Have a personal or library account? Click to login
Sustainable Manufacturing in Industry 4.0 by Artificial Intelligent and Internet of Things, A Review Cover

Sustainable Manufacturing in Industry 4.0 by Artificial Intelligent and Internet of Things, A Review

By: Mohsen Soori and  Behrooz Arezoo  
Open Access
|Jan 2026

References

  1. Al-Ghussain, L., Alrbai, M., Al-Dahidi, S., & Lu, Z. (2024). Integrated assessment of green hydrogen production in California: life cycle Greenhouse gas Emissions, Techno-Economic Feasibility, and resource variability. Energy Conversion and Management, 311, 118514.
  2. Anurag, A., & Johnpaul, M. (2025). Security, Transparency, and Traceability: Role of Blockchain in AI-Powered Supply Chain AI-Powered Business Intelligence for Modern Organizations (pp. 181-206): IGI Global.
  3. Ashima, R., Haleem, A., Bahl, S., Javaid, M., Mahla, S. K., & Singh, S. (2021). Automation and manufacturing of smart materials in Additive Manufacturing technologies using Internet of Things towards the adoption of Industry 4.0. Materials Today: Proceedings, 45, 5081-5088.
  4. Bag, S., & Pretorius, J. H. C. (2022). Relationships between industry 4.0, sustainable manufacturing and circular economy: proposal of a research framework. International Journal of Organizational Analysis, 30(4), 864-898.
  5. Bag, S., Srivastava, G., Cherrafi, A., Ali, A., & Singh, R. K. (2024). Data-driven insights for circular and sustainable food supply chains: An empirical exploration of big data and predictive analytics in enhancing social sustainability performance. Business Strategy and the Environment, 33(2), 1369-1396.
  6. Bahangulu, J. K., & Owusu-Berko, L. (2025). Algorithmic bias, data ethics, and governance: Ensuring fairness, transparency, and compliance in AI-powered business analytics applications. World J Adv Res Rev, 1746-1763.
  7. Beliatis, M. J., Jensen, K., Ellegaard, L., Aagaard, A., & Presser, M. (2021). Next generation industrial IoT digitalization for traceability in metal manufacturing industry: A case study of industry 4.0. Electronics, 10(5), 628.
  8. Bianchi, C., & Grippi, N. (2025). Developing collaborative ecosystem platforms to trigger sustainable “place-based” value creation: a dynamic performance governance approach. International Journal of Productivity and Performance Management, 74(3), 1052-1078.
  9. Bigliardi, B., Bottani, E., & Casella, G. (2020). Enabling technologies, application areas and impact of industry 4.0: a bibliographic analysis. Procedia manufacturing, 42, 322-326.
  10. Camilleri, M. A. (2022). Strategic attributions of corporate social responsibility and environmental management: The business case for doing well by doing good! Sustainable Development, 30(3), 409-422.
  11. Chauhan, S., Singh, R., Gehlot, A., Akram, S. V., Twala, B., & Priyadarshi, N. (2022). Digitalization of supply chain management with industry 4.0 enabling technologies: a sustainable perspective. Processes, 11(1), 96.
  12. Chen, E. (2017). An approach for improving transparency and traceability of industrial supply chain with Blockchain technology.
  13. Ching, N. T., Ghobakhloo, M., Iranmanesh, M., Maroufkhani, P., & Asadi, S. (2022). Industry 4.0 applications for sustainable manufacturing: A systematic literature review and a roadmap to sustainable development. Journal of Cleaner Production, 334, 130133.
  14. Ciliberto, C., Szopik-Depczyńska, K., Tarczyńska-Łuniewska, M., Ruggieri, A., & Ioppolo, G. (2021). Enabling the Circular Economy transition: A sustainable lean manufacturing recipe for Industry 4.0. Business Strategy and the Environment, 30(7), 3255-3272.
  15. Cvetkovski, T., & Tomanovic, V. C. (2024). BENEFITS OF UPSKILLING AND RESKILLING. Economic and Social Development in Period of Global Instability (Book of Proceedings), Special Issue, 241.
  16. Dastres, R., Soori, M., & Asmael, M. (2022). Radio frequency identification (rfid) based wireless manufacturing systems, a review. Independent journal of management & production, 13(1), 258-290.
