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AI in Chemical Engineering: Unlocking the Power Within Data [Kõva köide]

  • Formaat: Hardback, 286 pages, kõrgus x laius: 234x156 mm, kaal: 730 g, 14 Tables, black and white; 129 Line drawings, color; 15 Line drawings, black and white; 53 Halftones, color; 182 Illustrations, color; 15 Illustrations, black and white
  • Ilmumisaeg: 31-Dec-2024
  • Kirjastus: CRC Press
  • ISBN-10: 1032597003
  • ISBN-13: 9781032597003
  • Formaat: Hardback, 286 pages, kõrgus x laius: 234x156 mm, kaal: 730 g, 14 Tables, black and white; 129 Line drawings, color; 15 Line drawings, black and white; 53 Halftones, color; 182 Illustrations, color; 15 Illustrations, black and white
  • Ilmumisaeg: 31-Dec-2024
  • Kirjastus: CRC Press
  • ISBN-10: 1032597003
  • ISBN-13: 9781032597003
"Chemical manufacturing is being transformed by Industry 4.0. Today's chemical companies are quickly adapting to the digital world, recognizing the power of connection among products, production equipment, and personnel. As technology evolves and manufactured volumes increase, new computational tools and innovative solutions for daily problems are required. AI in Chemical Engineering: Unlocking the Power Within Data familiarizes readers with the key concepts of machine learning and their implementation in the chemical and process industries for increased efficiency, adaptability, and profitability. It explores the evolution of traditional plant operation into an integrated and smart operational environment and provides readers with the basis for developing and understanding the use of tools to collect and analyze data for insight and application. Introduces the principles and applications of unsupervised learning and discusses the role of machine learning in extracting information from plant data and transforming it into knowledge. Conveys the concepts, principles, and applications of supervised learning, setting the stage for developing advanced monitoring systems, complex predictive models, and advanced computer vision applications. Explores implementation of reinforced learning ideas for chemical process control and optimization, investigating various model structures and discussing their practical implementation in both simulation and experimental units. Incorporates sample code examples in Python toillustrate key concepts. Includes real-life case studies in the context of Chemical Engineering and covers a wide variety of Chemical Engineering applications from oil and gas to bioengineering and electrochemistry. Clearly defines types of problems in Chemical Engineering subject to AI solutions and relates them to subfields of AI. With concepts and theory introduced in a logical and sequential manner, this practical text is aimed at advanced students of chemical engineering and industrial practitionersand serves as an essential resource to help readers understand current and new developments in this important and evolving field"--

This book explains machine learning and its implementation in the chemical and process industries. It explores the evolution of traditional plant operation into an integrated and smart operational environment and provides readers with the basis for understanding the use of tools to collect and analyze data for insight and application.



Industry 4.0 is revolutionizing chemical manufacturing. Today's chemical companies are swiftly embracing the digital era, recognizing the significant benefits of interconnected products, production equipment, and personnel. As technology advances and production volumes grow, there is an increasing need for new computational tools and innovative solutions to address everyday challenges. AI in Chemical Engineering: Unlocking the Power Within Data introduces readers to the essential concepts of machine learning and their application in the chemical and process industries, aiming to enhance efficiency, adaptability, and profitability. This work delves into the transformation of traditional plant operations into integrated and intelligent systems, providing readers with a foundation for developing and understanding the tools necessary for data collection and analysis, thereby gaining valuable insights and practical applications.

• Introduces the principles and applications of unsupervised learning and discusses the role of machine learning in extracting information from plant data and transforming it into knowledge.

• Conveys the concepts, principles, and applications of supervised learning, setting the stage for developing advanced monitoring systems, complex predictive models, and advanced computer vision applications.

• Explores implementation of reinforced learning ideas for chemical process control and optimization, investigating various model structures and discussing their practical implementation in both simulation and experimental units.

• Incorporates sample code examples in Python to illustrate key concepts.

• Includes real-life case studies in the context of chemical engineering and covers a wide variety of chemical engineering applications from oil and gas to bioengineering and electrochemistry.

• Clearly defines types of problems in chemical engineering subject to AI solutions and relates them to subfields of AI.

This practical text, designed for advanced chemical engineering students and industry practitioners, introduces concepts and theories in a logical and sequential manner. It serves as an essential resource, helping readers understand both current and emerging developments in this important and evolving field.

1. Smart Manufacturing and Machine Learning.
2. Data and Data
Pretreatment.
3. Dimensionality Reduction (DR).
4. Clustering.
5.
Unsupervised Learning Case Study.
6. Concepts and Definitions.
7. Predictive
Models.
8. Supervised Learning Case Studies.
9. Deep Learning.
10. Deep
Learning Case Studies.
11. Reinforcement Learning.
12. Reinforcement Learning
Case Studies.
13. Generative AI. Appendix A. FASTMAN-JMP Tool Architecture.
Appendix B. Tennessee Eastman Process (TEP). Appendix C. High-Temperature PEM
Fuel Cell Modelling. Appendix D. Distance Metrics for Clustering.
Jose A. Romagnoli is the Gordon & Mary Cain Endowed Chair Professor of Process Systems Engineering, Department of Chemical Engineering, Louisiana State University. He received his Ph.D. from University of Minnesota.

Luis A. Briceno-Mena works at Dow on their Machine Learning Optimization and Statistics team. He received his Ph.D. in Chemical Engineering from Louisiana State University.

Vidhyadhar Manee is a Senior Scientist in Process Research at Boehringer Ingelheim Pharmaceuticals Inc. He received his Ph.D. in Chemical Engineering from Louisiana State University.