Primena pametnih robota i veštačke inteligencije u savremenim proizvodnim tehnologijama za obradu rezanjem
##plugins.themes.bootstrap3.article.main##
Apstrakt
Razvoj savremenih proizvodnih tehnologija neodvojivo je povezan sa primenom pametnih robota i veštačke inteligencije (VI). Ovaj rad istražuje mogućnosti i prednosti primene ovih tehnologija u procesima obrade rezanjem, gde su preciznost, efikasnost i fleksibilnost od suštinskog značaja. Detaljno su analizirane tehnike integracije VI algoritama u upravljanje robotima za optimizaciju proizvodnih parametara, smanjenje troškova i povećanje produktivnosti. Novi algoritmi primenjeni u istraživanju koriste napredne tehnike mašinskog učenja za prediktivno planiranje i unapređenje brzine obrade, zasnovane na podacima sa savremenih sistema za praćenje performansi. Primena VI donosi automatizaciju procesa, prediktivno planiranje, kao i minimizaciju grešaka izazvanih ljudskim faktorom. Rezultati istraživanja pokazuju da primena pametnih sistema doprinosi povećanju kvaliteta proizvoda, bezbednosti na radu i smanjuje vreme proizvodnje, što ima značajne implikacije za industriju.
##plugins.themes.bootstrap3.article.details##
Reference
[2] Teti, R., Jemaa, M. B., & Ouyang, Y. (2017). Smart Manufacturing: The New Industrial Revolution. Springer.
[3] Zhang, L., & Zhang, D. (2015). Robotics and Automation Handbook. CRC Press.
[4] Li, X., & Wang, J. (2019). Intelligent robots and AI in modern manufacturing: applications and trends. Journal of Manufacturing Science and Engineering, 141(5), 051002.
[5] Bogue, R. (2018). The role of robotics and artificial intelligence in Industry 4.0. Industrial Robot: An International Journal, 45(2), 177-183.
[6] Chung, W. Y., & Cho, H. R. (2017). Intelligent Manufacturing System Using Robot and AI. International Journal of Precision Engineering and Manufacturing, 18(5), 735-742.
[7] Marani, A., & Savaresi, S. M. (2016). Artificial Intelligence for Manufacturing: A Review of Emerging Trends. AI in Manufacturing and Automation: Applications and Perspectives. Wiley.
[8] Müller, R., & Kühn, M. (2019). Robot and AI Applications in Cutting Technology. Tech-nical Journal of Robotics.
[9] Xu, X., & He, Z. (2018). Machine Learning and Artificial Intelligence Applications for Man-ufacturing Systems. Manufacturing Review, 5(2), 14.
[10] Huang, Y., & Pan, D. (2020). Artificial Intelligence-Driven Manufacturing Systems. Journal of Industrial Engineering and Management, 13(3), 455-468.
[11] Kovács, G., & Spens, K. (2018). Machine Vision in Advanced Manufacturing. Taylor & Francis.
[12] Ghosh, S., & Roy, S. (2017). The Integration of Artificial Intelligence in Precision Engineer-ing. International Journal of Advanced Manufacturing Technology, 89(6), 1905-1920.
[13] Pandey, A., & Kumar, A. (2019). Optimization in Smart Factories Using AI. Computers in Industry, 113(5), 103-116.
[14] Park, S. J., & Lee, D. H. (2020). Smart Robotics and Their Impact on Modern Manufactur-ing. Advanced Robotics, 34(10), 765-778.
[15] Zhou, K., Liu, T., & Zhou, L. (2018). Industry 4.0: Intelligent Manufacturing Enabled by AI. Annals of Manufacturing Systems, 42(1), 50-65.
[16] Yang, T., & Cheng, P. (2017). AI and Robotics Integration in Cutting Tools Technology. Cutting Tools and Technologies, 26(4), 321-340.
[17] Aničić, O. (2021). Artificial Neural Network Implementation In Machining & Manufacturing. LAP LAMBERT Academic Publishing. ISBN-13: 978-620-4-71919-1.
[18] Ančić, O., Jović, S., Skrijelj, H., & Nedić, B. (2017). Prediction of laser cutting heat affect-ed zone by extreme learning machine. Optics and Lasers in Engineering, 1-4. https://doi.org/10.1016/j.optlaseng.2016.07.005.
[19] Ančić, O., Jović, S., Aksić, D., Skulić, A., & Nedić, B. (2017). Machining process influence on the chip form and surface roughness by neuro-fuzzy technique. Applied Physics A: Mate-rials Science & Processing, 4(1-9). https://doi.org/10.1007/s00339-017-0915-4.
http://orcid.org/0009-0000-1958-6388