  17. Davis, J., Edgar, T., Porter, J., Bernaden, J., & Sarli, M. (2012). Smart manufacturing, manufacturing intelligence and demand-dynamic performance. Computers & Chemical Engineering, 47, 145-156.
  18. de Assis Dornelles, J., Ayala, N. F., & Frank, A. G. (2022). Smart Working in Industry 4.0: How digital technologies enhance manufacturing workers’ activities. Computers & Industrial Engineering, 163, 107804.
  19. Devaraj, J., Madurai Elavarasan, R., Shafiullah, G., Jamal, T., & Khan, I. (2021). A holistic review on energy forecasting using big data and deep learning models. International journal of energy research, 45(9), 13489-13530.
  20. Dhyani, B. (2021). Predicting Equipment Failure in Manufacturing Plants: An AI-driven Maintenance Strategy. Mathematical Statistician and Engineering Applications, 70(2), 1326-1334.
  21. do Prado, G. F., de Souza, J. T., & Piekarski, C. M. (2025). Sustainable and Innovative: How Can Open Innovation Enhance Sustainability Practices? Sustainability, 17(2), 454.
  22. Dwivedi, D., Mitikiri, S. B., Babu, K. V. S. M., Yemula, P. K., Srinivas, V. L., Chakraborty, P., & Pal, M. (2024). Technological advancements and innovations in enhancing resilience of electrical distribution systems. International Journal of Critical Infrastructure Protection, 100696.
  23. Eisenkopf, A., & Burgdorf, C. (2022). Policy measures and their impact on transport performance, modal split and greenhouse gas emissions in German long-distance passenger transport. Transportation Research Interdisciplinary Perspectives, 14, 100615.
  24. Eldrandaly, K. A., El Saber, N., Mohamed, M., & Abdel-Basset, M. (2022). Sustainable manufacturing evaluation based on enterprise industry 4.0 technologies. Sustainability, 14(12), 7376.
  25. Enyejo, J. O., Fajana, O. P., Jok, I. S., Ihejirika, C. J., Awotiwon, B. O., & Olola, T. M. (2024). Digital Twin Technology, Predictive Analytics, and Sustainable Project Management in Global Supply Chains for Risk Mitigation, Optimization, and Carbon Footprint Reduction through Green Initiatives. International Journal of Innovative Science and Research Technology, 9(11).
  26. Eswaran, U., Eswaran, V., Eswaran, V., & Murali, K. (2024). Human–Robot Collaboration Analyzing the Challenges and Opportunities of Integrating Soft Computing Algorithms in Manufacturing Environments. Evolution and Advances in Computing Technologies for Industry 6.0, 22-51.
  27. Furstenau, L. B., Sott, M. K., Kipper, L. M., Machado, E. L., Lopez-Robles, J. R., Dohan, M. S., . . . Imran, M. A. (2020). Link between sustainability and industry 4.0: trends, challenges and new perspectives. IEEE Access, 8, 140079-140096.
  28. Gawusu, S., Zhang, X., Jamatutu, S. A., Ahmed, A., Amadu, A. A., & Djam Miensah, E. (2022). The dynamics of green supply chain management within the framework of renewable energy. International Journal of Energy Research, 46(2), 684-711.
  29. Ghashghaee, P. (2016). Smart manufacturing: role of Internet of Things in process optimization.
  30. Gligor, D. M., Davis-Sramek, B., Tan, A., Vitale, A., Russo, I., Golgeci, I., & Wan, X. (2022). Utilizing blockchain technology for supply chain transparency: A resource orchestration perspective. Journal of Business Logistics, 43(1), 140-159.
  31. Hegab, H., Shaban, I., Jamil, M., & Khanna, N. (2023). Toward sustainable future: Strategies, indicators, and challenges for implementing sustainable production systems. Sustainable Materials and Technologies, 36, e00617.
  32. Helmrich, A., Markolf, S., Li, R., Carvalhaes, T., Kim, Y., Bondank, E., . . . Chester, M. (2021). Centralization and decentralization for resilient infrastructure and complexity. Environmental Research: Infrastructure and Sustainability, 1(2), 021001.
