FUTURE TRENDS AND EMERGING TECHNOLOGIES IN MECHANICAL ENGINEERING: AN ANALYTICAL PERSPECTIVE

Authors:

Raffi Mohammed,Bairysetti Prasad Babu,Subramanya Sarma S.,C. Sailaja,Subhani Mohammed,Kiran Kumar Bunga,Chiranjeevi Aggala,

DOI NO:

https://doi.org/10.26782/jmcms.2025.07.00004

Keywords:

Additive Manufacturing,Artificial Intelligence,Bio-Engineering,Energy Harvesting,Internet of Things,Machine Learning,Nano-Technology,Robotics and Automation,Sustainable and Green Technologies,

Abstract

Engineering is a specially designed course that includes the application of knowledge explicitly in the field of science and natural phenomena. The fields of engineering, technology, and physical sciences have been growing towards a new era of development and innovation across the globe. They include many fields, and one such significant area is mechanical engineering, which deals with the construction, working principles, and applications of various types of machines. Technical data of the products based on their scientific principles, along with parameters, are involved in the development of mechanical engineering. With this background, this study is designed to look forward to the future directions and emerging technologies in mechanical engineering. This review study investigated the future direction and emerging technology in mechanical engineering. It also highlighted the purpose and significance of mechanical engineering and discussed some of the research questions in mechanical engineering. Future directions of learning and technology, mechanical invention and development, the transportation industry, electric vehicles, and the artificial intelligence industrial revolution are also mentioned in this study. Mechanical engineering is a growing field of technology across the world. This review study indicated that it is essential to have upgraded knowledge and skills in the field of engineering and technology in this modern era. Many theories can be applied in the mechanical field with the support of upgrades in technology. The direction of mechanical engineering study is to learn the mechanical aspects of different technologies and the knowledge about that technology to optimize its use.

Refference:

I. Adedoyin, F. F., Agboola, P. O., Ozturk, I., Bekun, F. V., & Agboola, M. O. (2021). Environmental consequences of economic complexities in the EU amidst a booming tourism industry: Accounting for the role of Brexit and other crisis events. Journal of Cleaner Production, 305, 127117. 10.1016/j.jclepro.2021.127117
II. Arinez, J. F., Chang, Q., Gao, R. X., Xu, C., & Zhang, J. (2020). Artificial intelligence in advanced manufacturing: Current status and future outlook. Journal of Manufacturing Science and Engineering, 142(11), 110804. 10.1115/1.4047851
III. Bongomin, O., Yemane, A., Kembabazi, B., Malanda, C., Mwape, M. C., Mpofu, N. S., & Tigalana, D. (2020). Industry 4.0 disruption and its neologisms in major industrial sectors: A state of the art. Journal of Engineering, 2020(1), 8090521. 10.1155/2020/8090521
IV. Fu, C., Xia, Z., Hurren, C., Nilghaz, A., & Wang, X. (2022). Textiles in soft robots: Current progress and future trends. Biosensors and Bioelectronics, 2022(197), 113722. 10.1016/j.bios.2021.113722
V. Gibson, I., Rosen, D. W., Stucker, B., & Khorasani, M. (2021), Additive manufacturing technologies (Vol.17) Springer. 10.1007/978-3-030-56127-7
VI. Gómez-González, M., Latorre, E., Arroyo, M., & Trepat, X. (2020). Measuring mechanical stress in living tissues. Nature Reviews Physics, 2(6), 300–317. 10.1038/s42254-020-0197-1
VII. Jang, Y. E., Lee, J. M., & Son, J. W. (2022). Development and application of an integrated management system for off-site construction projects. Buildings, 12(1), 12. 10.3390/buildings12010012
VIII. Jiao, R., Commuri, S., Panchal, J., Milisavljevic-Syed, J., Allen, J. K., Mistree, F., & Schaefer, D. (2021). Design engineering in the age of Industry 4.0. Journal of Mechanical Design, 143(7), 070801. 10.1115/1.4050164
IX. Kocsi, B., Matonya, M. M., Pusztai, L. P., & Budai, I. (2020). Real-time decision-support system for high-mix low-volume production scheduling in Industry 4.0. Processes, 8(9), 1155. 10.3390/pr8091155

X. Kozłowski, E., Mazurkiewicz, D., Żabiński, T., Prucnal, S., & Sęp, J. (2020). Machining sensor data management for operation-level predictive model. Expert Systems with Applications, 159, 113600. 10.1016/j.eswa.2020.113600
XI. Malik, H., Iqbal, A., & Yadav, A. K. (2020). Soft computing in condition monitoring and diagnostics of electrical and mechanical systems. [Online Article].
XII. Ma, X., & Zhou, S. (2022). A review of flow-induced vibration energy harvesters. Energy Conversion and Management, 256, 115656. 10.1016/j.enconman.2022.115656
XIII. Menon, D., & Ranganathan, R. (2022). A generative approach to materials discovery, design, and optimization. ACS Omega, 7(20), 17206–17219. 10.1021/acsomega.2c01475
XIV. Nativi, S., Mazzetti, P., & Craglia, M. (2021). Digital ecosystems for developing digital twins of the Earth: The destination Earth case. Remote Sensing, 13(9), 1790. 10.3390/rs13091790
XV. Ritchie, E., & Landis, E. A. (2021). Industrial robotics in manufacturing. Journal of Leadership, Accountability and Ethics, 18(2), 45–59.
XVI. 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. 10.1177/1687814020925232
XVII. Sigov, A., Ratkin, L., Ivanov, L. A., & Xu, L. D. (2022). Emerging enabling technologies for Industry 4.0 and beyond. Information Systems Frontiers, 2022(1), 1–19. 10.1007/s10796-022-10292-2
XVIII. Surya, B., Menne, F., Sabhan, H., Suriani, S., Abubakar, H., & Idris, M. (2021). Economic growth, increasing productivity of SMEs, and open innovation. Journal of Open Innovation: Technology, Market, and Complexity, 7(1), 20. 10.3390/joitmc7010020
XIX. Tan, L. J., Zhu, W., & Zhou, K. (2020). Recent progress on polymer materials for additive manufacturing. Advanced Functional Materials, 30(33), 2003062. 10.1002/adfm.202003062
XX. Thonemann, N., Schulte, A., & Maga, D. (2020). How to conduct prospective life cycle assessment for emerging technologies? A systematic review and methodological guidance. Sustainability, 12(3), 1192. 10.3390/su12031192
XXI. Tyagi, A. K., Tiwari, S., & Kukreja, S. (2023). DNA computing: Challenges and opportunities for future. In International Conference on Intelligent Systems Design and Applications (pp. 166–179). Springer. 10.1007/978-3-030-94920-4_14
XXII. Verganti, R., Vendraminelli, L., & Iansiti, M. (2020). Innovation and design in the age of artificial intelligence. Journal of Product Innovation Management, 37(3), 212–227. 10.1111/jpim.12519
XXIII. Wang, Y., Xue, P., Cao, M., Yu, T., Lane, S. T., & Zhao, H. (2021). Directed evolution: Methodologies and applications. Chemical Reviews, 121(20), 12384–12444. 10.1021/acs.chemrev.1c00227
XXIV. Zheng, B. (2023). Machine learning-assisted simulation and design for functional Nanomaterials. Asish Mitra, Numerical Simulation of Laminar Convection Flow and Heat Transfer at the Lower Stagnation Point of a Solid Sphere., J. Mech. Cont.& Math. Sci.,Vol.-10, No.-1, October (2015), pp 1469-1480

View Download