Applied AI Techniques in the Process Industry
by Chang He, Jingzheng Ren
English | 2024 | ISBN: 3527353399 | 336 pages | True PDF EPUB | 67.83 MB
by Chang He, Jingzheng Ren
English | 2024 | ISBN: 3527353399 | 336 pages | True PDF EPUB | 67.83 MB
Thorough discussion of data-driven and first principles models for energy-relevant systems and processes, approached through various in-depth case studies
Applied AI Techniques in the Process Industry identifies and categorizes the various hybrid models available that integrate data-driven models for energy-relevant systems and processes with different forms of process knowledge and domain expertise. State-of-the-art techniques such as reduced-order modeling, sparse identification, and physics-informed neural networks are comprehensively summarized, along with their benefits, such as improved interpretability and predictive power.
Numerous in-depth case studies regarding the covered models and methods for data-driven modeling, process optimization, and machine learning are presented, from screening high-performance ionic liquids and AI-assisted drug design to designing heat exchangers with physics-informed deep learning.
Edited by two highly qualified academics and contributed to by a number of leading experts in the field, Applied AI Techniques in the Process Industry includes information on:
Applied AI Techniques in the Process Industry is an essential reference on the subject for process, chemical, and pharmaceutical engineers seeking to improve physical interpretability in data-driven models to enable usage that scales with a system and reduce inaccuracies and mismatch issues.
For more quality books vist My Blog.
Password: avxhm.se@yoyoloit