  33. Hoffmann, M. W., Wildermuth, S., Gitzel, R., Boyaci, A., Gebhardt, J., Kaul, H., . . . Leibfried, T. (2020). Integration of novel sensors and machine learning for predictive maintenance in medium voltage switchgear to enable the energy and mobility revolutions. Sensors, 20(7), 2099.
  34. Hosseinzadeh, A., Chen, F. F., Shahin, M., & Bouzary, H. (2023). A predictive maintenance approach in manufacturing systems via AI-based early failure detection. Manufacturing Letters, 35, 1179-1186.
  35. Islam, M. M., & AlGeddawy, T. (2018). The industrial internet of things models, challenges and opportunities in sustainable manufacturing. Paper presented at the Proceedings of the International Annual Conference of the American Society for Engineering Management.
  36. Jamwal, A., Agrawal, R., Sharma, M., & Giallanza, A. (2021). Industry 4.0 technologies for manufacturing sustainability: A systematic review and future research directions. Applied Sciences, 11(12), 5725.
  37. Jasiulewicz-Kaczmarek, M., & Gola, A. (2019). Maintenance 4.0 technologies for sustainable manufacturing-an overview. IFAC-PapersOnLine, 52(10), 91-96.
  38. Javaid, M., Haleem, A., Singh, R. P., & Suman, R. (2022). Enabling flexible manufacturing system (FMS) through the applications of industry 4.0 technologies. Internet of Things and Cyber-Physical Systems, 2, 49-62.
  39. Javaid, M., Haleem, A., Singh, R. P., Suman, R., & Gonzalez, E. S. (2022). Understanding the adoption of Industry 4.0 technologies in improving environmental sustainability. Sustainable operations and computers, 3, 203-217.
  40. Jensen, H. H. (2025). 1st R–Redesign and Reinvent: Laying the Foundation for Circular Success Circular Economy Opportunities and Pathways for Manufacturers: Manufacturing Renewed (pp. 67-102): Springer.
  41. Jiang, Y., Dai, P., Fang, P., Zhong, R. Y., Zhao, X., & Cao, X. (2022). A2-LSTM for predictive maintenance of industrial equipment based on machine learning. Computers & Industrial Engineering, 172, 108560.
  42. Johannsdottir, L., & Davidsdottir, B. (2024). Proposed paradigm shift from shareholders and stakeholders to future successors. Discover Sustainability, 5(1), 194.
  43. Jum’a, L., Ikram, M., & Jabbour, C. J. C. (2024). Towards circular economy: A IoT enabled framework for circular supply chain integration. Computers & Industrial Engineering, 192, 110194.
  44. Jung, S., Kara, L. B., Nie, Z., Simpson, T. W., & Whitefoot, K. S. (2023). Is additive manufacturing an environmentally and economically preferred alternative for mass production? Environmental science & technology, 57(16), 6373-6386.
  45. Karki, B. R., Basnet, S., Xiang, J., Montoya, J., & Porras, J. (2022). Digital maintenance and the functional blocks for sustainable asset maintenance service–A case study. Digital Business, 2(2), 100025.
  46. Khambule, I. (2021). Decentralisation or deconcentration: The case of regional and local economic development in South Africa. Local Economy, 36(1), 22-41.
  47. Khanfar, A. A., Iranmanesh, M., Ghobakhloo, M., Senali, M. G., & Fathi, M. (2021). Applications of blockchain technology in sustainable manufacturing and supply chain management: A systematic review. Sustainability, 13(14), 7870.
  48. Klingenberg, C. O., Borges, M. A. V., & Antunes Jr, J. A. V. (2021). Industry 4.0 as a data-driven paradigm: a systematic literature review on technologies. Journal of manufacturing technology management, 32(3), 570-592.
  49. Kumar Singh, S., Chauhan, A., & Sarkar, B. (2022). Supply chain management of e-waste for end-of-life electronic products with reverse logistics. Mathematics, 11(1), 124.
  50. Lakshmanan, R., Nyamekye, P., Virolainen, V.-M., & Piili, H. (2023). The convergence of lean management and additive manufacturing: Case of manufacturing industries. Cleaner Engineering and Technology, 13, 100620.
