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English
Academic Press Inc
25 January 2024
Artificial Intelligence in Manufacturing: Applications and Case Studies provides detailed technical descriptions of emerging applications of AI in manufacturing using case studies to explain implementation. Artificial intelligence is increasingly being applied to all engineering disciplines, producing insights into how we understand the world and allowing us to create products in new ways. This book unlocks the advantages of this technology for manufacturing by drawing on work by leading researchers who have successfully used it in a range of applications. Processes including additive manufacturing, pharmaceutical manufacturing, painting, chemical engineering and machinery maintenance are all addressed.

Case studies, worked examples, basic introductory material and step-by-step instructions on methods make the work accessible to a large group of interested professionals.
Edited by:   , , , ,
Imprint:   Academic Press Inc
Country of Publication:   United Kingdom
Dimensions:   Height: 229mm,  Width: 152mm, 
Weight:   540g
ISBN:   9780323991353
ISBN 10:   0323991351
Pages:   340
Publication Date:  
Audience:   Professional and scholarly ,  Undergraduate
Format:   Paperback
Publisher's Status:   Active
1. Machine Learning in Paints and Coatings 2. Machine Learning in Lithium-ion Batteries 3. Machine Learning for Emerging Two-phase Cooling Technologies 4. Algorithm-driven Design of Composite Materials Realized through Additive Manufacturing 5. Machine-learning-based Monitoring of Laser Powder Bed Fusion 6. Data Analytics and Cyber-physical Systems for Maintenance and Service Innovation 7. Machine Learning in Catalysis 8. Artificial Intelligence in Petrochemical Industry 9. Machine Learning-assisted Plasma Medicine 10. Dynamic Data Feature Engineering for Process Operation Troubleshooting 11. Geometric Structure-Property Relationships Captured by Theory-Guided, Interpretable Machine Learning 12. Molecular Design Blueprints from Machine Learning for Catalysts and Materials 13. Physics-driven Machine Learning for Characterizing Surface Microstructure of Complex Materials 14. Process Performance Assessment Using Machine Learning 15. Artificial Intelligence in Chemical Engineering 16. Production of Polymer Films with Optimal Properties Using Machine Learning

Masoud Soroush is the George B. Francis Chair Professor of Engineering at Drexel University and directs the Future Layered nAnomaterials Knowledge and Engineering (FLAKE) Consortium, collaborating with over 30 researchers from Drexel, the University of Pennsylvania, and Purdue. He has held positions as a Visiting Scientist at DuPont and a Visiting Professor at Princeton. An Elected Fellow of AIChE and Senior Member of IEEE, Soroush has received numerous awards, including the AIChE 2023 Excellence in Process Development Research Award. He holds a BS from Abadan Institute of Technology and MS/PhD degrees from the University of Michigan, with research focusing on advanced manufacturing and nanomaterials. Dr. Richard D. Braatz is the Edwin R. Gilliland Professor of Chemical Engineering at MIT, specializing in advanced manufacturing systems. His research focuses on process data analytics, mechanistic modeling, and robust control systems, particularly in monoclonal antibody, vaccine, and gene therapy production. He holds an M.S. and Ph.D. from Caltech and previously served as a professor at the University of Illinois and a visiting scholar at Harvard. Dr. Braatz has received several prestigious awards, including the Donald P. Eckman Award and the Curtis W. McGraw Research Award, and is a Fellow of multiple professional organizations and a member of the U.S. National Academy of Engineering.

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