Next-generation industrial engineering is increasingly defined by the interaction between artificial intelligence, smart manufacturing systems, and sustainability-oriented design. This book brings together contributions that examine how these elements reshape industrial decision-making, production processes, and engineering responsibility. Across its chapters, the book explores the role of data-driven models, machine learning techniques, and cyber–physical systems in contemporary manufacturing environments. Intelligent scheduling, predictive maintenance, quality monitoring, and digital twins are discussed as practical tools that influence operational choices. At the same time, attention is given to organizational and technical limits, including data quality, system integration, workforce adaptation, and governance challenges. Smart manufacturing is presented as a socio-technical environment rather than a purely automated space. Human expertise, institutional context, and operational judgment remain central, even as algorithmic systems gain prominence. Sustainability considerations further complicate this landscape. Energy consumption, resource management, lifecycle assessment, and environmental accountability shape engineering priorities and constrain design alternatives. Rather than offering universal solutions, the book recognizes that industrial transformation unfolds unevenly across sectors and regions. By combining theoretical reflection with applied examples, it presents industrial engineering as a field navigating complexity, uncertainty, and responsibility. The volume contributes to ongoing discussions about how intelligence, connectivity, and sustainability can be integrated into industrial systems without reducing engineering practice to technical abstraction.
Digital Twin Technologies for Process Simulation and Control
Gilder Cieza Altamirano, Farxod Ochilov, Oybek Asrorov, Avaz Sa'dullayev, Davron Juraev, Vugar Abdullayev, Nazila Ragimova, Bahar Asgarova, Mahbuba Shirinova, Irada Seyidova
Emerging Trends in Artificial Intelligence, Robotics, and Quantum Engineering
Farkhod Bazorov, Xaqberdiyev Asliddin, Jurayev Otkirbek, Davron Juraev, Vugar Abdullayev, Nazila Ragimova, Mahbuba Shirinova, Irada Seyidova
Generative Artificial Intelligence and Machine Learning for Manufacturing Optimization
Diyorbek Islomov, Vasila Abbasova, Jale Agazade, Yegane Aliyeva, Oybek Asrorov, Avaz Sa'dullayev, Davron Juraev, Vugar Abdullayev
Integration of Artificial Intelligence and Robotics in Industrial Engineering
Khojiakbar Egamberdiev, Bekhruz Suvonov, Shavkat Khayriddinov, Davron Juraev
Research on the Process of Obtaining Pure Sesame Oil Using Microwave Radiation
Jasur Farmonov, Mohichehra Sobirova, Erkin Erkinov, Fargan Asadov, Zulfiyya Asadova
© 2001-2026 Fundación Dialnet · Todos los derechos reservados