  51. Leng, J., Ruan, G., Jiang, P., Xu, K., Liu, Q., Zhou, X., & Liu, C. (2020). Blockchain-empowered sustainable manufacturing and product lifecycle management in industry 4.0: A survey. Renewable and sustainable energy reviews, 132, 110112.
  52. Lopes, J. D., Estevão, J., & Toth-Peter, A. (2023). Industry 4.0, multinationals, and sustainable development: A bibliometric analysis. Journal of Cleaner Production, 413, 137381.
  53. Lu, Y., & Li, S. (2023). Green transportation model in logistics considering the carbon emissions costs based on improved grey wolf algorithm. Sustainability, 15(14), 11090.
  54. Maiurova, A., Kurniawan, T. A., Kustikova, M., Bykovskaia, E., Othman, M. H. D., Singh, D., & Goh, H. H. (2022). Promoting digital transformation in waste collection service and waste recycling in Moscow (Russia): Applying a circular economy paradigm to mitigate climate change impacts on the environment. Journal of Cleaner Production, 354, 131604.
  55. Mastrocinque, E., Ramírez, F. J., Honrubia-Escribano, A., & Pham, D. T. (2022). Industry 4.0 enabling sustainable supply chain development in the renewable energy sector: A multi-criteria intelligent approach. Technological Forecasting and Social Change, 182, 121813.
  56. Matsunaga, F., Zytkowski, V., Valle, P., & Deschamps, F. (2022). Optimization of energy efficiency in smart manufacturing through the application of cyber–physical systems and industry 4.0 technologies. Journal of Energy Resources Technology, 144(10), 102104.
  57. Michalos, G., Makris, S., Tsarouchi, P., Guasch, T., Kontovrakis, D., & Chryssolouris, G. (2015). Design considerations for safe human-robot collaborative workplaces. Procedia CIrP, 37, 248-253.
  58. Molęda, M., Małysiak-Mrozek, B., Ding, W., Sunderam, V., & Mrozek, D. (2023). From corrective to predictive maintenance—A review of maintenance approaches for the power industry. Sensors, 23(13), 5970.
  59. Mourtzis, D., Angelopoulos, J., & Panopoulos, N. (2022). A Literature Review of the Challenges and Opportunities of the Transition from Industry 4.0 to Society 5.0. Energies, 15(17), 6276.
  60. Mtetwa, C. (2024). Reverse Logistics and Waste Reduction Alternatives Contemporary Solutions for Sustainable Transportation Practices (pp. 345-373): IGI Global.
  61. Mubarik, M., Raja Mohd Rasi, R. Z., Mubarak, M. F., & Ashraf, R. (2021). Impact of blockchain technology on green supply chain practices: evidence from emerging economy. Management of Environmental Quality: An International Journal, 32(5), 1023-1039.
  62. Müller, J. M., Kiel, D., & Voigt, K.-I. (2018). What drives the implementation of Industry 4.0? The role of opportunities and challenges in the context of sustainability. Sustainability, 10(1), 247.
  63. Ngu, H. J., Lee, M. D., & Osman, M. S. B. (2020). Review on current challenges and future opportunities in Malaysia sustainable manufacturing: Remanufacturing industries. Journal of Cleaner Production, 273, 123071.
  64. Nguyen, M.-T., & Batel, S. (2021). A critical framework to develop human-centric positive energy districts: towards justice, inclusion, and well-being. Frontiers in Sustainable Cities, 3, 691236.
  65. Nweje, U., & Taiwo, M. (2025). Supply chain management: Balancing efficiency and environmental responsibility. World Journal of Advanced Research and Reviews, 25(1), 1547-1564.
  66. Ong, K. S. H., Wang, W., Niyato, D., & Friedrichs, T. (2021). Deep-reinforcement-learning-based predictive maintenance model for effective resource management in industrial IoT. IEEE Internet of Things Journal, 9(7), 5173-5188.
  67. Paolanti, M., Romeo, L., Felicetti, A., Mancini, A., Frontoni, E., & Loncarski, J. (2018). Machine learning approach for predictive maintenance in industry 4.0. Paper presented at the 2018 14th IEEE/ASME International Conference on Mechatronic and Embedded Systems and Applications (MESA).
  68. Park, A., & Li, H. (2021). The effect of blockchain technology on supply chain sustainability performances. Sustainability, 13(4), 1726.
