences, 129(2), 927-951.

Homayounfar, M., & Daneshvar, A. (2018). Prioritization of green supply chain suppliers using a hybrid fuzzy multi-criteria decision making approach. Journal of operational research in its applications (applied mathematics)-Lahijan Azad University, 15(2), 41-61.

Movahed, A. B., Movahed, A. B., & Nozari, H. (2024). Opportunities and Challenges of Smart Supply Chain in Industry 5.0. Information Logistics for Organizational Empowerment and Effective Supply Chain Management, 108-138.

Movahed, A. B., Movahed, A. B., & Nozari, H. (2024). Opportunities and Challenges of Marketing 5.0. Smart and Sustainable Interactive Marketing, 1-21.

Nahavandi, B., Homayounfar, M., Daneshvar, A., & Shokouhifar, M. (2022). Hierarchical structure modelling in uncertain emergency location-routing problem using combined genetic algorithm and simulated annealing. International Journal of Computer Applications in Technology, 68(2), 150-163.

Nozari, H. (2024). Supply Chain 6.0 and Moving Towards Hyper-Intelligent Processes. In Information Logistics for Organizational Empowerment and Effective Supply Chain Management (pp. 1-13). IGI Global.

Nozari, H., & Chobar, A. P. (2024). The Dimensions and Components of Marketing 5.0: Introduction to Marketing 6.0. In Advanced Businesses in Industry 6.0 (pp. 75-86). IGI Global.

Nozari, H., & Ghahremani-Nahr, J. (2022). Assessing Key performance indicators in Blockchain-Based Supply Chain Financing: Case Study of Chain Stores. International Journal of Innovation in Engineering, 2(3), 42-58.

Nozari, H., Tavakkoli-Moghaddam, R., & Gharemani-Nahr, J. (2022). A neutrosophic fuzzy programming method to solve a multi-depot vehicle routing model under uncertainty during the covid-19 pandemic. International Journal of Engineering, 35(2), 360-371.

Nozari, H., Tavakkoli-Moghaddam, R., Ghahremani-Nahr, J., & Najafi, E. (2023). A conceptual framework for Artificial Intelligence of Medical Things (AIoMT). In Computational Intelligence for Medical Internet of Things (MIoT) Applications (pp. 175-189). Academic Press.

Nozari, H., Tavakkoli-Moghaddam, R., Rohaninejad, M., & Hanzalek, Z. (2023, September). Artificial Intelligence of Things (AIoT) Strategies for a Smart Sustainable-Resilient Supply Chain. In IFIP International Conference on Advances in Production Management Systems (pp. 805-816). Cham: Springer Nature Switzerland.

Oskounejad, M. M., & Nozari, H. (Eds.). (2024). Advanced Businesses in Industry 6.0. IGI Global.

Tavakkoli-Moghaddam, R., Ghahremani-Nahr, J., Samadi Parviznejad, P., Nozari, H., & Najafi, E. (2022). Application of internet of things in the food supply chain: a literature review. Journal of applied research on industrial engineering, 9(4), 475-492.

Tavakkoli-Moghaddam, R., Nozari, H., Bakhshi-Movahed, A., & Bakhshi-Movahed, A. (2024). A Conceptual Framework for the Smart Factory 6.0. In Advanced Businesses in Industry 6.0 (pp. 1-14). IGI Global.

Published

2024-05-12

How to Cite

Nozari, H. (2024). Examining the challenges and opportunities of using transformative technologies in Industry 5.0. International Scientific Hub, 51–67. Retrieved from https://books.iscihub.com/index.php/ISCIHB/article/view/44

Issue

Section

Chapter