  69. Patel, K. R. (2023). Enhancing global supply chain resilience: Effective strategies for mitigating disruptions in an interconnected world. BULLET: Jurnal Multidisiplin Ilmu, 2(1), 257-264.
  70. Patil, D. (2024). Artificial intelligence-driven predictive maintenance in manufacturing: enhancing operational efficiency, minimizing downtime, and optimizing resource utilization. Minimizing Downtime, And Optimizing Resource Utilization (December 11, 2024).
  71. Pech, M., Vrchota, J., & Bednář, J. (2021). Predictive maintenance and intelligent sensors in smart factory. Sensors, 21(4), 1470.
  72. Prashar, G., Vasudev, H., & Bhuddhi, D. (2023). Additive manufacturing: expanding 3D printing horizon in industry 4.0. International Journal on Interactive Design and Manufacturing (IJIDeM), 17(5), 2221-2235.
  73. Rastogi, V., Srivastava, S., Mishra, M., & Thukral, R. (2020). Predictive maintenance for sme in industry 4.0. Paper presented at the 2020 Global Smart Industry Conference (GloSIC).
  74. Ridzi, F., & Prior, T. (2023). Community leadership through conversations and coordination: The role of local surveys in community foundation run community indicators projects. International Journal of Community Well-Being, 6(2), 127-150.
  75. Sanchez, D. O. M. (2019). Sustainable development challenges and risks of Industry 4.0: A literature review. 2019 Global IoT Summit (GIoTS), 1-6.
  76. Sartal, A., Bellas, R., Mejías, A. M., & García-Collado, A. (2020). The sustainable manufacturing concept, evolution and opportunities within Industry 4.0: A literature review. Advances in Mechanical Engineering, 12(5), 1687814020925232.
  77. Shabur, M. A. (2024). A comprehensive review on the impact of Industry 4.0 on the development of a sustainable environment. Discover Sustainability, 5(1), 97.
  78. Sharanya, S. (2022). A cyber physical system framework for industrial predictive maintenance using machine learning Real-Time Applications of Machine Learning in Cyber-Physical Systems (pp. 241-269): IGI Global.
  79. Singh, A., Madaan, G., Hr, S., & Kumar, A. (2023). Smart manufacturing systems: a futuristics roadmap towards application of industry 4.0 technologies. International Journal of Computer Integrated Manufacturing, 36(3), 411-428.
  80. Singh, B., & Kaunert, C. (2024). Adventure in High Altitude of Mountainous Topographies and Health Impacts: Lensing Tourism Sustainability via Reducing Ecological and Sociocultural Footprint and Health Emergency and Medical Assistance Management Navigating Natural Hazards in Mountainous Topographies: Exploring the Challenges and Opportunities of Living (pp. 281-303): Springer.
  81. Singh, B., & Nayyar, A. (2025). Exploring diverse use cases of digital twins projecting digital transformation: Unlocking potential, addressing challenges and viable solutions Digital Twins for Smart Cities and Villages (pp. 631-655): Elsevier.
  82. Sivakumar, K., Dhyankumar, C. T., Cherian, T. M., Manikandan, N., & Thejasree, P. (2023). Requirements for the Adoption of Industry 4.0 in the Sustainable Manufacturing Supply Chain Industry 4.0 Technologies: Sustainable Manufacturing Supply Chains: Volume II-Methods for transition and trends (pp. 185-201): Springer.
  83. Sohaib, M., Mushtaq, S., & Uddin, J. (2021). Deep learning for data-driven predictive maintenance Vision, Sensing and Analytics: Integrative Approaches (pp. 71-95): Springer.
  84. Soori, M. (2019). Virtual product development: GRIN Verlag.
  85. Soori, M. (2023a). Advanced Composite Materials and Structures. Journal of Materials and Engineering Structures.
  86. Soori, M. (2023b). Deformation error compensation in 5-Axis milling operations of turbine blades. Journal of the Brazilian Society of Mechanical Sciences and Engineering, 45(6), 289. doi:10.1007/s40430-023-04230-w
  87. Soori, M., & Arezoo, B. (2020). Virtual machining systems for CNC milling and turning machine tools: a review. International Journal of Engineering and Future Technology, 18(1), 56-104.
  88. Soori, M., & Arezoo, B. (2022a). Cutting Tool Wear Prediction in Machining Operations, A Review. Journal of New Technology and Materials, 12(2), 15-26.
  89. Soori, M., & Arezoo, B. (2022b). A Review in Machining-Induced Residual Stress. Journal of New Technology and Materials, 12(1), 64-83.
  90. Soori, M., & Arezoo, B. (2023a). Cutting tool wear minimization in drilling operations of titanium alloy Ti-6Al-4V. Proceedings of the Institution of Mechanical Engineers, Part J: Journal of Engineering Tribology, 13506501231158259.
  91. Soori, M., & Arezoo, B. (2023b). Dimensional, geometrical, thermal and tool deflection errors compensation in 5-Axis CNC milling operations. Australian Journal of Mechanical Engineering, 1-15.
  92. Soori, M., & Arezoo, B. (2023c). Effect of Cutting Parameters on Tool Life and Cutting Temperature in Milling of AISI 1038 Carbon Steel. Journal of New Technology and Materials.
  93. Soori, M., & Arezoo, B. (2023d). The effects of coolant on the cutting temperature, surface roughness and tool wear in turning operations of Ti6Al4V alloy. Mechanics Based Design of Structures and Machines, 1-23. doi:10.1080/15397734.2023.2200832
  94. Soori, M., & Arezoo, B. (2023e). Minimization of surface roughness and residual stress in abrasive water jet cutting of titanium alloy Ti6Al4V. Proceedings of the Institution of Mechanical Engineers, Part E: Journal of Process Mechanical Engineering, 09544089231157972.
  95. Soori, M., & Arezoo, B. (2023f). Modification of CNC Machine Tool Operations and Structures Using Finite Element Methods, A Review. Jordan Journal of Mechanical and Industrial Engineering.
  96. Soori, M., Arezoo, B., & Dastres, R. (2023a). Artificial Intelligence, Machine Learning and Deep Learning in Advanced Robotics, A Review. Cognitive Robotics, 3, 54-70.
  97. Soori, M., Arezoo, B., & Dastres, R. (2023b). Artificial Neural Networks in Supply Chain Management, A Review. Journal of Economy and Technology.
  98. Soori, M., Arezoo, B., & Dastres, R. (2023c). Internet of things for smart factories in industry 4.0, a review. Internet of Things and Cyber-Physical Systems.
  99. Soori, M., Arezoo, B., & Dastres, R. (2023d). Machine Learning and Artificial Intelligence in CNC Machine Tools, A Review. Sustainable Manufacturing and Service Economics, 100009. doi:10.1016/j.smse.2023.100009
  100. Soori, M., Arezoo, B., & Dastres, R. (2023e). Optimization of Energy Consumption in Industrial Robots, A Review. Cognitive Robotics. doi:10.1016/j.cogr.2023.05.003
  101. Soori, M., Arezoo, B., & Dastres, R. (2023f). Virtual manufacturing in industry 4.0: A review. Data Science and Management.
  102. Soori, M., Arezoo, B., & Habibi, M. (2013). Dimensional and geometrical errors of three-axis CNC milling machines in a virtual machining system. Computer-Aided Design, 45(11), 1306-1313.
  103. Soori, M., Arezoo, B., & Habibi, M. (2014). Virtual machining considering dimensional, geometrical and tool deflection errors in three-axis CNC milling machines. Journal of Manufacturing Systems, 33(4), 498-507.
  104. Soori, M., Arezoo, B., & Habibi, M. (2016). Tool deflection error of three-axis computer numerical control milling machines, monitoring and minimizing by a virtual machining system. Journal of Manufacturing Science and Engineering, 138(8), 081005.
  105. Soori, M., Arezoo, B., & Habibi, M. (2017). Accuracy analysis of tool deflection error modelling in prediction of milled surfaces by a virtual machining system. International Journal of Computer Applications in Technology, 55(4), 308-321.
  106. Soori, M., & Asmael, M. (2021a). Classification of research and applications of the computer aided process planning in manufacturing systems. Independent Journal of Management & Production, 12(5), 1250-1281.
  107. Soori, M., & Asmael, M. (2021b). Cutting temperatures in milling operations of difficult-to-cut materials. Journal of New Technology and Materials, 11(1), 47-56.
  108. Soori, M., & Asmael, M. (2021c). Minimization of deflection error in five axis milling of impeller blades. Facta Universitatis, series: Mechanical Engineering, 21(2), 175-190.
  109. Soori, M., & Asmael, M. (2021d). Virtual Minimization of Residual Stress and Deflection Error in Five-Axis Milling of Turbine Blades. Strojniski Vestnik/Journal of Mechanical Engineering, 67(5), 235-244.
  110. Soori, M., & Asmael, M. (2022). A Review of the Recent Development in Machining Parameter Optimization. Jordan Journal of Mechanical & Industrial Engineering, 16(2), 205-223.
  111. Soori, M., Asmael, M., Khan, A., & Farouk, N. (2021). Minimization of surface roughness in 5-axis milling of turbine blades. Mechanics Based Design of Structures and Machines, 51(9), 1-18.
  112. Soori, M., Asmael, M., & Solyalı, D. (2020). Recent Development in Friction Stir Welding Process: A Review. SAE International Journal of Materials and Manufacturing(5), 18.
  113. Sudusinghe, J. I., & Seuring, S. (2022). Supply chain collaboration and sustainability performance in circular economy: A systematic literature review. International Journal of Production Economics, 245, 108402.
  114. Trstenjak, M., Opetuk, T., Cajner, H., & Tosanovic, N. (2020). Process planning in Industry 4.0—Current state, potential and management of transformation. Sustainability, 12(15), 5878.
  115. Tyagi, A. K., Bhatt, P., Chidambaram, N., & Kumari, S. (2024). Artificial intelligence empowered smart manufacturing for modern society: a review. Artificial Intelligence-Enabled Digital Twin for Smart Manufacturing, 55-83.
  116. Vacchi, M., Siligardi, C., Cedillo-González, E. I., Ferrari, A. M., & Settembre-Blundo, D. (2021). Industry 4.0 and smart data as enablers of the circular economy in manufacturing: Product re-engineering with circular eco-design. Sustainability, 13(18), 10366.
  117. Vallim Filho, A. R. d. A., Farina Moraes, D., Bhering de Aguiar Vallim, M. V., Santos da Silva, L., & da Silva, L. A. (2022). A machine learning modeling framework for predictive maintenance based on equipment load cycle: an application in a real world case. Energies, 15(10), 3724.
  118. Varghese, A., Ande, J., Mahadasa, R., Gutlapalli, S. S., & Surarapu, P. (2023). Investigation of fault diagnosis and prognostics techniques for predictive maintenance in industrial machinery. Engineering International, 11(1), 9-26.
  119. Wolniak, R., & Grebski, W. (2023). The customization and personalization of product in Industry 4.0. Sci. Pap. Silesian Univ. Technol. Organ. Manag. Ser, 2023, 180.
  120. Yan, H., Wan, J., Zhang, C., Tang, S., Hua, Q., & Wang, Z. (2018). Industrial big data analytics for prediction of remaining useful life based on deep learning. IEEE Access, 6, 17190-17197.
  121. Yin, L., Luo, J., & Luo, H. (2018). Tasks scheduling and resource allocation in fog computing based on containers for smart manufacturing. IEEE transactions on Industrial informatics, 14(10), 4712-4721.
  122. Zhao, W., Chen, H., & Bulis, A. (2025). How are Industry 4.0 technologies transforming a sustainable society across industries? Digital Transformation and Society, 4(3), 363-380.
  123. Zheng, P., Wang, H., Sang, Z., Zhong, R. Y., Liu, Y., Liu, C., . . . Xu, X. (2018). Smart manufacturing systems for Industry 4.0: Conceptual framework, scenarios, and future perspectives. Frontiers of Mechanical Engineering, 13, 137-150.
Language: English
Page range: 19 - 40
Submitted on: Apr 29, 2025
|
Published on: Jan 26, 2026
Published by: University of Maribor
In partnership with: Paradigm Publishing Services
Publication frequency: 2 issues per year

© 2026 Mohsen Soori, Behrooz Arezoo, published by University of Maribor
This work is licensed under the Creative Commons Attribution 4.0 License.